Summary
Background
Mortality statistics are fundamental to public health decision making. Mortality varies by time and location, and its measurement is affected by well known biases that have been exacerbated during the COVID-19 pandemic. This paper aims to estimate excess mortality from the COVID-19 pandemic in 191 countries and territories, and 252 subnational units for selected countries, from Jan 1, 2020, to Dec 31, 2021.
Methods
All-cause mortality reports were collected for 74 countries and territories and 266 subnational locations (including 31 locations in low-income and middle-income countries) that had reported either weekly or monthly deaths from all causes during the pandemic in 2020 and 2021, and for up to 11 year previously. In addition, we obtained excess mortality data for 12 states in India. Excess mortality over time was calculated as observed mortality, after excluding data from periods affected by late registration and anomalies such as heat waves, minus expected mortality. Six models were used to estimate expected mortality; final estimates of expected mortality were based on an ensemble of these models. Ensemble weights were based on root mean squared errors derived from an out-of-sample predictive validity test. As mortality records are incomplete worldwide, we built a statistical model that predicted the excess mortality rate for locations and periods where all-cause mortality data were not available. We used least absolute shrinkage and selection operator (LASSO) regression as a variable selection mechanism and selected 15 covariates, including both covariates pertaining to the COVID-19 pandemic, such as seroprevalence, and to background population health metrics, such as the Healthcare Access and Quality Index, with direction of effects on excess mortality concordant with a meta-analysis by the US Centers for Disease Control and Prevention. With the selected best model, we ran a prediction process using 100 draws for each covariate and 100 draws of estimated coefficients and residuals, estimated from the regressions run at the draw level using draw-level input data on both excess mortality and covariates. Mean values and 95% uncertainty intervals were then generated at national, regional, and global levels. Out-of-sample predictive validity testing was done on the basis of our final model specification.
Findings
Although reported COVID-19 deaths between Jan 1, 2020, and Dec 31, 2021, totalled 5·94 million worldwide, we estimate that 18·2 million (95% uncertainty interval 17·1–19·6) people died worldwide because of the COVID-19 pandemic (as measured by excess mortality) over that period. The global all-age rate of excess mortality due to the COVID-19 pandemic was 120·3 deaths (113·1–129·3) per 100 000 of the population, and excess mortality rate exceeded 300 deaths per 100 000 of the population in 21 countries. The number of excess deaths due to COVID-19 was largest in the regions of south Asia, north Africa and the Middle East, and eastern Europe. At the country level, the highest numbers of cumulative excess deaths due to COVID-19 were estimated in India (4·07 million [3·71–4·36]), the USA (1·13 million [1·08–1·18]), Russia (1·07 million [1·06–1·08]), Mexico (798 000 [741 000–867 000]), Brazil (792 000 [730 000–847 000]), Indonesia (736 000 [594 000–955 000]), and Pakistan (664 000 [498 000–847 000]). Among these countries, the excess mortality rate was highest in Russia (374·6 deaths [369·7–378·4] per 100 000) and Mexico (325·1 [301·6–353·3] per 100 000), and was similar in Brazil (186·9 [172·2–199·8] per 100 000) and the USA (179·3 [170·7–187·5] per 100 000).
Interpretation
The full impact of the pandemic has been much greater than what is indicated by reported deaths due to COVID-19 alone. Strengthening death registration systems around the world, long understood to be crucial to global public health strategy, is necessary for improved monitoring of this pandemic and future pandemics. In addition, further research is warranted to help distinguish the proportion of excess mortality that was directly caused by SARS-CoV-2 infection and the changes in causes of death as an indirect consequence of the pandemic.
Funding
Bill & Melinda Gates Foundation, J Stanton, T Gillespie, and J and E Nordstrom
Introduction
An accurate measurement of the number of deaths due to the COVID-19 pandemic is crucial for each country and region to understand the magnitude of the pandemic's impact on public health. Accurate measurement of death is also needed to understand the determinants of variation in the infection–fatality ratio across populations, and is a direct input into forecasting the pandemic and investigating alternative policy options. Reported deaths attempt to quantify the magnitude of the COVID-19 pandemic in different populations and locations over time, and they are widely seen as a more reliable indicator for tracking the pandemic relative to reported case rates.1 However, reported deaths represent only a partial count of total death tolls from the COVID-19 pandemic, and the reliability of reported deaths varies greatly between locations and over time.
Research in context.
Evidence before this study
Many attempts have been made to estimate the total number of deaths related to the COVID-19 pandemic. WHO estimated a total of 3 million excess deaths due to the COVID-19 pandemic during the year 2020, although they have not made available excess mortality estimates by location. Numerous studies have examined excess mortality due to COVID-19 for specific countries or subnational units during different stages of the pandemic. Various models have been proposed to estimate expected mortality based on past rates and trends for all-cause mortality. Such modelling approaches include simple count models with fixed effects on week and year; time series-type models including autoregressive integrated moving average (ARIMA) and Holt-Winters models; and simpler assumptions that expected mortality during the pandemic can be assumed to equate to average mortality rates in 2015–19. The World Mortality Dataset provides regularly updated excess mortality estimates for 117 countries and subnational units for a subset of the countries; expected mortality in this dataset is modelled with a linear regression on weekly, monthly, or quarterly death counts with a dummy variable on week, month, or quarter, and year as a continuous variable. The Economist, whose analytical model has not been peer-reviewed, provides the most comprehensive assessment of excess mortality due to COVID-19 to date; they used a machine learning algorithm with a vast list of covariates to produce excess mortality estimates for 187 countries. They provide a global estimate of 18·0 million (95% uncertainty interval 12·9–21·0) excess deaths for the period of Jan 1, 2020, to Dec 27, 2021.
Added value of this study
This study makes several important contributions to understanding the full impact of the COVID-19 pandemic on mortality. First, we corrected all-cause mortality data for lags in reporting and for under-registration of death. Second, we excluded weeks with heat waves, for which excess mortality due to COVID would be overestimated due to the large increase in observed mortality from excessive heat during the pandemic. Third, we used an ensemble of six models to predict the expected mortality rate in the absence of COVID-19. Weights in the ensemble were based on the out-of-sample predictive validity of each model. Fourth, for locations without weekly or monthly reported all-cause mortality data, we developed a statistical model that captured the relationship between the key COVID-19-related covariates, such as seroprevalence, infection-detection ratio, and other population-level burden of disease metrics, and excess mortality rate. Fifth, to evaluate the robustness of the model predicting excess mortality, we conducted out-of-sample predictive validity testing, which indicated a small error rate (0·85%). Sixth, by looking comprehensively across countries, we were able to generate estimates of excess mortality for 191 countries and territories, in addition to internally consistent regional and global aggregates. These estimates will form part of the next iteration of the Global Burden of Diseases, Injuries, and Risk Factors Study.
Implications of all the available evidence
Our estimates of COVID-19 excess mortality suggest the mortality impact from the COVID-19 pandemic has been more devastating than the situation documented by official statistics. Official statistics on reported COVID-19 deaths provide only a partial picture of the true burden of mortality. The difference between excess mortality and reported COVID-19 deaths might be a function of underdiagnosis due to insufficient testing, reporting challenges, or higher than expected mortality from other diseases due to pandemic-related changes in behaviours or reduced access to health care or other essential services. The gap between estimated excess mortality and reported COVID-19 deaths is much larger in south Asia and sub-Saharan Africa than in other regions. The differences shown between reported COVID-19 mortality and COVID-19-related excess mortality highlight the importance of the use of COVID-19-related excess mortality estimates in policy and in monitoring and evaluation efforts.
Excess mortality due to the COVID-19 pandemic, defined as the net difference between the number of deaths during the pandemic (measured by observed or estimated all-cause mortality) and the number of deaths that would be expected on the basis of past trends in all-cause mortality, is therefore a crucial measure of the true toll of the COVID-19 pandemic. Gaps exist between reported and excess deaths related to the COVID-19 pandemic for a number of reasons. First, health-care reporting systems generally do not list COVID-19 as the cause of death without a positive SARS-CoV-2 test, and thus deaths due to COVID-19 will be missed in official counts in locations with low testing capacity. For example, early in the pandemic, before tests were widely available, many deaths due to COVID-19 among older individuals in high-income countries, particularly in long-term care facilities, are unlikely to have been attributed to COVID-19,2 with evidence of extensive under-reporting in many locations.3, 4, 5, 6 Second, country systems for registering deaths vary in their quality and compre-hensiveness, as well as in the definitions used for counting COVID-19 deaths. Third, among the global medical community, there is no universal agreement as to when a death of someone infected with SARS-CoV-2 should be reported as a death due to COVID-19. Fourth, other factors including political considerations appear to have prevented accurate reporting of deaths in some locations. Fifth, the magnitude and distribution of many other causes of death might have changed because of social, economic, and behavioural responses to the pandemic, including strict lockdowns. Under these conditions, excess mortality can provide a more accurate assessment of the total mortality impact of the COVID-19 pandemic than reported COVID-19 deaths.
Several attempts have been made to estimate excess mortality from COVID-19, although these have generally been limited in geographical scope by the availability of data. WHO has estimated regional excess mortality for the Americas and Europe but has not yet produced country-level estimates for these regions.7 Other country-specific or location-specific studies have evaluated the effect of the COVID-19 pandemic on all-cause mortality for specific locations during different stages of the pandemic.8, 9, 10 Such studies have used a variety of models to estimate expected mortality during the pandemic on the basis of past rates and trends in all-cause mortality, making direct comparisons of excess mortality between locations difficult. The Economist, whose estimation model has not been peer-reviewed, produces the only other set of COVID-19-related excess mortality estimates for a uniform time period for a total of 187 countries included in their analysis regardless of vital registration data availability.
In addition to deaths from SARS-CoV-2 infection, social distancing mandates and other pandemic restrictions might have decreased deaths from some diseases and injuries, such as road accidents,11, 12, 13 and increased others, such as deaths from chronic and acute conditions affected by deferred care-seeking in overstretched health-care systems,14, 15 relative to expected or baseline conditions. Such changes to baseline patterns of disease and injury death affect the excess mortality from the pandemic; differentiating how much excess mortality is due to SARS-CoV-2 infection and how much is due to other societal, economic, or behavioural changes associated with the pandemic is challenging, especially without detailed data on specific causes of death in many countries. Although separating out the contributors to excess mortality will be extremely important, understanding the total mortality impact of the pandemic is a crucial first step.
Our objective in this study was to estimate, globally and for each of the 191 countries and territories (and 252 subnational units for a subset of nations) included in our analysis, excess deaths due to the pandemic from Jan 1, 2020, to Dec 31, 2021. We leveraged data from locations where all-cause mortality data were available from the periods before and during the pandemic to estimate excess mortality for the study period; we then explored the statistical relationship between excess mortality rate and key covariates including COVID-19 seroprevalence, infection–detection ratio (IDR), and other population health-related metrics such as the Healthcare Access and Quality (HAQ) Index.16 We used this model to generate location-specific and global estimates of excess deaths due to the COVID-19 pandemic over the study period. Our excess mortality estimates reflect the full impact of the pandemic on mortality around the world, and not only deaths directly attributable to SARS-CoV-2 infection.
Methods
Overview
Our analysis of excess mortality due to the COVID-19 pandemic from Jan 1, 2020, to Dec 31, 2021, followed four key steps. First, we developed a database of all-cause mortality by week and month after accounting for reporting lags, anomalies such as heat waves, and under-registration of death. Second, we developed an ensemble model to predict expected deaths in the absence of the COVID-19 pandemic for years 2020 and 2021. In location and time combinations with data meeting our inclusion criteria, excess mortality was estimated as observed mortality minus expected mortality. Third, to estimate excess mortality due to COVID-19 over the entire study period for all countries and territories in the analysis, and especially for locations without weekly or monthly all-cause mortality data, we developed a statistical model to directly predict the excess mortality due to COVID-19, using covariates that pertained to both the COVID-19 pandemic and background population health-related metrics at the population level before SARS-CoV-2 emerged. Fourth, we estimated excess mortality due to COVID-19, propagating uncertainty from each step. Further details on each of the analytical steps required to estimate COVID-19-related excess deaths are presented herein.
This study complies with the Guidelines for Accurate and Transparent Health Estimates Reporting17 statement (appendix pp 3–4). Analyses were completed with Stata (version 17), Python version (3.7.7), and R (version 4.0.3). Statistical code used for these analyses can be found online. Results specific to the model run for this publication are accessible for each location online. The estimates viewable in our online tool will be iteratively updated as new data are incorporated and will ultimately supersede the results in this paper. The data used as inputs in these analyses are available for download on the Global Health Data Exchange website. These data include those available in public online repositories and those made available on request from the data provider. Data sources for reported COVID-19 mortality are also listed by location in the appendix (pp 8–37).
All maps presented in this study were generated by the authors using RStudio (R version 4.0.3) and ArcGIS Desktop (version 10.6.1), and no permissions were required to publish them.
Database of all-cause mortality
We searched government websites, compendia developed by the World Mortality Database,18 the Human Mortality Database, and the European Statistical Office, and identified 74 countries and territories and an additional 266 subnational locations where either weekly or monthly all-cause mortality data were reported for periods in 2020 and 2021, and for up to 11 years previously (appendix pp 4–8, 47). These locations included 31 locations in low-income and middle-income countries. In addition to the time-detailed all-cause mortality data that are publicly available for the estimation of excess mortality, we also included empirical assessments of excess mortality for the nine provinces of South Africa (in addition to all-cause mortality data at the national level) and 12 states of India (in lieu of state-level all-cause mortality data). The Medical Research Council of South Africa used the data from both the civil registration system and the Rapid Mortality Surveillance Report to produce timely excess mortality estimates at the national and provincial levels (all nine provinces). For India, empirical assessment of excess mortality for 12 states used data from the civil registration system. For different months during the first and second waves of the COVID-19 epidemic in the 12 states in India, total numbers of deaths for those states during the corresponding months were made available (appendix pp 7–8). Using the mean reported deaths during the same periods in years 2018 and 2019, we were able to generate excess mortality rates for those Indian states after accounting for under-registration of mortality by the civil registration system at the state level.
We identified three types of data issues. First, all-cause mortality from weekly or monthly reporting often has considerable lags in reporting (appendix pp 51–84). Figure 1 shows the effect of lags in reporting of all-cause mortality on excess mortality for the vital registration system in the USA; it takes approximately 20 weeks for data in the USA to be nearly complete. We systematically reviewed input vital registration data and trimmed periods that were likely to be subject to late registration for all locations in the analysis. As these data have been made public only recently, we had limited information by which to identify the precise lag time in late registration; this was particularly true for locations where data are made available more sporadically and by month. We therefore took a conservative approach and excluded data from more recent weeks and months in 2021 in our calculation of excess mortality.
Second, in many European countries, registered deaths spiked in late July and early August (calendar weeks 31–33) of 2020, which was a period when reported COVID-19 deaths were extremely low as reported in our online tool. This period coincided with a heat wave; such spikes in all-cause mortality have been observed in Europe during similar timeframes in previous years.19, 20, 21 Because our model cannot separate excess mortality due to COVID-19 from excess deaths occurring during a heat wave, we excluded these weeks of data for all countries in western Europe (classified according to the Global Burden of Diseases, Injuries, and Risk Factors Study [GBD] location groupings) from subsequent analyses to avoid potentially exaggerating the impact of COVID-19 on all-cause mortality during 2020.
Third, as under-reporting of deaths is common in most vital registration systems, especially those from outside the high-income group of countries, we corrected all-cause mortality data for under-registration of death as estimated in GBD 2019;22 six countries were corrected because GBD estimates suggested registration was less than 95% for the calendar year 2019. This under-reporting correction was in addition to, and distinct from, the late registration issue.
Estimating expected mortality with an ensemble model
To estimate expected mortality, we developed six models, each fit separately by location. The first four models were based on first estimating the weekly (or monthly) seasonal pattern of mortality and then estimating the time trend in weekly or monthly mortality not explained by seasonality. We used a Bayesian spline to estimate the weekly seasonal pattern for each location using data from 2010, or the earliest year after 2010 when such data first became available, until around February, 2020, when the COVID-19 pandemic started for each location (appendix p 48). Second, using the same Bayesian spline, we estimated the time trend in the residuals (additional details provided in the appendix, pp 38–40). By combining the seasonal and secular trends, we generated predictions of the expected level of mortality in 2020 and 2021.
The specification of the spline can have a sizeable impact on the estimated expected mortality for a particular location. To make the results more robust to model specification, we included in our ensemble four variants according to where the second to last knot in the spline was placed: 6 months, 12 months, 18 months, and 24 months before the end of the period for the input data before the COVID-19 pandemic started for each location. We also included in the ensemble a Poisson model with fixed effects on week and year, and a model that assumed that expected mortality for 2020 and 2021 was the same as the corresponding weekly mortality observed in 2019. To derive weights for the different models in the ensemble, we assessed how each model performed in an out-of-sample predictive validity test. We fit the model to all data prior to March 1, 2019 and then evaluated how each model performed in predicting mortality between March, 2019, and February, 2020, compared with observed mortality in the same time period. We then weighted component models in the ensemble using 1 over the root mean squared error (RMSE) of the predictions for each component to down-weight component models with larger RMSE (and thus less accurate predictions) in the ensemble. A global weighting scheme was used for all locations. The distribution of RMSE by location for each of the six models included in the model ensemble and examples of the estimated excess mortality for each component model are provided in the appendix (p 49). Expected mortality from the ensemble model was subtracted from observed mortality in 2020 and 2021 to estimate excess mortality due to the COVID-19 pandemic.
Predicting excess mortality due to the COVID-19 pandemic
Based on our estimation of expected mortality, and after applying the exclusions that account for late registration and other anomalies as previously described, we generated excess mortality estimates for each location where we had input data (figure 2). In addition, we added excess mortality estimates from two countries where the ensemble model could not be applied due to data constraints: South Africa (only the provinces) and India. We obtained national and province-level excess mortality rate estimates for South Africa which are regularly updated by the Medical Research Council of South Africa, and excess mortality estimates for select periods during the first and second waves of the COVID-19 epidemic for 12 states in India. Using these empirical excess mortality estimates, we developed a statistical model to predict excess mortality for all 191 national and 252 subnational locations in our analysis for the uniform period of Jan 1, 2020, to Dec 31, 2021 (appendix pp 40–43). This model was crucial for directly estimating excess mortality in countries where reported all-cause mortality data have not been available during the pandemic.
Various studies have examined the associations between particular underlying medical conditions and increased risk of severe COVID-19. We examined all available and relevant covariates on the basis of a meta-analysis conducted by the US Centers for Disease Control and Prevention,23 as well as covariates directly related to the COVID-19 pandemic, including seroprevalence (lagged by 25 days), mobility (lagged by 19 days), IDR (lagged by 19 days), and reported crude death rate due to COVID-19. For the model to be parsimonious, we used least absolute shrinkage and selection operator (LASSO) regression to help identify covariates that have sensible direction of effect on excess mortality rate (appendix pp 41–43). With the variable selection done via LASSO with input of mean level excess mortality and covariates, the following 15 covariates were included in our final log-linear model, where the dependent variable was excess mortality in logarithmic scale: lagged cumulative infection rate (seroprevalence) in log space, COVID-19 mortality rate in log space, crude death rate in log space, lagged IDR, annual inpatient admissions per capita, diabetes mortality rate in log space, HIV mortality rate in log space, lagged mobility, binned quality of vital registration data, average absolute latitude, cardiovascular disease mortality rate in log space, smoking prevalence, HAQ Index, proportion of the population aged 75 years or older, and universal health care coverage. These covariates explained 69·1% of the variation in the input data to this regression. We also calculated in-sample residuals for the locations that had directly observed excess mortality rates used in the regression (ie, India and South Africa). Regional and super-regional residuals, per the GBD regional classification system, were calculated as the mean residuals from locations included in each regional aggregate. We also calculated a country-level residual for India using the residual from the 12 states to recognise the dispersed periods and geographical regions covered by the civil registration data. Further details on the methodology are provided in the appendix (p 38–43). To validate our modelling process, we conducted out-of-sample predictive validity testing. Given the sparsity of input data on empirical excess mortality, we validated our model by repeatedly leaving one location out of the input data, then re-estimated the model and made predictions for the left-out location. Our analysis showed that the mean relative error of predicted excess mortality rate is 0·85% and the root mean squared error of predicted excess mortality rate is 0·00072, indicating a precise prediction model that has low bias.
In predicting excess mortality for all locations for the uniform period of Jan 1, 2020, to Dec 31, 2021, we used estimated coefficients and residuals from different aggregate levels together with all selected COVID-related covariates for the same period and other population health-related covariates for the year 2019 (appendix p 43). Ratios of estimated excess mortality to reported COVID-19 deaths were computed using the modelled excess mortality and the reported COVID-19 counts for each location.
As noted previously, policy makers and researchers have proposed many other causes of death that might have been affected by lockdown restrictions, unemployment, and increased poverty. To date, insufficient data are available to widely test for increases in deaths due to pandemic-related elements, such as deferred care, or for reductions in deaths, such as decreases in injury-related deaths due to reduced mobility.
COVID-19 excess deaths with uncertainty
To fully account for uncertainties in both the input empirical excess mortality and the selected covariates, 100 draws of excess mortality for each location were produced by use of 100 draws of coefficients of covariates and residuals and 100 draws of all selected covariates. Draw-level coefficients and residuals were obtained by repeating the excess mortality model 100 times with use of draw-level input excess mortality and covariates. Mean excess mortality with 95% uncertainty intervals [UIs] were generated on the basis of the draw-level estimates (appendix p 43).
Predicted excess mortality rates were used to compute the number of COVID-19-related excess deaths by multiplying the predicted excess mortality rate by person-years of exposure for the period. We used estimates of population size by location from the GBD, which by definition are the total person-years of exposure for a calendar year.
Role of the funding source
The funders of the study had no role in study design, data collection, data analysis, data interpretation, or the writing of the report.
Results
By Dec 31, 2021, global reported deaths due to COVID-19 reached 5·94 million, but the estimated number of excess deaths was nearly 3·07-times (95% UI 2·88–3·30) greater, reaching 18·2 million (17·1–19·6). The global all-age rate of excess mortality due to the COVID-19 pandemic was 120·3 deaths (113·1–129·3) per 100 000 of the population.
The table provides summary statistics for each country and territory, including reported deaths due to COVID-19, estimated excess deaths due to the COVID-19 pandemic, the ratio of the two, and reported and excess all-age COVID-19 mortality rates. The magnitude of the excess mortality burden has varied substantially between countries. The highest estimated excess mortality rate due to COVID-19 was 734·9 deaths (95% UI 594·1–879·2) per 100 000 of the population in Bolivia (compared with the global rate of 120·3 [113·1–129·3]), whereas negative excess mortality rates were estimated in Iceland, Australia, Singapore, New Zealand, and Taiwan (province of China), representing a large range. Excess mortality rates exceeded 300 deaths per 100 000 in 21 countries. At the regional level, the highest estimated excess mortality rates were in Andean Latin America, eastern Europe, central Europe, southern sub-Saharan Africa, and central Latin America, with several locations outside these regions having similarly high rates, particularly Lebanon, Armenia, Tunisia, Libya, several regions in Italy, and several states in southern USA (figure 2, table). Rates varied substantially in western Europe; some countries had rates nearly as high as the locations listed previously, while others, such as Iceland, Norway, Ireland, and Cyprus, had some of the lowest rates in the world, at less than 50 deaths per 100 000. Mortality rates varied across north Africa and the Middle East, with high rates in Lebanon (416·2 deaths [347·4–515·5] per 100 000), Tunisia (324·2 [265·4–376·4] per 100 000), Libya (292·1 [232·2–358·8] per 100 000), and Iraq (280·1 [216·7–362·5] per 100 000). Low excess mortality rates were estimated across sub-Saharan Africa, with the notable exception of four nations in southern sub-Saharan Africa: Eswatini (634·9 [491·8–775·4] per 100 000), Lesotho (562·9 [460·8–691·4] per 100 000), Botswana (399·5 [329·1–482·1] per 100 000), and Namibia (395·6 [340·2–448·8] per 100 000). In south Asia, some states in India had excess mortality rates due to COVID-19 similar to those of some high-income countries in the northern hemisphere.
Table.
Reported COVID-19 deaths | Reported COVID-19 mortality rate (per 100 000) | Estimated excess deaths | Estimated excess mortality rate (per 100 000) | Ratio between excess mortality rate and reported COVID-19 mortality rate | |||
---|---|---|---|---|---|---|---|
Global | 5 940 000 | 39·2 | 18 200 000 (17 100 000 to 19 600 000) | 120·3 (113·1 to 129·3) | 3·07 (2·88 to 3·30) | ||
Central Europe, eastern Europe, and central Asia | 1 170 000 | 148·2 | 2 340 000 (2 310 000 to 2 380 000) | 296·5 (291·9 to 300·5) | 2·00 (1·97 to 2·03) | ||
Central Asia | 52 800 | 30·2 | 281 000 (271 000 to 292 000) | 160·6 (155·0 to 166·8) | 5·32 (5·14 to 5·53) | ||
Armenia | 7970 | 140·9 | 20 600 (19 600 to 21 900) | 364·4 (347·0 to 387·6) | 2·59 (2·46 to 2·75) | ||
Azerbaijan | 8360 | 42·4 | 53 500 (51 400 to 55 600) | 271·5 (260·8 to 282·2) | 6·40 (6·15 to 6·66) | ||
Georgia | 13 800 | 203·0 | 15 800 (14 100 to 18 000) | 233·1 (207·6 to 264·4) | 1·15 (1·02 to 1·30) | ||
Kazakhstan | 12 900 | 37·1 | 49 000 (46 800 to 50 900) | 141·0 (134·8 to 146·7) | 3·80 (3·64 to 3·96) | ||
Kyrgyzstan | 2800 | 22·4 | 22 600 (21 200 to 23 900) | 180·2 (169·4 to 190·4) | 8·06 (7·58 to 8·52) | ||
Mongolia | 2060 | 33·4 | 5600 (4540 to 6430) | 90·9 (73·7 to 104·4) | 2·72 (2·21 to 3·13) | ||
Tajikistan | 254 | 1·4 | 29 400 (28 300 to 30 500) | 160·6 (155·0 to 166·8) | 115·80 (111·78 to 120·29) | ||
Turkmenistan | 3180 | 33·5 | 15 200 (14 700 to 15 800) | 160·6 (155·0 to 166·8) | 4·79 (4·62 to 4·97) | ||
Uzbekistan | 1480 | 2·4 | 69 100 (66 000 to 73 400) | 112·3 (107·4 to 119·3) | 46·51 (44·47 to 49·41) | ||
Central Europe | 337 000 | 157·8 | 674 000 (657 000 to 687 000) | 315·7 (308·0 to 322·0) | 2·00 (1·95 to 2·04) | ||
Albania | 3220 | 64·4 | 17 300 (16 500 to 18 100) | 346·5 (331·1 to 361·3) | 5·38 (5·14 to 5·61) | ||
Bosnia and Herzegovina | 13 400 | 214·8 | 20 900 (19 600 to 22 000) | 333·9 (313·8 to 351·7) | 1·55 (1·46 to 1·64) | ||
Bulgaria | 31 000 | 243·0 | 82 500 (81 200 to 83 800) | 647·3 (637·6 to 658·2) | 2·66 (2·62 to 2·71) | ||
Croatia | 12 500 | 156·7 | 22 900 (22 100 to 23 800) | 285·6 (275·7 to 297·6) | 1·82 (1·76 to 1·90) | ||
Czechia | 36 100 | 180·1 | 49 100 (47 000 to 51 000) | 244·8 (234·5 to 254·5) | 1·36 (1·30 to 1·41) | ||
Hungary | 39 200 | 217·0 | 53 800 (52 400 to 55 200) | 297·8 (290·2 to 305·5) | 1·37 (1·34 to 1·41) | ||
Montenegro | 2410 | 210·9 | 4080 (3670 to 4470) | 357·0 (321·2 to 390·9) | 1·69 (1·52 to 1·85) | ||
North Macedonia | 7960 | 229·9 | 20 200 (19 100 to 21 200) | 583·6 (552·9 to 613·8) | 2·54 (2·40 to 2·67) | ||
Poland | 97 100 | 135·0 | 214 000 (210 000 to 218 000) | 297·2 (291·7 to 302·7) | 2·20 (2·16 to 2·24) | ||
Romania | 58 800 | 161·9 | 119 000 (115 000 to 125 000) | 328·7 (318·1 to 345·2) | 2·03 (1·97 to 2·13) | ||
Serbia | 12 700 | 77·7 | 37 400 (35 200 to 40 700) | 228·9 (215·4 to 248·7) | 2·95 (2·77 to 3·20) | ||
Slovakia | 16 600 | 163·7 | 25 400 (23 800 to 26 600) | 250·4 (234·6 to 261·5) | 1·53 (1·43 to 1·60) | ||
Slovenia | 5590 | 144·0 | 6980 (6070 to 7830) | 179·9 (156·5 to 201·8) | 1·25 (1·09 to 1·40) | ||
Eastern Europe | 783 000 | 194·4 | 1 390 000 (1 370 000 to 1 410 000) | 345·2 (340·6 to 349·5) | 1·78 (1·75 to 1·80) | ||
Belarus | 5580 | 31·5 | 85 600 (81 600 to 93 400) | 483·1 (460·7 to 527·0) | 15·34 (14·63 to 16·74) | ||
Estonia | 1930 | 77·8 | 5630 (5180 to 6180) | 226·7 (208·3 to 248·9) | 2·92 (2·68 to 3·20) | ||
Latvia | 4570 | 129·3 | 12 400 (11 700 to 13 100) | 352·0 (332·1 to 371·5) | 2·72 (2·57 to 2·87) | ||
Lithuania | 7390 | 142·5 | 20 000 (19 200 to 20 800) | 385·0 (370·3 to 400·4) | 2·70 (2·60 to 2·81) | ||
Moldova | 10 300 | 152·8 | 16 500 (15 100 to 18 100) | 245·2 (223·9 to 268·8) | 1·60 (1·47 to 1·76) | ||
Russia | 651 000 | 228·1 | 1 070 000 (1 060 000 to 1 080 000) | 374·6 (369·7 to 378·4) | 1·64 (1·62 to 1·66) | ||
Ukraine | 102 000 | 125·0 | 181 000 (177 000 to 186 000) | 221·7 (217·0 to 228·2) | 1·77 (1·74 to 1·83) | ||
High income | 1 840 000 | 87·9 | 2 640 000 (2 520 000 to 2 750 000) | 125·8 (120·2 to 131·1) | 1·43 (1·37 to 1·49) | ||
Australasia | 2300 | 4·0 | −19 000 (−22 200 to −15 200) | −32·9 (−38·6 to −26·4) | −8·23 (−9·65 to −6·60) | ||
Australia | 2250 | 4·7 | −18 100 (−21 400 to −14 400) | −37·6 (−44·5 to −29·9) | −8·03 (−9·52 to −6·39) | ||
New Zealand | 51 | 0·5 | −872 (−1330 to −451) | −9·3 (−14·1 to −4·8) | −17·10 (−26·06 to −8·84) | ||
High-income Asia Pacific | 24 900 | 6·8 | 114 000 (103 000 to 124 000) | 30·9 (28·1 to 33·8) | 4·56 (4·15 to 4·99) | ||
Brunei | 98 | 11·7 | 132 (44 to 217) | 15·8 (5·2 to 25·9) | 1·35 (0·44 to 2·22) | ||
Japan | 18 400 | 7·3 | 111 000 (103 000 to 116 000) | 44·1 (41·0 to 46·4) | 6·02 (5·58 to 6·33) | ||
Singapore | 828 | 7·4 | −1770 (−2360 to −1090) | −15·8 (−21·0 to −9·8) | −2·14 (−2·85 to −1·32) | ||
South Korea | 5620 | 5·4 | 4630 (−658 to 9580) | 4·4 (−0·6 to 9·1) | 0·82 (−0·12 to 1·70) | ||
High-income North America | 855 000 | 121·5 | 1 180 000 (1 120 000 to 1 230 000) | 167·1 (158·9 to 174·9) | 1·38 (1·31 to 1·44) | ||
Canada | 30 300 | 41·9 | 43 700 (39 900 to 47 300) | 60·5 (55·2 to 65·4) | 1·44 (1·32 to 1·56) | ||
Alberta | 3310 | 40·3 | 5560 (4660 to 6470) | 67·7 (56·7 to 78·8) | 1·68 (1·41 to 1·96) | ||
British Columbia | 2420 | 24·2 | 5260 (4350 to 6250) | 52·5 (43·4 to 62·3) | 2·17 (1·80 to 2·58) | ||
Manitoba | 1390 | 54·5 | 2450 (1840 to 3110) | 95·8 (72·1 to 122·0) | 1·76 (1·32 to 2·24) | ||
New Brunswick | 160 | 11·1 | 391 (259 to 494) | 27·0 (17·9 to 34·2) | 2·44 (1·62 to 3·09) | ||
Newfoundland and Labrador | 19 | 2·0 | 106 (62 to 145) | 11·0 (6·4 to 15·0) | 5·59 (3·26 to 7·62) | ||
Northwest Territories | 12 | 14·4 | 32 (26 to 37) | 38·1 (31·6 to 44·8) | 2·64 (2·19 to 3·10) | ||
Nova Scotia | 111 | 6·1 | 327 (208 to 431) | 18·0 (11·5 to 23·8) | 2·95 (1·87 to 3·88) | ||
Nunavut | 4 | 8·3 | 13 (10 to 16) | 27·7 (21·4 to 32·4) | 3·35 (2·59 to 3·92) | ||
Ontario | 10 200 | 35·3 | 15 600 (13 000 to 17 500) | 53·9 (44·9 to 60·8) | 1·53 (1·27 to 1·72) | ||
Quebec | 11 700 | 73·0 | 12 400 (10 600 to 14 100) | 77·0 (66·0 to 87·9) | 1·05 (0·90 to 1·20) | ||
Saskatchewan | 955 | 43·6 | 1660 (1440 to 1910) | 75·8 (66·0 to 87·2) | 1·74 (1·51 to 2·00) | ||
Yukon | 15 | 19·7 | 32 (26 to 37) | 42·4 (34·5 to 49·1) | 2·15 (1·75 to 2·49) | ||
Greenland | 1 | 1·0 | 22 (14 to 29) | 21·5 (13·5 to 27·8) | 22·25 (13·99 to 28·78) | ||
USA | 824 000 | 130·6 | 1 130 000 (1 080 000 to 1 180 000) | 179·3 (170·7 to 187·5) | 1·37 (1·31 to 1·44) | ||
Alabama | 16 500 | 176·6 | 27 400 (26 000 to 28 600) | 293·5 (278·5 to 307·2) | 1·66 (1·58 to 1·74) | ||
Alaska | 975 | 71·5 | 1640 (1380 to 1950) | 120·4 (101·5 to 143·1) | 1·68 (1·42 to 2·00) | ||
Arizona | 24 200 | 171·9 | 31 900 (30 700 to 33 300) | 226·2 (218·1 to 235·9) | 1·32 (1·27 to 1·37) | ||
Arkansas | 9150 | 162·3 | 14 400 (13 200 to 15 400) | 255·5 (234·7 to 272·6) | 1·57 (1·45 to 1·68) | ||
California | 76 500 | 98·4 | 112 000 (108 000 to 116 000) | 144·3 (138·6 to 148·7) | 1·47 (1·41 to 1·51) | ||
Colorado | 10 300 | 94·5 | 12 500 (11 800 to 13 400) | 115·2 (108·3 to 123·2) | 1·22 (1·15 to 1·30) | ||
Connecticut | 9160 | 136·0 | 10 100 (9020 to 11 100) | 150·5 (134·0 to 164·5) | 1·11 (0·98 to 1·21) | ||
Delaware | 2400 | 131·3 | 3660 (3360 to 4020) | 200·9 (184·2 to 220·6) | 1·53 (1·40 to 1·68) | ||
Washington, DC | 1210 | 93·5 | −62 (−405 to 313) | −4·7 (−31·3 to 24·1) | −0·05 (−0·33 to 0·26) | ||
Florida | 62 400 | 153·0 | 86 400 (84 000 to 88 700) | 211·9 (206·1 to 217·4) | 1·38 (1·35 to 1·42) | ||
Georgia | 31 400 | 155·6 | 44 300 (43 100 to 45 700) | 219·3 (213·1 to 226·1) | 1·41 (1·37 to 1·45) | ||
Hawaii | 1080 | 39·7 | 851 (442 to 1320) | 31·2 (16·2 to 48·4) | 0·79 (0·41 to 1·22) | ||
Idaho | 4160 | 120·8 | 6200 (5760 to 6700) | 179·8 (167·2 to 194·5) | 1·49 (1·38 to 1·61) | ||
Illinois | 30 300 | 120·3 | 43 400 (40 800 to 45 700) | 172·4 (162·3 to 181·6) | 1·43 (1·35 to 1·51) | ||
Indiana | 19 000 | 149·7 | 21 500 (20 600 to 22 700) | 169·4 (162·3 to 178·2) | 1·13 (1·08 to 1·19) | ||
Iowa | 7860 | 132·0 | 7940 (6870 to 8840) | 133·4 (115·4 to 148·5) | 1·01 (0·87 to 1·12) | ||
Kansas | 7010 | 127·8 | 9580 (8610 to 10 400) | 174·8 (157·0 to 189·9) | 1·37 (1·23 to 1·49) | ||
Kentucky | 12 100 | 143·6 | 20 400 (19 000 to 21 700) | 241·5 (224·8 to 257·3) | 1·68 (1·57 to 1·79) | ||
Louisiana | 15 000 | 172·6 | 22 300 (20 800 to 23 600) | 257·1 (240·0 to 271·3) | 1·49 (1·39 to 1·57) | ||
Maine | 1530 | 60·2 | 2600 (1760 to 3290) | 102·4 (69·2 to 129·6) | 1·70 (1·15 to 2·15) | ||
Maryland | 11 800 | 101·5 | 19 400 (18 100 to 20 700) | 167·6 (156·1 to 178·2) | 1·65 (1·54 to 1·76) | ||
Massachusetts | 20 300 | 146·4 | 15 100 (13 500 to 16 600) | 109·1 (97·5 to 120·0) | 0·75 (0·67 to 0·82) | ||
Michigan | 29 000 | 154·7 | 33 600 (31 800 to 35 500) | 179·4 (169·8 to 189·5) | 1·16 (1·10 to 1·22) | ||
Minnesota | 10 700 | 99·5 | 10 100 (8730 to 11 200) | 94·1 (81·6 to 105·0) | 0·95 (0·82 to 1·05) | ||
Mississippi | 10 400 | 190·0 | 18 100 (16 900 to 19 100) | 329·7 (308·0 to 347·0) | 1·74 (1·62 to 1·83) | ||
Missouri | 16 200 | 141·3 | 22 100 (21 200 to 23 100) | 192·1 (184·4 to 201·4) | 1·36 (1·30 to 1·43) | ||
Montana | 2910 | 143·7 | 3560 (2810 to 4190) | 176·1 (138·9 to 207·3) | 1·23 (0·97 to 1·44) | ||
Nebraska | 3340 | 88·9 | 4710 (3870 to 5400) | 125·3 (103·1 to 143·7) | 1·41 (1·16 to 1·62) | ||
Nevada | 8420 | 135·0 | 10 300 (9550 to 11 200) | 165·2 (153·1 to 179·4) | 1·22 (1·13 to 1·33) | ||
New Hampshire | 1960 | 75·5 | 3470 (3100 to 3940) | 133·7 (119·6 to 151·7) | 1·77 (1·58 to 2·01) | ||
New Jersey | 29 000 | 166·4 | 34 800 (32 900 to 36 500) | 199·5 (188·6 to 209·4) | 1·20 (1·13 to 1·26) | ||
New Mexico | 5860 | 148·7 | 9450 (8940 to 10 000) | 240·1 (227·1 to 254·0) | 1·61 (1·53 to 1·71) | ||
New York | 59 400 | 155·8 | 78 100 (74 500 to 81 100) | 204·8 (195·2 to 212·5) | 1·31 (1·25 to 1·36) | ||
North Carolina | 19 400 | 98·7 | 33 700 (32 300 to 35 500) | 171·3 (163·9 to 180·4) | 1·74 (1·66 to 1·83) | ||
North Dakota | 2060 | 140·9 | 165 (−192 to 607) | 11·3 (−13·1 to 41·6) | 0·08 (−0·09 to 0·29) | ||
Ohio | 31 600 | 142·2 | 47 100 (45 100 to 49 000) | 211·6 (202·9 to 220·3) | 1·49 (1·43 to 1·55) | ||
Oklahoma | 12 400 | 167·5 | 18 500 (17 200 to 19 500) | 249·3 (232·8 to 263·9) | 1·49 (1·39 to 1·58) | ||
Oregon | 5970 | 74·3 | 10 100 (8920 to 11 100) | 125·5 (111·1 to 138·4) | 1·69 (1·49 to 1·86) | ||
Pennsylvania | 36 700 | 150·8 | 42 000 (39 900 to 44 200) | 172·5 (164·1 to 181·6) | 1·14 (1·09 to 1·20) | ||
Rhode Island | 3070 | 148·0 | 2350 (1720 to 2870) | 113·3 (83·1 to 138·6) | 0·77 (0·56 to 0·94) | ||
South Carolina | 14 600 | 152·5 | 23 800 (23 000 to 24 700) | 248·1 (239·5 to 257·7) | 1·63 (1·57 to 1·69) | ||
South Dakota | 2490 | 150·3 | 2590 (1990 to 3110) | 156·4 (120·2 to 188·2) | 1·04 (0·80 to 1·25) | ||
Tennessee | 20 800 | 160·5 | 26 800 (25 900 to 28 100) | 206·7 (199·2 to 216·5) | 1·29 (1·24 to 1·35) | ||
Texas | 75 700 | 133·8 | 114 000 (111 000 to 117 000) | 200·8 (195·2 to 205·9) | 1·50 (1·46 to 1·54) | ||
Utah | 3810 | 61·8 | 4810 (4260 to 5470) | 78·1 (69·2 to 88·7) | 1·26 (1·12 to 1·44) | ||
Vermont | 471 | 39·2 | 2080 (1610 to 2460) | 173·1 (133·8 to 204·7) | 4·41 (3·41 to 5·22) | ||
Virginia | 15 600 | 96·5 | 24 500 (23 600 to 25 600) | 151·8 (146·1 to 158·7) | 1·57 (1·51 to 1·64) | ||
Washington | 9900 | 68·8 | 13 100 (10 400 to 15 900) | 90·8 (72·3 to 110·3) | 1·32 (1·05 to 1·60) | ||
West Virginia | 5340 | 160·5 | 9260 (8340 to 10 000) | 278·4 (250·8 to 301·7) | 1·73 (1·56 to 1·88) | ||
Wisconsin | 11 200 | 97·0 | 12 700 (11 100 to 14 100) | 110·2 (96·3 to 122·3) | 1·14 (0·99 to 1·26) | ||
Wyoming | 1530 | 142·3 | 2120 (1670 to 2530) | 197·9 (155·6 to 235·6) | 1·39 (1·09 to 1·66) | ||
Southern Latin America | 162 000 | 129·0 | 189 000 (172 000 to 214 000) | 150·2 (136·6 to 169·7) | 1·16 (1·06 to 1·32) | ||
Argentina | 117 000 | 137·5 | 142 000 (125 000 to 165 000) | 166·8 (147·1 to 194·1) | 1·21 (1·07 to 1·41) | ||
Chile | 39 100 | 113·7 | 37 200 (35 200 to 39 300) | 108·2 (102·3 to 114·3) | 0·95 (0·90 to 1·00) | ||
Uruguay | 6170 | 97·6 | 9820 (8670 to 11 500) | 155·4 (137·2 to 181·5) | 1·59 (1·41 to 1·86) | ||
Western Europe | 796 000 | 94·7 | 1 180 000 (1 120 000 to 1 230 000) | 140·0 (133·5 to 146·3) | 1·48 (1·41 to 1·54) | ||
Andorra | 140 | 87·6 | 328 (286 to 376) | 205·5 (178·9 to 235·1) | 2·35 (2·04 to 2·68) | ||
Austria | 13 700 | 80·7 | 18 300 (16 400 to 20 200) | 107·5 (96·1 to 118·5) | 1·33 (1·19 to 1·47) | ||
Belgium | 28 300 | 126·5 | 32 800 (30 400 to 35 000) | 146·6 (135·8 to 156·3) | 1·16 (1·07 to 1·24) | ||
Cyprus | 646 | 25·7 | 809 (509 to 1110) | 32·2 (20·2 to 43·9) | 1·25 (0·79 to 1·71) | ||
Denmark | 3270 | 29·6 | 10 400 (8900 to 11 700) | 94·1 (80·5 to 106·3) | 3·18 (2·72 to 3·60) | ||
Finland | 1740 | 16·1 | 8780 (7190 to 10 200) | 80·8 (66·2 to 94·0) | 5·03 (4·12 to 5·86) | ||
France | 122 000 | 97·4 | 155 000 (151 000 to 160 000) | 124·2 (120·5 to 127·7) | 1·28 (1·24 to 1·31) | ||
Germany | 112 000 | 66·4 | 203 000 (193 000 to 210 000) | 120·5 (115·1 to 125·1) | 1·82 (1·73 to 1·88) | ||
Baden-Württemberg | 13 000 | 58·6 | 25 300 (23 400 to 26 900) | 114·6 (105·9 to 121·5) | 1·96 (1·81 to 2·07) | ||
Bavaria | 19 600 | 72·2 | 34 600 (31 700 to 36 500) | 127·2 (116·6 to 134·3) | 1·76 (1·62 to 1·86) | ||
Berlin | 4010 | 56·0 | 8380 (8000 to 8920) | 117·2 (111·8 to 124·6) | 2·09 (2·00 to 2·22) | ||
Brandenburg | 4680 | 92·6 | 7170 (6660 to 7600) | 141·9 (131·8 to 150·4) | 1·53 (1·42 to 1·63) | ||
Bremen | 599 | 43·9 | 1420 (1290 to 1530) | 103·7 (94·6 to 112·4) | 2·36 (2·16 to 2·56) | ||
Hamburg | 1990 | 54·7 | 3880 (3570 to 4150) | 106·9 (98·3 to 114·1) | 1·95 (1·80 to 2·09) | ||
Hesse | 8550 | 68·1 | 15 200 (14 400 to 15 900) | 121·2 (114·4 to 126·6) | 1·78 (1·68 to 1·86) | ||
Lower Saxony | 6810 | 42·3 | 14 300 (12 300 to 15 600) | 88·5 (76·3 to 97·0) | 2·09 (1·80 to 2·29) | ||
Mecklenburg-Western Pomerania | 1470 | 44·9 | 3410 (2920 to 3810) | 104·0 (89·0 to 116·3) | 2·32 (1·98 to 2·59) | ||
North Rhine-Westphalia | 20 300 | 55·8 | 42 300 (40 200 to 44 000) | 116·5 (110·7 to 121·1) | 2·09 (1·98 to 2·17) | ||
Rhineland-Palatinate | 4620 | 56·1 | 8530 (7430 to 9220) | 103·5 (90·2 to 111·9) | 1·85 (1·61 to 2·00) | ||
Saarland | 1240 | 61·5 | 2290 (2090 to 2440) | 113·0 (103·2 to 120·3) | 1·84 (1·68 to 1·96) | ||
Saxony | 12 800 | 154·4 | 16 800 (15 500 to 18 100) | 202·0 (187·0 to 218·0) | 1·31 (1·21 to 1·41) | ||
Saxony-Anhalt | 4250 | 93·0 | 6400 (5950 to 6830) | 140·3 (130·3 to 149·6) | 1·51 (1·40 to 1·61) | ||
Schleswig-Holstein | 1880 | 32·4 | 4520 (3820 to 5090) | 77·7 (65·8 to 87·6) | 2·40 (2·03 to 2·70) | ||
Thuringia | 5840 | 132·4 | 8140 (7520 to 8770) | 184·6 (170·4 to 198·9) | 1·39 (1·29 to 1·50) | ||
Greece | 20 800 | 104·1 | 25 400 (23 400 to 27 400) | 127·1 (117·0 to 137·2) | 1·22 (1·12 to 1·32) | ||
Iceland | 37 | 5·6 | −314 (−703 to 11) | −47·8 (−107·1 to 1·6) | −8·49 (−19·01 to 0·29) | ||
Ireland | 5910 | 63·5 | 1170 (84 to 2330) | 12·5 (0·9 to 25·0) | 0·20 (0·01 to 0·39) | ||
Israel | 8240 | 45·3 | 9280 (7860 to 10 600) | 51·0 (43·2 to 58·2) | 1·13 (0·95 to 1·28) | ||
Italy | 137 000 | 120·6 | 259 000 (242 000 to 276 000) | 227·4 (212·0 to 242·5) | 1·89 (1·76 to 2·01) | ||
Abruzzo | 2640 | 106·4 | 4570 (4040 to 5130) | 184·2 (162·7 to 206·9) | 1·73 (1·53 to 1·94) | ||
Basilicata | 634 | 60·2 | 1700 (1360 to 2040) | 161·9 (128·9 to 193·9) | 2·69 (2·14 to 3·22) | ||
Calabria | 1610 | 44·3 | 6920 (6180 to 7670) | 190·0 (169·8 to 210·5) | 4·29 (3·83 to 4·75) | ||
Campania | 8470 | 77·8 | 18∼600 (17 300 to 19 900) | 170·6 (159·2 to 182·6) | 2·19 (2·04 to 2·35) | ||
Emilia-Romagna | 14 200 | 164·8 | 19 900 (18 600 to 21 100) | 230·2 (215·7 to 244·7) | 1·40 (1·31 to 1·48) | ||
Friuli-Venezia Giulia | 4210 | 184·0 | 5060 (4610 to 5610) | 221·1 (201·3 to 245·0) | 1·20 (1·09 to 1·33) | ||
Lazio | 9270 | 85·5 | 18 400 (17 100 to 19 600) | 169·4 (158·0 to 180·8) | 1·98 (1·85 to 2·11) | ||
Liguria | 4580 | 158·0 | 9840 (9410 to 10 300) | 339·2 (324·4 to 356·0) | 2·15 (2·05 to 2·25) | ||
Lombardy | 35 100 | 185·9 | 59 500 (56 600 to 62 000) | 315·1 (300·1 to 328·5) | 1·70 (1·61 to 1·77) | ||
Marche | 3240 | 109·6 | 7400 (6790 to 8040) | 250·0 (229·5 to 271·5) | 2·28 (2·09 to 2·48) | ||
Molise | 512 | 90·0 | 1900 (1780 to 2070) | 334·5 (312·1 to 363·1) | 3·72 (3·47 to 4·03) | ||
Piedmont | 12 000 | 146·0 | 27 100 (25 600 to 28 700) | 328·9 (310·6 to 347·5) | 2·25 (2·13 to 2·38) | ||
Provincia autonoma di Bolzano | 1300 | 130·5 | 1670 (1430 to 2040) | 167·3 (143·0 to 203·7) | 1·28 (1·10 to 1·56) | ||
Provincia autonoma di Trento | 1420 | 136·4 | 1790 (1580 to 2030) | 172·2 (151·4 to 194·4) | 1·26 (1·11 to 1·42) | ||
Puglia | 6990 | 91·7 | 17 700 (16 300 to 19 000) | 232·1 (214·0 to 249·6) | 2·53 (2·33 to 2·72) | ||
Sardinia | 1730 | 56·3 | 4670 (4090 to 5320) | 152·3 (133·2 to 173·3) | 2·70 (2·36 to 3·08) | ||
Sicily | 7500 | 79·3 | 19 400 (18 000 to 20 600) | 204·5 (189·7 to 218·0) | 2·58 (2·39 to 2·75) | ||
Tuscany | 7590 | 107·5 | 12 700 (11 700 to 13 800) | 179·6 (165·4 to 195·0) | 1·67 (1·54 to 1·81) | ||
Umbria | 1500 | 87·2 | 3180 (2960 to 3440) | 184·5 (171·7 to 199·7) | 2·11 (1·97 to 2·29) | ||
Aosta Valley | 488 | 204·2 | 713 (572 to 840) | 298·3 (239·5 to 351·7) | 1·46 (1·17 to 1·72) | ||
Veneto | 12 400 | 132·5 | 16 600 (15 300 to 17 800) | 177·5 (164·0 to 190·7) | 1·34 (1·24 to 1·44) | ||
Luxembourg | 915 | 76·0 | 1070 (685 to 1400) | 89·2 (56·8 to 116·4) | 1·17 (0·75 to 1·53) | ||
Malta | 476 | 58·2 | 735 (528 to 925) | 89·9 (64·6 to 113·0) | 1·54 (1·11 to 1·94) | ||
Monaco | 38 | 53·1 | 53 (40 to 62) | 74·4 (55·5 to 86·3) | 1·40 (1·04 to 1·63) | ||
Netherlands | 21 400 | 65·8 | 45 500 (42 700 to 48 000) | 140·0 (131·3 to 147·6) | 2·13 (2·00 to 2·24) | ||
Norway | 1300 | 12·8 | 742 (−4 to 1630) | 7·2 (−0·0 to 15·9) | 0·57 (−0·00 to 1·25) | ||
Portugal | 19 000 | 94·8 | 40 400 (38 100 to 42 400) | 202·2 (190·7 to 212·2) | 2·13 (2·01 to 2·24) | ||
San Marino | 100 | 160·3 | 118 (100 to 138) | 189·6 (159·7 to 221·5) | 1·18 (1·00 to 1·38) | ||
Spain | 98 900 | 114·1 | 162 000 (157 000 to 166 000) | 186·7 (181·3 to 191·5) | 1·64 (1·59 to 1·68) | ||
Andalucia | 11 800 | 75·2 | 24 000 (21 800 to 29 400) | 153·0 (139·0 to 187·7) | 2·03 (1·85 to 2·50) | ||
Aragon | 4070 | 168·6 | 6050 (5270 to 6850) | 250·3 (218·3 to 283·5) | 1·48 (1·29 to 1·68) | ||
Asturias | 2160 | 115·2 | 3430 (2810 to 3940) | 182·9 (150·1 to 210·3) | 1·59 (1·30 to 1·83) | ||
Balearic Islands | 1070 | 50·2 | 2980 (2400 to 3640) | 139·9 (112·8 to 170·7) | 2·79 (2·25 to 3·40) | ||
Basque Country | 4990 | 121·2 | 7410 (6370 to 8200) | 179·8 (154·5 to 199·1) | 1·48 (1·28 to 1·64) | ||
Canary Islands | 1140 | 28·7 | 3700 (2960 to 4840) | 93·1 (74·3 to 121·8) | 3·24 (2·59 to 4·24) | ||
Cantabria | 635 | 59·0 | 1430 (1200 to 1620) | 132·4 (111·3 to 150·9) | 2·24 (1·89 to 2·56) | ||
Castile and León | 6420 | 147·3 | 9980 (9110 to 11 000) | 228·8 (208·8 to 251·8) | 1·55 (1·42 to 1·71) | ||
Castilla–La Mancha | 6580 | 176·9 | 8710 (8040 to 9450) | 234·0 (215·9 to 253·8) | 1·32 (1·22 to 1·43) | ||
Catalonia | 24 500 | 174·1 | 35 600 (33 200 to 40 600) | 252·6 (235·9 to 288·8) | 1·45 (1·35 to 1·66) | ||
Ceuta | 131 | 84·4 | 255 (227 to 282) | 164·3 (146·1 to 181·5) | 1·95 (1·73 to 2·15) | ||
Extremadura | 2010 | 103·4 | 3500 (3070 to 4490) | 179·9 (157·8 to 230·5) | 1·74 (1·53 to 2·23) | ||
Galicia | 2760 | 56·4 | 5790 (5060 to 6440) | 118·2 (103·3 to 131·5) | 2·10 (1·83 to 2·33) | ||
La Rioja | 844 | 144·0 | 1220 (1050 to 1460) | 208·9 (178·4 to 249·7) | 1·45 (1·24 to 1·73) | ||
Madrid | 18 500 | 148·8 | 27 000 (24 500 to 29 400) | 217·8 (197·0 to 236·6) | 1·46 (1·32 to 1·59) | ||
Melilla | 121 | 76·4 | 304 (248 to 386) | 192·1 (156·5 to 243·6) | 2·51 (2·05 to 3·19) | ||
Murcia | 1830 | 66·8 | 3550 (3000 to 3970) | 129·7 (109·5 to 145·2) | 1·94 (1·64 to 2·18) | ||
Navarre | 1290 | 108·0 | 2250 (1980 to 2440) | 188·3 (165·7 to 204·0) | 1·74 (1·53 to 1·89) | ||
Valencian Community | 8120 | 87·9 | 14 800 (13 300 to 16 000) | 160·2 (144·6 to 173·5) | 1·82 (1·64 to 1·97) | ||
Sweden | 15 300 | 77·2 | 18 100 (16 900 to 19 500) | 91·2 (85·2 to 98·1) | 1·18 (1·10 to 1·27) | ||
Switzerland | 12 000 | 72·0 | 15 500 (14 000 to 17 000) | 93·1 (83·9 to 101·8) | 1·29 (1·16 to 1·42) | ||
UK | 173 000 | 130·1 | 169 000 (163 000 to 174 000) | 126·8 (122·3 to 130·9) | 0·97 (0·94 to 1·01) | ||
England | 147 000 | 131·1 | 142 000 (137 000 to 145 000) | 125·8 (122·1 to 128·7) | 0·96 (0·93 to 0·98) | ||
Northern Ireland | 4010 | 107·3 | 4930 (3800 to 6170) | 131·8 (101·6 to 165·0) | 1·23 (0·95 to 1·54) | ||
Scotland | 12 500 | 117·3 | 13 900 (12 300 to 15 400) | 130·6 (115·7 to 145·1) | 1·11 (0·99 to 1·24) | ||
Wales | 9180 | 149·5 | 8320 (7480 to 9050) | 135·5 (121·9 to 147·5) | 0·91 (0·82 to 0·99) | ||
Latin America and the Caribbean | 1 520 000 | 134·7 | 2 860 000 (2 680 000 to 3 070 000) | 254·0 (237·6 to 272·2) | 1·89 (1·76 to 2·02) | ||
Andean Latin America | 257 000 | 211·2 | 622 000 (580 000 to 669 000) | 511·9 (477·8 to 550·5) | 2·42 (2·26 to 2·61) | ||
Bolivia | 19 700 | 89·8 | 161 000 (130 000 to 193 000) | 734·9 (594·1 to 879·2) | 8·18 (6·61 to 9·79) | ||
Ecuador | 34 100 | 101·5 | 112 000 (106 000 to 117 000) | 333·4 (315·1 to 348·0) | 3·28 (3·10 to 3·43) | ||
Peru | 203 000 | 307·2 | 349 000 (328 000 to 367 000) | 528·6 (497·5 to 556·4) | 1·72 (1·62 to 1·81) | ||
Caribbean | 26 800 | 31·5 | 103 000 (68 100 to 140 000) | 120·7 (80·1 to 164·3) | 3·83 (2·54 to 5·22) | ||
Antigua and Barbuda | 119 | 71·8 | 43 (−89 to 249) | 26·1 (−53·9 to 150·2) | 0·36 (−0·75 to 2·09) | ||
The Bahamas | 717 | 100·3 | 1060 (547 to 1440) | 147·6 (76·4 to 200·9) | 1·47 (0·76 to 2·00) | ||
Barbados | 260 | 47·3 | 553 (319 to 789) | 100·7 (58·1 to 143·6) | 2·13 (1·23 to 3·03) | ||
Belize | 602 | 77·6 | 982 (540 to 1330) | 126·5 (69·6 to 172·0) | 1·63 (0·90 to 2·22) | ||
Bermuda | 110 | 94·1 | 145 (84 to 213) | 123·9 (72·1 to 182·3) | 1·32 (0·77 to 1·94) | ||
Cuba | 8320 | 39·6 | 26 600 (15 000 to 46 800) | 126·8 (71·5 to 223·0) | 3·20 (1·80 to 5·63) | ||
Dominica | 47 | 38·2 | 149 (83 to 224) | 120·6 (67·3 to 182·3) | 3·16 (1·76 to 4·78) | ||
Dominican Republic | 4250 | 20·6 | 20 800 (10 400 to 29 100) | 100·7 (50·3 to 141·0) | 4·89 (2·45 to 6·85) | ||
Grenada | 200 | 106·3 | 255 (132 to 392) | 135·7 (70·2 to 208·3) | 1·28 (0·66 to 1·96) | ||
Guyana | 1050 | 76·7 | 2690 (1390 to 3930) | 196·0 (101·3 to 286·7) | 2·55 (1·32 to 3·74) | ||
Haiti | 766 | 3·3 | 27 900 (14 100 to 42 200) | 118·3 (59·7 to 178·9) | 36·38 (18·36 to 55·04) | ||
Jamaica | 2470 | 47·5 | 6460 (3680 to 8720) | 124·1 (70·6 to 167·5) | 2·61 (1·49 to 3·53) | ||
Puerto Rico | 3300 | 54·0 | 6000 (5040 to 6950) | 98·0 (82·3 to 113·5) | 1·82 (1·53 to 2·10) | ||
Saint Kitts and Nevis | 28 | 26·2 | 30 (−50 to 74) | 28·6 (−46·9 to 69·1) | 1·09 (−1·79 to 2·63) | ||
Saint Lucia | 295 | 89·8 | 501 (286 to 710) | 152·3 (87·1 to 216·0) | 1·70 (0·97 to 2·41) | ||
Saint Vincent and the Grenadines | 81 | 38·2 | 234 (121 to 361) | 110·6 (57·3 to 170·5) | 2·89 (1·50 to 4·46) | ||
Suriname | 1190 | 109·0 | 2590 (1370 to 3790) | 237·2 (125·7 to 346·9) | 2·18 (1·15 to 3·18) | ||
Trinidad and Tobago | 2870 | 111·1 | 5130 (2640 to 7830) | 198·8 (102·2 to 303·5) | 1·79 (0·92 to 2·73) | ||
Virgin Islands | 89 | 47·4 | 526 (301 to 837) | 280·3 (160·1 to 445·5) | 5·91 (3·38 to 9·40) | ||
Central Latin America | 599 000 | 124·1 | 1 320 000 (1 240 000 to 1 430 000) | 274·4 (256·6 to 296·4) | 2·21 (2·07 to 2·39) | ||
Colombia | 130 000 | 145·9 | 179 000 (171 000 to 187 000) | 201·2 (191·5 to 209·4) | 1·38 (1·31 to 1·44) | ||
Costa Rica | 7350 | 82·8 | 6220 (5450 to 7310) | 70·0 (61·4 to 82·4) | 0·85 (0·74 to 0·99) | ||
El Salvador | 3820 | 32·2 | 26 900 (21 000 to 32 800) | 226·8 (177·1 to 276·4) | 7·04 (5·49 to 8·57) | ||
Guatemala | 16 400 | 56·4 | 51 100 (43 200 to 59 200) | 175·7 (148·6 to 203·2) | 3·11 (2·63 to 3·60) | ||
Honduras | 10 400 | 56·0 | 55 400 (46 900 to 67 100) | 297·1 (251·7 to 360·0) | 5·31 (4·50 to 6·43) | ||
Mexico | 418 000 | 170·2 | 798 000 (741 000 to 867 000) | 325·1 (301·6 to 353·3) | 1·91 (1·77 to 2·08) | ||
Aguascalientes | 4470 | 161·5 | 7070 (6420 to 7650) | 255·8 (232·2 to 276·6) | 1·58 (1·44 to 1·71) | ||
Baja California | 14 100 | 193·1 | 24 700 (21 600 to 27 400) | 337·0 (295·4 to 374·0) | 1·75 (1·53 to 1·94) | ||
Baja California Sur | 3060 | 198·3 | 3740 (3330 to 4220) | 242·2 (216·3 to 273·4) | 1·22 (1·09 to 1·38) | ||
Campeche | 3250 | 181·9 | 4940 (4430 to 5540) | 276·0 (247·6 to 309·4) | 1·52 (1·36 to 1·70) | ||
Chiapas | 4730 | 43·1 | 23 100 (20 500 to 25 800) | 210·9 (187·0 to 235·0) | 4·90 (4·34 to 5·46) | ||
Chihuahua | 11 800 | 162·8 | 26 600 (23 300 to 29 500) | 367·7 (321·9 to 407·8) | 2·26 (1·98 to 2·51) | ||
Coahuila | 11 200 | 182·7 | 21 600 (19 400 to 23 600) | 352·7 (317·2 to 386·3) | 1·93 (1·74 to 2·11) | ||
Colima | 2480 | 175·4 | 2540 (2220 to 2870) | 179·3 (157·1 to 202·4) | 1·02 (0·90 to 1·15) | ||
Durango | 4960 | 139·6 | 8610 (7490 to 9630) | 242·3 (210·7 to 271·1) | 1·74 (1·51 to 1·94) | ||
Guanajuato | 16 600 | 138·7 | 32 900 (30 900 to 35 200) | 274·6 (258·1 to 294·1) | 1·98 (1·86 to 2·12) | ||
Guerrero | 9610 | 139·5 | 15 900 (14 500 to 17 500) | 230·4 (210·7 to 254·7) | 1·65 (1·51 to 1·83) | ||
Hidalgo | 10 000 | 164·4 | 16 200 (14 900 to 17 300) | 265·5 (244·9 to 284·1) | 1·62 (1·49 to 1·73) | ||
Jalisco | 23 200 | 142·9 | 34 200 (31 000 to 38 000) | 210·5 (190·6 to 233·8) | 1·47 (1·33 to 1·64) | ||
México | 73 900 | 220·6 | 145 000 (134 000 to 156 000) | 433·6 (398·9 to 466·3) | 1·97 (1·81 to 2·11) | ||
Mexico City | 61 300 | 339·9 | 104 000 (95 400 to 112 000) | 576·9 (528·6 to 620·9) | 1·70 (1·56 to 1·83) | ||
Michoacán de Ocampo | 10 600 | 115·6 | 20 200 (18 600 to 22 000) | 219·0 (202·4 to 238·4) | 1·90 (1·75 to 2·06) | ||
Morelos | 7070 | 184·9 | 11 200 (9930 to 12300) | 291·6 (259·5 to 321·9) | 1·58 (1·40 to 1·74) | ||
Nayarit | 3150 | 131·4 | 4170 (3780 to 4610) | 173·8 (157·4 to 192·0) | 1·32 (1·20 to 1·46) | ||
Nuevo León | 19 900 | 177·1 | 32 800 (30 700 to 35 500) | 292·3 (273·6 to 315·8) | 1·65 (1·55 to 1·78) | ||
Oaxaca | 8290 | 102·4 | 17 600 (16 200 to 19 700) | 217·8 (199·6 to 243·7) | 2·13 (1·95 to 2·38) | ||
Puebla | 20 600 | 160·9 | 51 100 (48 200 to 55 200) | 399·7 (376·7 to 431·5) | 2·48 (2·34 to 2·68) | ||
Querétaro | 7000 | 151·7 | 10 300 (9380 to 11 300) | 224·0 (203·2 to 244·0) | 1·48 (1·34 to 1·61) | ||
Quintana Roo | 5240 | 143·5 | 8840 (7720 to 10 300) | 241·7 (211·3 to 281·1) | 1·68 (1·47 to 1·96) | ||
San Luis Potosí | 8190 | 150·0 | 16 900 (15 700 to 18 000) | 308·9 (287·8 to 330·1) | 2·06 (1·92 to 2·20) | ||
Sinaloa | 10 200 | 173·9 | 17 900 (15 900 to 19 900) | 303·9 (270·2 to 337·7) | 1·75 (1·55 to 1·94) | ||
Sonora | 11 300 | 198·3 | 19 300 (17 200 to 21 500) | 340·6 (303·3 to 377·9) | 1·72 (1·53 to 1·91) | ||
Tabasco | 7330 | 158·0 | 16 000 (14 400 to 18 100) | 344·7 (309·8 to 390·8) | 2·18 (1·96 to 2·47) | ||
Tamaulipas | 9280 | 136·3 | 21 800 (19 700 to 23 700) | 320·1 (288·7 to 347·2) | 2·35 (2·12 to 2·55) | ||
Tlaxcala | 3640 | 140·1 | 13 400 (12 400 to 14 700) | 517·2 (476·3 to 567·0) | 3·69 (3·40 to 4·05) | ||
Veracruz de Ignacio de la Llave | 20 800 | 133·2 | 44 300 (41 400 to 47 800) | 284·4 (266·0 to 306·5) | 2·14 (2·00 to 2·30) | ||
Yucatán | 6070 | 135·1 | 11 300 (10 200 to 12 500) | 252·1 (227·6 to 279·1) | 1·87 (1·68 to 2·07) | ||
Zacatecas | 4610 | 146·8 | 9780 (9040 to 10 400) | 311·4 (288·1 to 332·8) | 2·12 (1·96 to 2·27) | ||
Nicaragua | 223 | 1·8 | 33 400 (31 300 to 36 100) | 274·4 (256·6 to 296·4) | 149·99 (140·28 to 162·04) | ||
Panama | 7430 | 96·2 | 10 200 (8840 to 11 300) | 131·5 (114·4 to 145·8) | 1·37 (1·19 to 1·52) | ||
Venezuela | 5430 | 9·1 | 164 000 (153 000 to 177 000) | 274·4 (256·6 to 296·4) | 30·17 (28·21 to 32·59) | ||
Tropical Latin America | 636 000 | 145·1 | 815 000 (751 000 to 870 000) | 186·0 (171·5 to 198·5) | 1·28 (1·18 to 1·37) | ||
Brazil | 619 000 | 146·0 | 792 000 (730 000 to 847 000) | 186·9 (172·2 to 199·8) | 1·28 (1·18 to 1·37) | ||
Acre | 1850 | 101·3 | 2470 (2040 to 2860) | 135·0 (111·4 to 156·3) | 1·33 (1·10 to 1·54) | ||
Alagoas | 6380 | 85·8 | 7270 (6050 to 8390) | 97·8 (81·3 to 112·8) | 1·14 (0·95 to 1·31) | ||
Amapá | 2020 | 125·8 | 3370 (2860 to 3820) | 209·5 (178·1 to 237·7) | 1·67 (1·42 to 1·89) | ||
Amazonas | 13 800 | 167·2 | 20 400 (18 500 to 23 000) | 246·1 (223·9 to 278·1) | 1·47 (1·34 to 1·66) | ||
Bahia | 27 500 | 87·4 | 45 700 (41 900 to 48 500) | 145·1 (132·9 to 154·2) | 1·66 (1·52 to 1·77) | ||
Ceará | 24 800 | 124·3 | 50 900 (45 900 to 57 500) | 255·1 (230·2 to 288·0) | 2·05 (1·85 to 2·32) | ||
Federal District | 11 100 | 183·4 | 10 900 (9700 to 12 000) | 180·8 (160·2 to 198·5) | 0·99 (0·87 to 1·08) | ||
Espírito Santo | 13 300 | 171·6 | 17 400 (15 100 to 20 000) | 224·3 (194·1 to 258·1) | 1·31 (1·13 to 1·50) | ||
Goiás | 24 700 | 186·2 | 29 700 (27 800 to 31 300) | 223·9 (209·5 to 236·4) | 1·20 (1·13 to 1·27) | ||
Maranhão | 10 400 | 64·3 | 32 900 (29 600 to 45 800) | 204·2 (183·3 to 284·1) | 3·17 (2·85 to 4·41) | ||
Mato Grosso | 13 800 | 200·2 | 16 100 (14 800 to 17 100) | 233·7 (214·7 to 248·0) | 1·17 (1·07 to 1·24) | ||
Mato Grosso do Sul | 9730 | 176·1 | 9800 (8720 to 10 700) | 177·4 (157·9 to 194·0) | 1·01 (0·90 to 1·10) | ||
Minas Gerais | 56 700 | 133·7 | 74 200 (69 000 to 78 800) | 175·1 (162·9 to 185·8) | 1·31 (1·22 to 1·39) | ||
Pará | 17 100 | 96·7 | 25 500 (23 000 to 27 400) | 144·0 (130·3 to 155·0) | 1·49 (1·35 to 1·60) | ||
Paraíba | 9600 | 111·8 | 9230 (8420 to 10 200) | 107·6 (98·1 to 118·9) | 0·96 (0·88 to 1·06) | ||
Paraná | 40 900 | 184·6 | 43 000 (40 200 to 45 600) | 194·3 (181·3 to 205·7) | 1·05 (0·98 to 1·11) | ||
Pernambuco | 20 400 | 103·4 | 32 200 (29 600 to 34 400) | 163·0 (149·7 to 174·1) | 1·58 (1·45 to 1·68) | ||
Piauí | 7280 | 103·3 | 10 100 (8910 to 11 100) | 143·7 (126·6 to 158·2) | 1·39 (1·23 to 1·53) | ||
Rio de Janeiro | 69 500 | 197·9 | 80 200 (74 300 to 85 300) | 228·4 (211·8 to 242·9) | 1·15 (1·07 to 1·23) | ||
Rio Grande do Norte | 7570 | 103·0 | 8920 (7870 to 9810) | 121·4 (107·1 to 133·5) | 1·18 (1·04 to 1·30) | ||
Rio Grande do Sul | 36 400 | 170·3 | 36 400 (33 900 to 39 200) | 170·2 (158·4 to 183·2) | 1·00 (0·93 to 1·08) | ||
Rondônia | 6730 | 190·6 | 9510 (8650 to 10 200) | 269·0 (244·7 to 289·4) | 1·41 (1·28 to 1·52) | ||
Roraima | 2080 | 180·7 | 2110 (1910 to 2370) | 183·9 (166·2 to 206·0) | 1·02 (0·92 to 1·14) | ||
Santa Catarina | 20 200 | 146·8 | 20 200 (18 600 to 21 600) | 147·0 (135·4 to 157·3) | 1·00 (0·92 to 1·07) | ||
São Paulo | 155 000 | 172·8 | 182 000 (169 000 to 193 000) | 202·9 (188·0 to 215·3) | 1·17 (1·09 to 1·25) | ||
Sergipe | 6060 | 126·3 | 5900 (5020 to 6690) | 123·1 (104·7 to 139·6) | 0·97 (0·83 to 1·11) | ||
Tocantins | 3940 | 121·6 | 5480 (4880 to 6040) | 169·2 (150·7 to 186·6) | 1·39 (1·24 to 1·54) | ||
Paraguay | 16 600 | 117·7 | 22 500 (21 600 to 23 300) | 159·2 (153·1 to 165·3) | 1·35 (1·30 to 1·40) | ||
North Africa and the Middle East | 374 000 | 31·2 | 1 730 000 (1 570 000 to 1 990 000) | 144·7 (131·0 to 165·9) | 4·64 (4·20 to 5·32) | ||
North Africa and the Middle East | 374 000 | 31·2 | 1 730 000 (1 570 000 to 1 990 000) | 144·7 (131·0 to 165·9) | 4·64 (4·20 to 5·32) | ||
Afghanistan | 7360 | 8·1 | 192 000 (142 000 to 242 000) | 211·9 (157·4 to 267·1) | 26·06 (19·36 to 32·86) | ||
Algeria | 6280 | 7·5 | 54 400 (41 600 to 65 500) | 65·1 (49·8 to 78·4) | 8·67 (6·63 to 10·43) | ||
Bahrain | 1390 | 48·0 | 3920 (3060 to 4780) | 134·7 (105·4 to 164·4) | 2·81 (2·20 to 3·43) | ||
Egypt | 21 800 | 10·9 | 265 000 (248 000 to 278 000) | 133·3 (124·9 to 140·0) | 12·19 (11·42 to 12·80) | ||
Iran | 132 000 | 77·1 | 274 000 (231 000 to 335 000) | 160·5 (135·2 to 196·4) | 2·08 (1·75 to 2·55) | ||
Iraq | 24 200 | 36·9 | 183 000 (142 000 to 237 000) | 280·1 (216·7 to 362·5) | 7·59 (5·87 to 9·82) | ||
Jordan | 12 700 | 53·5 | 27 000 (21 300 to 33 200) | 114·4 (90·2 to 140·5) | 2·14 (1·69 to 2·63) | ||
Kuwait | 2470 | 28·5 | 3560 (2670 to 4300) | 41·1 (30·9 to 49·6) | 1·44 (1·08 to 1·74) | ||
Lebanon | 9120 | 105·0 | 36 100 (30 200 to 44 800) | 416·2 (347·4 to 515·5) | 3·96 (3·31 to 4·91) | ||
Libya | 5710 | 45·4 | 36 700 (29 200 to 45 100) | 292·1 (232·2 to 358·8) | 6·43 (5·11 to 7·90) | ||
Morocco | 14 800 | 21·6 | 157 000 (126 000 to 203 000) | 228·3 (182·9 to 294·9) | 10·56 (8·46 to 13·64) | ||
Oman | 4120 | 47·5 | 12 300 (11 500 to 12 900) | 141·5 (133·0 to 148·8) | 2·98 (2·80 to 3·13) | ||
Palestine | 4660 | 48·9 | 12 600 (10 600 to 15 300) | 132·2 (111·3 to 160·5) | 2·70 (2·28 to 3·28) | ||
Qatar | 618 | 10·7 | 1560 (1170 to 1800) | 27·0 (20·3 to 31·3) | 2·52 (1·89 to 2·92) | ||
Saudi Arabia | 8880 | 12·5 | 32 900 (21 100 to 41 600) | 46·4 (29·9 to 58·8) | 3·70 (2·38 to 4·69) | ||
Sudan | 3330 | 4·3 | 83 600 (59 900 to 100 000 | 108·5 (77·8 to 130·4) | 25·12 (18·00 to 30·17) | ||
Syria | 2900 | 6·6 | 27 100 (17 200 to 35 800) | 61·7 (39·1 to 81·4) | 9·36 (5·94 to 12·36) | ||
Tunisia | 25 600 | 114·4 | 72 500 (59 300 to 84 100) | 324·2 (265·4 to 376·4) | 2·83 (2·32 to 3·29) | ||
Turkey | 82 400 | 52·9 | 185 000 (160 000 to 217 000) | 118·6 (103·1 to 139·2) | 2·24 (1·95 to 2·63) | ||
United Arab Emirates | 2160 | 21·1 | 9340 (6500 to 11 800) | 91·3 (63·5 to 115·6) | 4·32 (3·01 to 5·47) | ||
Yemen | 1980 | 3·3 | 65 600 (37 800 to 97 600) | 108·0 (62·2 to 160·9) | 33·04 (19·03 to 49·21) | ||
South Asia | 558 000 | 16·0 | 5 270 000 (4 710 000 to 5 700 000) | 151·7 (135·5 to 163·9) | 9·46 (8·45 to 10·22) | ||
South Asia | 558 000 | 16·0 | 5 270 000 (4 710 000 to 5 700 000) | 151·7 (135·5 to 163·9) | 9·46 (8·45 to 10·22) | ||
Bangladesh | 28 100 | 9·2 | 413 000 (347 000 to 504 000) | 134·7 (113·2 to 164·3) | 14·72 (12·36 to 17·94) | ||
Bhutan | 3 | 0·2 | 108 (45 to 160) | 7·4 (3·1 to 10·9) | 36·06 (15·14 to 53·25) | ||
India | 489 000 | 18·3 | 4 070 000 (3 710 000 to 4 360 000) | 152·5 (138·6 to 163·3) | 8·33 (7·58 to 8·92) | ||
Andhra Pradesh | 14 500 | 14·1 | 194 000 (170 000 to 211 000) | 189·2 (165·6 to 206·3) | 13·38 (11·71 to 14·59) | ||
Arunachal Pradesh | 282 | 8·9 | 1790 (968 to 2400) | 56·4 (30·5 to 75·6) | 6·34 (3·43 to 8·51) | ||
Assam | 6160 | 9·1 | 119 000 (96 200 to 137 000) | 176·6 (142·1 to 202·8) | 19·38 (15·60 to 22·26) | ||
Bihar | 12 100 | 5·2 | 323 000 (257 000 to 388 000) | 137·7 (109·7 to 165·5) | 26·68 (21·27 to 32·07) | ||
Chhattisgarh | 13 600 | 22·3 | 150 000 (132 000 to 167 000) | 246·7 (215·9 to 274·2) | 11·05 (9·67 to 12·28) | ||
Delhi | 25 100 | 65·6 | 61 300 (41 600 to 77 100) | 160·2 (108·8 to 201·5) | 2·44 (1·66 to 3·07) | ||
Goa | 3520 | 124·6 | 3400 (1550 to 4960) | 120·2 (54·8 to 175·6) | 0·96 (0·44 to 1·41) | ||
Gujarat | 10 100 | 7·7 | 131 000 (103 000 to 149 000) | 99·2 (78·2 to 113·3) | 12·91 (10·18 to 14·76) | ||
Haryana | 10 100 | 18·1 | 132 000 (116 000 to 146 000) | 236·4 (207·3 to 262·2) | 13·09 (11·48 to 14·52) | ||
Himachal Pradesh | 3860 | 27·1 | 33 600 (26 500 to 39 200) | 235·9 (186·1 to 275·3) | 8·71 (6·87 to 10·17) | ||
Jammu & Kashmir and Ladakh | 4750 | 17·7 | 41 600 (29 400 to 48 300) | 155·4 (109·9 to 180·6) | 8·76 (6·19 to 10·18) | ||
Jharkhand | 5140 | 7·1 | 82 700 (61 300 to 99 600) | 115·0 (85·2 to 138·4) | 16·08 (11·92 to 19·37) | ||
Karnataka | 38 300 | 28·7 | 284 000 (223 000 to 327 000) | 212·9 (166·9 to 245·0) | 7·41 (5·81 to 8·52) | ||
Kerala | 58 500 | 84·3 | 114 000 (90 700 to 133 000) | 165·1 (130·7 to 191·4) | 1·96 (1·55 to 2·27) | ||
Madhya Pradesh | 10 500 | 6·2 | 223 000 (188 000 to 253 000) | 132·2 (111·2 to 149·7) | 21·20 (17·83 to 24·00) | ||
Maharashtra | 142 000 | 59·6 | 616 000 (484 000 to 736 000) | 259·5 (203·7 to 309·8) | 4·36 (3·42 to 5·20) | ||
Manipur | 2000 | 29·8 | 17 700 (13 900 to 21 300) | 263·8 (207·6 to 317·1) | 8·85 (6·96 to 10·64) | ||
Meghalaya | 1480 | 23·1 | 8910 (6620 to 11 100) | 138·9 (103·1 to 173·1) | 6·00 (4·46 to 7·48) | ||
Mizoram | 543 | 22·9 | 2950 (2020 to 3700) | 124·3 (85·1 to 156·2) | 5·43 (3·71 to 6·82) | ||
Nagaland | 711 | 22·7 | 5370 (3430 to 7380) | 171·0 (109·2 to 235·1) | 7·55 (4·82 to 10·38) | ||
Odisha | 8510 | 9·5 | 130 000 (108 000 to 148 000) | 145·4 (120·5 to 165·5) | 15·24 (12·63 to 17·35) | ||
Punjab | 16 600 | 28·0 | 135 000 (98 600 to 154 000) | 227·1 (166·1 to 259·1) | 8·10 (5·93 to 9·25) | ||
Rajasthan | 8960 | 5·7 | 135 000 (97 600 to 162 000) | 85·9 (62·1 to 102·8) | 15·07 (10·88 to 18·03) | ||
Sikkim | 409 | 34·5 | 992 (641 to 1260) | 83·6 (54·1 to 106·5) | 2·42 (1·57 to 3·09) | ||
Tamil Nadu | 36 800 | 24·0 | 260 000 (199 000 to 301 000) | 169·8 (130·3 to 196·7) | 7·06 (5·42 to 8·18) | ||
Telangana | 4030 | 5·2 | 55 400 (43 300 to 65 400) | 71·9 (56·2 to 84·9) | 13·75 (10·74 to 16·24) | ||
Tripura | 826 | 11·0 | 9260 (6780 to 10 500) | 123·5 (90·5 to 140·5) | 11·21 (8·21 to 12·75) | ||
Uttar Pradesh | 22 900 | 4·8 | 517 000 (418 000 to 602 000) | 108·2 (87·4 to 125·8) | 22·58 (18·24 to 26·27) | ||
Uttarakhand | 7420 | 32·5 | 65 000 (51 200 to 75 700) | 284·6 (224·1 to 331·5) | 8·77 (6·90 to 10·21) | ||
West Bengal | 19 800 | 10·5 | 220 000 (132 000 to 254 000) | 116·7 (70·2 to 134·9) | 11·14 (6·70 to 12·87) | ||
Nepal | 11 600 | 19·1 | 123 000 (107 000 to 142 000) | 202·5 (175·9 to 232·7) | 10·61 (9·22 to 12·20) | ||
Pakistan | 28 900 | 6·6 | 664 000 (498 000 to 847 000) | 152·6 (114·3 to 194·7) | 22·99 (17·22 to 29·32) | ||
Azad Jammu & Kashmir | 746 | 9·8 | 12 900 (10 200 to 16 600) | 170·3 (134·3 to 218·2) | 17·35 (13·68 to 22·22) | ||
Balochistan | 364 | 1·4 | 18 100 (10 500 to 26 500) | 67·8 (39·5 to 99·3) | 49·64 (28·94 to 72·74) | ||
Gilgit-Baltistan | 186 | 5·3 | 5120 (3470 to 6820) | 146·8 (99·5 to 195·3) | 27·53 (18·67 to 36·65) | ||
Islamabad Capital Territory | 967 | 22·8 | 3790 (2960 to 4600) | 89·2 (69·7 to 108·2) | 3·92 (3·07 to 4·75) | ||
Khyber Pakhtunkhwa | 5930 | 8·0 | 186 000 (118 000 to 262 000) | 252·8 (159·4 to 355·4) | 31·44 (19·83 to 44·21) | ||
Punjab | 13 100 | 5·9 | 313 000 (230 000 to 403 000) | 141·1 (103·5 to 181·4) | 23·98 (17·59 to 30·82) | ||
Sindh | 7640 | 7·8 | 125 000 (96 700 to 159 000) | 127·7 (99·2 to 162·9) | 16·30 (12·66 to 20·78) | ||
Southeast Asia, east Asia, and Oceania | 329 000 | 7·5 | 1 250 000 (1 060 000 to 1 500 000) | 28·6 (24·2 to 34·3) | 3·79 (3·22 to 4·55) | ||
East Asia | 5760 | 0·2 | 15 500 (4320 to 27 900) | 0·5 (0·1 to 0·9) | 2·69 (0·75 to 4·85) | ||
China | 4820 | 0·2 | 17 900 (7540 to 30 100) | 0·6 (0·3 to 1·0) | 3·71 (1·56 to 6·25) | ||
Hubei | 4510 | 4·0 | 10 600 (5710 to 15 500) | 9·4 (5·1 to 13·7) | 2·34 (1·27 to 3·42) | ||
All other provinces | 311 | 0·0 | 7330 (1630 to 14 100) | 0·3 (0·1 to 0·5) | 23·57 (5·25 to 45·30) | ||
North Korea | 86 | 0·2 | 318 (134 to 536) | 0·6 (0·3 to 1·0) | 3·71 (1·56 to 6·25) | ||
Taiwan (province of China) | 850 | 1·8 | −2720 (−4460 to −736) | −5·9 (−9·6 to −1·6) | −3·20 (−5·25 to −0·87) | ||
Oceania | 1570 | 7·3 | 17 500 (11 900 to 24 700) | 81·3 (55·4 to 115·1) | 11·11 (7·58 to 15·73) | ||
Fiji | 698 | 41·1 | 1480 (1030 to 1930) | 87·1 (61·0 to 113·6) | 2·12 (1·48 to 2·76) | ||
Guam | 270 | 86·3 | 333 (292 to 382) | 106·6 (93·5 to 122·3) | 1·23 (1·08 to 1·42) | ||
Northern Mariana Islands | 13 | 17·2 | 31 (18 to 44) | 41·0 (23·7 to 57·4) | 2·39 (1·38 to 3·35) | ||
Papua New Guinea | 590 | 3·1 | 15 600 (10 400 to 22 200) | 82·0 (54·9 to 116·8) | 26·43 (17·69 to 37·68) | ||
Vanuatu | 1 | 0·3 | 35 (10 to 72) | 9·4 (2·7 to 19·2) | 34·98 (10·18 to 71·57) | ||
Southeast Asia | 322 000 | 24·0 | 1 210 000 (1 030 000 to 1 460 000) | 90·8 (77·0 to 109·0) | 3·78 (3·20 to 4·54) | ||
Cambodia | 3010 | 9·0 | 17 500 (12 700 to 23 700) | 52·5 (38·2 to 71·1) | 5·80 (4·22 to 7·85) | ||
Indonesia | 144 000 | 27·5 | 736 000 (594 000 to 955 000) | 140·7 (113·6 to 182·5) | 5·11 (4·12 to 6·63) | ||
Laos | 372 | 2·8 | 4640 (3180 to 6190) | 34·7 (23·8 to 46·3) | 12·47 (8·56 to 16·65) | ||
Malaysia | 31 500 | 53·3 | 48 100 (40 300 to 58 200) | 81·4 (68·2 to 98·5) | 1·53 (1·28 to 1·85) | ||
Maldives | 262 | 27·3 | 296 (231 to 372) | 30·8 (24·0 to 38·7) | 1·13 (0·88 to 1·42) | ||
Mauritius | 762 | 32·5 | 659 (331 to 987) | 28·2 (14·1 to 42·2) | 0·87 (0·43 to 1·30) | ||
Myanmar | 19 300 | 19·2 | 10 1000 (71 800 to 140 000) | 100·9 (71·7 to 139·7) | 5·25 (3·73 to 7·26) | ||
Philippines | 53 000 | 23·8 | 184 000 (175 000 to 197 000) | 82·9 (78·8 to 88·7) | 3·48 (3·31 to 3·72) | ||
Seychelles | 134 | 69·1 | 116 (98 to 144) | 60·0 (50·7 to 74·0) | 0·87 (0·73 to 1·07) | ||
Sri Lanka | 15 000 | 34·3 | 12 900 (7670 to 18 100) | 29·5 (17·6 to 41·4) | 0·86 (0·51 to 1·21) | ||
Thailand | 21 700 | 15·3 | 35 200 (26 600 to 42 200) | 24·9 (18·7 to 29·8) | 1·62 (1·22 to 1·94) | ||
Timor-Leste | 122 | 4·8 | 1300 (976 to 1610) | 51·1 (38·4 to 63·3) | 10·65 (8·00 to 13·19) | ||
Vietnam | 32 400 | 16·6 | 72 300 (39 600 to 111 000) | 37·0 (20·3 to 57·1) | 2·23 (1·22 to 3·44) | ||
Sub-Saharan Africa | 150 000 | 7·2 | 2 130 000 (1 730 000 to 2 820 000) | 101·6 (82·4 to 134·5) | 14·20 (11·51 to 18·79) | ||
Central sub-Saharan Africa | 3910 | 1·5 | 195 000 (142 000 to 273 000) | 76·8 (55·7 to 107·5) | 50·00 (36·26 to 70·00) | ||
Angola | 1770 | 3·0 | 64 000 (46 000 to 88 900) | 107·3 (77·2 to 149·0) | 36·17 (26·01 to 50·20) | ||
Central African Republic | 101 | 0·9 | 14 100 (8980 to 21 600) | 118·4 (75·5 to 181·6) | 139·24 (88·86 to 213·67) | ||
Congo (Brazzaville) | 367 | 3·7 | 11 700 (9320 to 15 000) | 117·2 (93·3 to 150·4) | 31·91 (25·39 to 40·95) | ||
DR Congo | 1200 | 0·7 | 98 700 (66 400 to 151 000) | 59·2 (39·8 to 90·4) | 81·94 (55·08 to 125·13) | ||
Equatorial Guinea | 175 | 6·3 | 2770 (2090 to 3620) | 99·9 (75·5 to 130·8) | 15·82 (11·95 to 20·71) | ||
Gabon | 288 | 8·6 | 3980 (3240 to 4770) | 119·0 (96·7 to 142·5) | 13·83 (11·25 to 16·57) | ||
Eastern sub-Saharan Africa | 28 800 | 3·6 | 1 010 000 (780 000 to 1 440 000) | 127·1 (98·5 to 181·5) | 35·00 (27·11 to 49·97) | ||
Burundi | 34 | 0·2 | 4310 (2730 to 6350) | 19·8 (12·5 to 29·1) | 126·85 (80·33 to 186·68) | ||
Comoros | 157 | 12·4 | 1480 (1090 to 1850) | 117·2 (86·1 to 146·6) | 9·42 (6·92 to 11·79) | ||
Djibouti | 189 | 8·1 | 3850 (2940 to 4840) | 164·3 (125·7 to 206·8) | 20·36 (15·57 to 25·63) | ||
Eritrea | 76 | 0·5 | 7210 (5130 to 10 300) | 51·0 (36·3 to 72·9) | 94·90 (67·52 to 135·68) | ||
Ethiopia | 6940 | 3·5 | 208 000 (150 000 to 313 000) | 104·6 (75·4 to 157·5) | 30·00 (21·63 to 45·19) | ||
Kenya | 5380 | 5·7 | 171 000 (127 000 to 266 000) | 181·2 (135·3 to 281·8) | 31·75 (23·70 to 49·38) | ||
Madagascar | 1030 | 2·0 | 65 100 (49 000 to 94 000) | 125·4 (94·3 to 180·9) | 63·44 (47·67 to 91·51) | ||
Malawi | 2360 | 6·8 | 54 900 (45 400 to 68 900) | 158·9 (131·4 to 199·4) | 23·24 (19·22 to 29·16) | ||
Mozambique | 2010 | 3·6 | 78 100 (54 100 to 109 000) | 139·2 (96·4 to 193·8) | 38·91 (26·95 to 54·17) | ||
Rwanda | 1350 | 5·5 | 21 900 (17 500 to 27 500) | 89·8 (71·4 to 112·6) | 16·26 (12·93 to 20·38) | ||
Somalia | 1330 | 2·6 | 89 000 (45 800 to 153 000) | 172·1 (88·6 to 295·8) | 66·78 (34·37 to 114·77) | ||
South Sudan | 135 | 0·6 | 14 700 (8460 to 24 000) | 66·1 (37·9 to 107·6) | 109·08 (62·64 to 177·57) | ||
Tanzania | 737 | 0·7 | 132 000 (102 000 to 188 000) | 127·1 (98·5 to 181·5) | 178·81 (138·54 to 255·32) | ||
Uganda | 3290 | 4·2 | 73 500 (55 900 to 95 400) | 93·5 (71·1 to 121·4) | 22·31 (16·97 to 28·96) | ||
Zambia | 3730 | 10·5 | 81 300 (59 100 to 115 000) | 228·2 (165·9 to 322·8) | 21·77 (15·83 to 30·79) | ||
Southern sub-Saharan Africa | 104 000 | 71·6 | 449 000 (418 000 to 483 000) | 308·6 (287·3 to 331·6) | 4·31 (4·01 to 4·63) | ||
Botswana | 2440 | 56·8 | 17 200 (14 200 to 20 700) | 399·5 (329·1 to 482·1) | 7·03 (5·79 to 8·48) | ||
Eswatini | 1300 | 60·9 | 13 600 (10 500 to 16 600) | 634·9 (491·8 to 775·4) | 10·42 (8·07 to 12·73) | ||
Lesotho | 665 | 21·0 | 17 800 (14 600 to 21 900) | 562·9 (460·8 to 691·4) | 26·82 (21·96 to 32·94) | ||
Namibia | 3630 | 79·8 | 18 000 (15 500 to 20 400) | 395·6 (340·2 to 448·8) | 4·95 (4·26 to 5·62) | ||
South Africa | 91 100 | 88·6 | 302 000 (287 000 to 332 000) | 293·2 (279·0 to 322·8) | 3·31 (3·15 to 3·64) | ||
Zimbabwe | 5000 | 17·6 | 80 900 (64 000 to 101 000) | 283·6 (224·7 to 352·7) | 16·16 (12·80 to 20·09) | ||
Western sub-Saharan Africa | 13 200 | 1·5 | 480 000 (343 000 to 650 000) | 53·0 (37·9 to 71·8) | 36·37 (25·98 to 49·26) | ||
Benin | 161 | 0·7 | 8250 (5560 to 11 500) | 33·6 (22·7 to 46·7) | 51·23 (34·56 to 71·17) | ||
Burkina Faso | 318 | 0·8 | 21 400 (14 200 to 31 800) | 51·0 (33·8 to 75·9) | 67·18 (44·53 to 99·91) | ||
Cape Verde | 352 | 34·4 | 659 (505 to 790) | 64·5 (49·4 to 77·3) | 1·87 (1·44 to 2·24) | ||
Cameroon | 1850 | 3·1 | 41 300 (30 800 to 53 600) | 70·3 (52·4 to 91·2) | 22·32 (16·63 to 28·94) | ||
Chad | 181 | 0·6 | 15 200 (8570 to 23 500) | 47·0 (26·5 to 72·7) | 83·87 (47·34 to 129·85) | ||
Côte d'Ivoire | 714 | 1·3 | 33 900 (24 600 to 47 100) | 63·4 (45·9 to 88·0) | 47·50 (34·43 to 66·00) | ||
The Gambia | 343 | 7·8 | 6340 (5230 to 7840) | 144·9 (119·6 to 179·2) | 18·48 (15·25 to 22·85) | ||
Ghana | 1300 | 2·1 | 35 900 (28 100 to 44 700) | 58·3 (45·6 to 72·5) | 27·75 (21·71 to 34·51) | ||
Guinea | 391 | 1·6 | 26 700 (18 500 to 38 900) | 111·0 (77·0 to 161·8) | 68·23 (47·35 to 99·49) | ||
Guinea-Bissau | 149 | 4·0 | 4350 (3310 to 5560) | 116·4 (88·8 to 148·9) | 29·17 (22·25 to 37·29) | ||
Liberia | 287 | 3·3 | 7970 (6310 to 10 700) | 90·6 (71·7 to 121·5) | 27·77 (21·97 to 37·24) | ||
Mali | 660 | 1·5 | 33 500 (22 100 to 47 500) | 76·1 (50·3 to 107·8) | 50·75 (33·55 to 71·95) | ||
Mauritania | 866 | 10·9 | 7990 (5680 to 10 500) | 100·5 (71·5 to 131·7) | 9·22 (6·56 to 12·09) | ||
Niger | 275 | 0·6 | 18 100 (10 300 to 27 700) | 39·5 (22·4 to 60·3) | 65·86 (37·38 to 100·67) | ||
Nigeria | 3030 | 0·7 | 163 000 (93 500 to 238 000) | 37·8 (21·7 to 55·3) | 53·66 (30·85 to 78·54) | ||
São Tomé and Príncipe | 57 | 14·8 | 235 (157 to 303) | 61·1 (40·8 to 78·6) | 4·13 (2·76 to 5·32) | ||
Senegal | 1890 | 6·4 | 38 600 (31 900 to 50 000) | 130·1 (107·6 to 168·5) | 20·46 (16·92 to 26·51) | ||
Sierra Leone | 123 | 0·8 | 7570 (4980 to 10 300) | 47·3 (31·2 to 64·5) | 61·54 (40·52 to 83·92) | ||
Togo | 248 | 1·6 | 9030 (6920 to 12 000) | 58·0 (44·5 to 77·2) | 36·42 (27·91 to 48·49) |
Data in parentheses are 95% uncertainty intervals.
In terms of cumulative number of excess deaths due to the COVID-19 pandemic from Jan 1, 2020, to Dec 31, 2021, the highest numbers of deaths were estimated in India (4·07 million [95% UI 3·71–4·36]) and the USA (1·13 million [1·08–1·18]; figure 3, table). Five more countries had cumulative excess deaths exceeding 500 000 over this period: Russia (1·07 million [1·06–1·08]), Mexico (798 000 [741 000–867 000]), Brazil (792 000 [730 000–847 000]), Indonesia (736 000 [594 000–955 000]), and Pakistan (664 000 [498 000–847 000]). These seven countries accounted for more than half of the global excess deaths due to COVID-19 over the 24-month period. Among these countries, the excess mortality rate was highest in Russia (374·6 deaths [369·7–378·4] per 100 000) and Mexico (325·1 [301·6–353·3]), and was similar in Brazil (186·9 [172·2–199·8]) and the USA (179·3 [170·7–187·5]). An additional six countries individually had more than 250 000 excess deaths estimated during this period: Bangladesh (413 000 [347 000–504 000]), Peru (349 000 [328 000–367 000]), South Africa (302 000 [287 000–332 000]), Iran (274 000 [231 000–335 000]), Egypt (265 000 [248 000–278 000]), and Italy (259 000 [242 000–276 000]). These high-burden countries are distributed across all GBD regions of the world, reinforcing the evidence for the truly global nature of the pandemic. At the regional level, the number of excess deaths due to the COVID-19 pandemic was largest in the regions of south Asia, north Africa and the Middle East, and eastern Europe.
We also computed the ratio of excess mortality rate to reported COVID-19 mortality rate as a measurement of undercounting of the true mortality impact of the pandemic. There were wide variations in the ratio across and within regions (figure 4; table). In high-income North America, the ratios were comparatively low, ranging from −0·05 to 4·41 between states in the USA, and from 1·05 to 5·59 between provinces in Canada. The ratio was 2·21 (95% UI 2·07–2·39) for central Latin America, with higher ratios in some countries including El Salvador (7·04 [5·49–8·57]) and lower ratios in others such as Costa Rica (0·85 [0·74–0·99]). Within Mexico, ratios were higher than 2·0 in ten states and ranged from 1·02 (0·90–1·15) in Colima to 4·90 (4·34–5·46) in Chiapas. In almost all national and subnational locations in southern and tropical Latin America, the ratios were lower than 2 and for some locations lower than 1, with the only exceptions being the states of Maranhão and Ceará in Brazil, where the ratios of excess mortality rate to reported COVID-19 mortality rate were 3·17 (2·85–4·41) and 2·05 (1·85–2·32), respectively. In north Africa and the Middle East, the ratios were higher than 10 in Morocco (10·56 [8·46–13·64]), Egypt (12·19 [11·42–12·80]), Sudan (25·12 [18·00–30·17]), Afghanistan (26·06 [19·36–32·86]), and Yemen (33·04 [19·03–49·21]). In sub-Saharan Africa, ratios were generally high, with a median ratio of 29·59 (IQR 46·15). At the overall country level, the ratio ranged from −17·10 (−26·06 to −8·84) in New Zealand to 139·24 (88·86–213·67) in the Central African Republic. For South Africa, which was the only nation in sub-Saharan Africa where direct estimates of excess mortality based on vital registration data were possible, the ratio was 3·31 (3·15–3·64). In south Asia, national-level ratios ranged from 8·33 (7·58–8·92) in India to 36·06 (15·14–53·25) in Bhutan. The most extreme ratios in the region were found in the states and provinces of India and Pakistan, ranging from 0·96 (0·44–1·41) in Goa, India to 49·64 (28·94–72·74) in Balochistan, Pakistan.
Based largely on empirical excess mortality observed in 12 Indian states, including during the surge in COVID-19 cases between April and July, 2021, we found that at the national level, India had an estimated 152·5 excess deaths (95% UI 138·6–163·3) per 100 000 of the population over the study period. This was much higher than its reported COVID-19 mortality rate of 18·3 per 100 000 over the same period. Heterogeneity in excess mortality among the 30 states of India was extremely high. From Jan 1, 2020, to Dec 31, 2021, eight Indian states had excess mortality rates higher than 200 per 100 000, a level only exceeded by 50 other countries in the world. These states were Uttarakhand, Manipur, Maharashtra, Chhattisgarh, Haryana, Himachal Pradesh, Punjab, and Karnataka. Conversely, Arunachal Pradesh, Telangana, Sikkim, Rajasthan, Gujarat, Uttar Pradesh, Jharkhand, West Bengal, and Goa had excess mortality rates that were lower than the global average of 120·6 per 100 000 (although 95% UIs overlap). Similarly, subnational heterogeneity was evident in the excess death counts. Seven states in India had excess deaths higher than 200 000 as of Dec 31, 2021. These were West Bengal (220 000 [132 000–254 000]), Madhya Pradesh (223 000 [188 000–253 000]), Tamil Nadu (260 000 [199 000–301 000]), Karnataka (284 000 [223 000–327 000]), Bihar (323 000 [257 000–388 000]), Uttar Pradesh (517 000 [418 000–602 000]), and Maharashtra (616 000 [484 000–736 000]). Although the excess mortality rates due to the COVID-19 pandemic among Indian states are not the highest in the world, because of India's large population, the country accounted for 22·3% (20·3–23·9) of global excess deaths as of Dec 31, 2021 (data not shown). Bihar, Uttar Pradesh, and Maharashtra had excess deaths higher than South Africa (302 000 [287 000–332 000]), with South Africa ranking tenth among all countries.
Discussion
Understanding the true mortality impact of the COVID-19 pandemic is crucial for public health decision making. Our analysis suggests that 18·2 million (95% UI 17·1–19·6) people died globally because of the COVID-19 pandemic (as measured by excess mortality) between the beginning of the pandemic (Jan 1, 2020) and the end of Dec 2021, which is 3·07-times (2·88–3·30) higher than the reported number of COVID-19-related deaths. Our findings indicate that the full impact of the pandemic has been much greater than what is suggested by official statistics. The highest COVID-19 excess mortality rates were observed in Andean Latin America, eastern Europe, and central Europe, with high mortality rates in many high-income northern hemisphere countries and similarly high rates in nearly all of Latin America. Comparatively low excess mortality rates were seen in east Asia, Australia, and high-income Asia Pacific. The April–August 2021 surge in south Asia brought cumulative excess mortality rates from the COVID-19 pandemic across that region up to or above the levels that were observed in some high-income countries. The cumulative global excess deaths from the pandemic makes COVID-19 potentially one of the leading global causes of death during the period of the pandemic, given the rates and trends in other causes of deaths before the pandemic.22
The magnitude of disease burden might have changed for many causes of death during the pandemic period due to both direct effects of lockdowns and the resulting economic turmoil. To correctly divide excess deaths into those directly due to SARS-CoV-2 infection and those associated with changes in other diseases and injuries, multiple drivers of change in mortality since the onset of the pandemic need to be considered. Unfortunately, to date only 36 countries have released 2020 cause of death data with detailed stratification by cause, to our knowledge. Although studies on specific populations in particular locations have been reported, we found insufficient statistical evidence to estimate these other changes in causes of death in a robust manner. Findings are mixed among the available evidence for alternative drivers of mortality that might have served to either increase or decrease excess mortality during the pandemic period. Some excess mortality might be attributable to reductions in health-care use across a number of causes;14, 15, 24, 25 however, the effect of reduced health-care use on health outcomes is difficult to prove. Many mechanisms have been proposed, including reduced vaccination rates26 and reduced births in hospitals.27, 28 However, demonstrated increases in cause-specific mortality from reduced health-care use do not have a generalised pattern in the countries with data released to date; the effect of changes in health-care use on excess mortality might also be greater in later years, rather than in 2020 or 2021. Even hypothesised decreases in injury-related deaths might be in doubt, as the US National Traffic and Safety Board has reported that road traffic deaths increased in 2020 in many US states despite decreases in transport mobility.29 There is convincing evidence that rates of anxiety and depression increased during the pandemic period, which might lead to increases in deaths from suicide;30, 31 however, to date, evidence of increased suicide mortality is scarce apart from in Japan, where reported suicide deaths increased during the pandemic.32 Conversely, opioid deaths have increased in some US states and decreased in others compared with expected levels.33, 34, 35, 36 Deaths from some chronic conditions such as ischaemic heart disease or chronic respiratory disease decreased in particular months of 2020,25 most notably in May and June in Europe; these decreases might have occurred because frail individuals who died from COVID-19 earlier in the year might otherwise have died from these chronic conditions. Supporting evidence for reductions in chronic conditions (particularly respiratory conditions) includes reductions in air pollution in the months of March and April in 2020,37 but with the possible exception of India,38 aggregated concentrations of air pollution during the entire pandemic period up to Dec 31, 2021 were only slightly lower than prepandemic concentrations. The most compelling evidence to date of a change in cause-specific mortality in the pandemic period is the decrease, especially in the Northern Hemisphere, in flu and respiratory syncytial virus (RSV) deaths seen in the months of January to March, 2021; decreases in cases of 80% or more have been reported to WHO. Given the scarce and inconsistent evidence of the effect the COVID-19 pandemic on cause-specific deaths, and the extremely scarce high-quality data on causes of death during the pandemic, our excess mortality estimates reflect the full impact of the pandemic on mortality around the world (after correcting for known biases), not just the deaths directly attributable to SARS-CoV-2 infection. As cause of death data for detailed causes are made available for 2020 for more countries in the future, we will be able to delineate the fraction of excess deaths due to SARS-CoV-2 infection versus indirect effects of the pandemic and responses to it. Separating the total number of deaths due to SARS-CoV-2 infection from excess mortality due to the pandemic will also be crucial for accurately estimating the infection–fatality ratio in every location, since that ratio requires the total number of deaths directly due to infection as an input.
Nonetheless, of the 12·3 million more excess deaths versus reported COVID-19 deaths, a substantial fraction of these will probably be shown to be from SARS-CoV-2 infection. This fraction, however, is likely to vary by location. For instance, in some high-income countries like Belgium and Sweden, which have used audits to investigate potential COVID-19-related deaths and have taken an inclusive approach to statistical reporting (available on the European Statistical Recovery Dashboard),39 the ratio between excess deaths and reported COVID-19 deaths is close to 1. This outcome suggests that in some locations, the net change in mortality rates across other diseases and injuries during the pandemic period has been minimal. Conversely, audited cause of death data from both Russia and Mexico indicate that a substantial proportion of excess deaths could not be attributed to SARS-CoV-2 infection in these locations. Although these and other findings suggest that a higher fraction of excess deaths are likely due to SARS-CoV-2 infection in high-income countries than elsewhere, sufficient evidence on this topic is too sparse to make any conclusion for all countries. As increased data on the pandemic period are eventually made available, more sophisticated analyses will be possible to dissect the effects of different drivers in different locations.
The highest ratios of excess deaths to reported COVID-19 deaths were observed in parts of central Asia and most countries in sub-Saharan Africa (excluding southern sub-Saharan Africa). These high ratios are unlikely to be fully explained by dramatic increases in other causes of death during the pandemic and must at least partly be related to a paucity in extensive testing, medical practices, or state guidance on what should count as a death from COVID-19. Behavioural data, available in our online tool, suggest that in comparison with high-income countries including Canada, many states in the USA, and some countries in western Europe, mask use across these regions was generally much lower throughout the pandemic; mobility, measured via cell phone application use, was much higher; and many fewer social distancing mandates were put in place. Furthermore, our variable selection analysis found that in addition to pandemic-related indicators such as IDR and mobility, background population health-related metrics such as HAQ Index, crude death rate, and inpatient admission rates are also predictive of excess mortality due to the COVID-19 pandemic. These factors might explain the large and under-reported COVID-19 epidemics in sub-Saharan Africa and central Asia, but more data are needed to fully understand the patterns in these regions. More attention should be given to locations like these, where dramatically low IDRs and rates of reported COVID-19 deaths have masked the true severity of the pandemic.
Weekly reporting of all-cause deaths has proven to be extremely useful in understanding the mortality impacts of the COVID-19 pandemic. Many countries have made a concerted effort to report data from vital registration in a much timelier manner than normal. Our analysis found that the lag between occurrence and registration of death varied substantially between countries, even between high-income countries with robust vital registration systems. Although such lags in reporting documented here show there are limitations to this rapid reporting in some countries such as the USA, these data have substantial value for epidemiological surveillance. Governments should try to use digital reporting of cause of death data and rapid release of the data to the public health community. If more countries invested in timely reporting, we would not only be able to track the effects of this pandemic and future pandemics, but we could more rapidly evaluate the effect of behavioural changes, such as social distancing, on mortality rates of other diseases and injuries.
At the global level, our excess mortality estimates are very similar to those reported by The Economist, the only other source of COVID-19 excess mortality at a global scale for a similar time period. For a majority of the countries and territories covered by both analyses (104 of 187), the uncertainty intervals from this study and those from The Economist overlap, meaning no statistically significant difference between them. However, there are dramatic differences in the estimated excess mortality counts between the two studies for many countries (appendix p 50). The relative difference between the estimates from each study, defined as the ratio between excess deaths from The Economist study over those from our study minus 1, ranges from −382·7% (Vanuatu) to 2282·3% (China). In terms of absolute relative difference, at least a 25% difference is observed in 129 of 187 countries. Some 23 countries have absolute relative differences between the two studies of higher than 100%. For the 121 countries and territories for which both studies predict more than 5000 excess deaths, the estimates from The Economist tend to be lower than in this study. Although the global total produced by The Economist was similar at 18·0 million (95% UI 12·9–21·0) excess deaths, which is about 212 000 deaths fewer than the estimate derived in this study, country contributions to the totals varied. The Economist estimated 192 000 fewer excess deaths for Mexico, 140 000 for the USA, and 140 000 for Peru, and 1·07 million additional excess deaths for India, 409 000 for China, and 193 000 for Sudan. For sub-Saharan Africa, the absolute relative differences range from 0·6% in Gabon to 310·7% in Burundi. The absolute relative difference is at least 50% among 21 out of 46 countries in the region.
This study has a number of limitations. First, different modelling strategies, although closely related, were used for the estimation of excess mortality due to COVID-19 depending on the availability of time series data on all-cause mortality before and during the pandemic. For countries without reporting of all-cause mortality by week or month, we used a statistical model to predict the COVID-19 excess mortality rate. Direct measurement would be preferable to modelled excess mortality estimates not based on all-cause mortality data, which are usually more robust, from the locations themselves. Second, we excluded from the assessment of excess mortality the most recent weeks and months in 2021 because of the evidence that late registration can take 20 weeks or longer to catch up. These exclusions help make our assessment closer to the true impact of COVID-19 for the period when data were kept in the analysis, improving the predictions made based on these input data for the entire modelled period. However, there is subjectivity to the exact limit on the intervals to be excluded because many countries have not provided weekly reports to formally evaluate late registration timing. Third, we estimated cumulative COVID-19 excess mortality rate, rather than estimating temporal excess mortality rate by week or month. This was intentional, as we found considerable lags in the reporting of COVID-19 death data compared with more precise data from vital statistics after allowing time for reporting of the day of death. In some cases, either all-cause mortality or COVID-19 mortality is tabulated by time of registration, rather than time of occurrence. The disconnect between timing of these two data streams leads to unrealistic values when COVID-19 mortality rate, a key covariate in predicting excess mortality rate, is used to predict time-detailed excess mortality rate. Simple simulation studies that we conducted (not shown) showed that even 1–2-week differences in reporting lags between the sources could lead to large swings in the weekly ratios between excess mortality and reported COVID-19 mortality. For this reason, we believe that analysing the cumulative excess mortality is much more robust. Fourth, as studies from a few selected countries including the Netherlands and Sweden have suggested,40 we suspect most of the excess mortality during the pandemic is from COVID-19. However, sufficient empirical evidence is absent in most countries. Given the high amount of heterogeneity in epidemiological profiles among countries, it is prudent not to make such strong assumptions before more research on this topic is done. Fifth, although our variable selection process produced 15 covariates that we included in our final model, inclusion of other variables might have improved our model predictions. Sixth, strict lockdown and mediation interventions can lead to negative excess mortality during the pandemic (ie, expected mortality is higher than observed all-cause mortality during the pandemic). We estimated that several countries, including Australia and New Zealand, have had negative excess mortality during the pandemic. This observation is probably due to decreases in mortality from diseases and injuries for which exposure to related risks has been reduced during the pandemic. In our prediction model for locations without time-detailed all-cause mortality before and during the pandemic, we did not attempt to predict negative excess mortality rates, as such evidence is not strong enough from a small number of locations to extrapolate to the whole world. Future studies are warranted to examine the effect of lockdown on changes in specific causes of death. Related to this decision not to predict negative excess mortality, our excess mortality estimates for the provinces in China were driven by covariates only. Although we recognise that similar, if not stricter, lockdown practices have been implemented in China compared with those we have seen in countries such as Australia and New Zealand, there is an absence of empirical information on vital registration data to make proper excess mortality estimates with the models we have developed. As more information becomes available in the near future, further improvements to our estimates are warranted. Seventh, various drivers are responsible for the changes in all-cause and cause-specific mortality in a population. Therefore, in estimating excess mortality due to COVID-19, the roles of confounders of changes in mortality during the pandemic should be resolved. We excluded mortality spikes in selected summer weeks in Europe that coincided with a heatwave, when the pandemic was at its lowest point in terms of transmission. However, scarcity of empirical evidence on other confounders and the information on cause-specific mortality that is associated with such confounders prevented us from further and more detailed data analysis. As the body of evidence grows in the future on both potential confounders and cause-specific mortality, such information should be incorporated into future iterations of the analysis presented in this study. Eighth, our excess mortality estimates are based on all-age mortality data, male and female data combined, from vital registration systems, and therefore cannot be disaggregated by age or sex. COVID-19 disproportionally affects older and fragile populations, and we should expect varying age patterns of excess mortality based on a population's demographic and epidemiological profiles. Unfortunately, weekly and monthly vital registration data by age and sex for 2020 and 2021 are currently too sparse (and tend to be in broad age groups when available) to robustly model excess mortality by age and sex, or to use to build models that predict this age pattern across countries with acceptable out-of-sample predictive validity. We intend to evaluate age-specific and sex-specific excess mortality in future iterations of this analysis when data disaggregated by age and sex become more widely available. Finally, the development and deployment of SARS-COV-2 vaccines have considerably lowered mortality rates among people who contract the virus and among the general population. As a result, we expect trends in excess mortality due to COVID-19 to change over time as the coverage of vaccination increases among populations and as new variants emerge. There will be great value in continuing to estimate excess mortality over time as these and other factors shift.
The full magnitude of the COVID-19 pandemic has been much greater in 2020 and 2021 than is indicated by reported deaths due to COVID-19, with COVID-19 potentially being a leading cause of mortality in 2020 and 2021. Further research and increased availability of cause of death data will be crucial for distinguishing the proportion of excess mortality that was directly caused by SARS-CoV-2 infection. Finding ways to strengthen death reporting systems and mitigate political barriers to accurate reporting will be important for tracking and monitoring the continuation of the existing COVID-19 pandemic and future pandemic events.
Data sharing
The data sources used in these analyses are available to download on the Global Health Data Exchange website. Reported COVID-19 death data sources are also listed by location and institution in the appendix (pp 8–37).
This online publication has been corrected. The corrected version first appeared at thelancet.com on April 14, 2022
Declaration of interests
C Adolph reports support for the present manuscript from the Benificus Foundation for collection of data on state-level social distancing policies in the USA. X Dai reports support for the present manuscript from paid salary through employment at the Institute for Health Metrics and Evaluation and the University of Washington. N Fullman reports funding support from WHO as a consultant from June to September, 2019, and Gates Ventures since June, 2020, all outside the submitted work. S Nomura reports support for the present manuscript from a Ministry of Education, Culture, Sports, Science and Technology of Japan grant. D M Pigott reports support for the present manuscript from the Bill & Melinda Gates Foundation. D M Pigott also reports grants or contracts from the Bill & Melinda Gates Foundation, outside the submitted work. All other authors declare no competing interests.
Acknowledgments
Acknowledgments
Funding was provided by the Bill & Melinda Gates Foundation, J Stanton, T Gillespie, and J and E Nordstrom. A J Ferrari is supported by a National Health and Medical Research Council Early Career Fellowship grant (APP1121516) and is employed by the Queensland Centre for Mental Health Research which receives core funding from the Queensland Department of Health. S Nomura would like to acknowledge the Ministry of Education, Culture, Sports, Science and Technology of Japan. R C Reiner Jr was partially supported by the National Science Foundation (award number FAIN: 2031096). A L P Ribeiro was partially supported by the Brazilian National Council for Scientific and Technological Development (grant numbers 310679/2016–8 and 465518/2014–1), by the Minas Gerais State Agency for Research and Development (grant numbers PPM-00428–17 and RED-00081–16), and Coordination for the Improvement of Higher Education Personnel (grant number 88887.507149/2020–00). D F Santomauro is employed by the Queensland Centre for Mental Health Research which receives core funding from the Queensland Department of Health. C S Wiysonge's work is supported by the South African Medical Research Council.
Editorial note: the Lancet Group takes a neutral position with respect to territorial claims in published maps.
COVID-19 Excess Mortality Collaborators
Haidong Wang, Katherine R Paulson, Spencer A Pease, Stefanie Watson, Haley Comfort, Peng Zheng, Aleksandr Y Aravkin, Catherine Bisignano, Ryan M Barber, Tahiya Alam, John E Fuller, Erin A May, Darwin Phan Jones, Meghan E Frisch, Cristiana Abbafati, Christopher Adolph, Adrien Allorant, Joanne O Amlag, Bree Bang-Jensen, Gregory J Bertolacci, Sabina S Bloom, Austin Carter, Emma Castro, Suman Chakrabarti, Jhilik Chattopadhyay, Rebecca M Cogen, James K Collins, Kimberly Cooperrider, Xiaochen Dai, William James Dangel, Farah Daoud, Carolyn Dapper, Amanda Deen, Bruce B Duncan, Megan Erickson, Samuel B Ewald, Tatiana Fedosseeva, Alize J Ferrari, Joseph Jon Frostad, Nancy Fullman, John Gallagher, Amiran Gamkrelidze, Gaorui Guo, Jiawei He, Monika Helak, Nathaniel J Henry, Erin N Hulland, Bethany M Huntley, Maia Kereselidze, Alice Lazzar-Atwood, Kate E LeGrand, Akiaja Lindstrom, Emily Linebarger, Paulo A Lotufo, Rafael Lozano, Beatrice Magistro, Deborah Carvalho Malta, Johan Månsson, Ana M Mantilla Herrera, Fatima Marinho, Alemnesh H Mirkuzie, Awoke Temesgen Misganaw, Lorenzo Monasta, Paulami Naik, Shuhei Nomura, Edward G O'Brien, James Kevin O'Halloran, Latera Tesfaye Olana, Samuel M Ostroff, Louise Penberthy, Robert C Reiner Jr, Grace Reinke, Antonio Luiz P Ribeiro, Damian Francesco Santomauro, Maria Inês Schmidt, David H Shaw, Brittney S Sheena, Aleksei Sholokhov, Natia Skhvitaridze, Reed J D Sorensen, Emma Elizabeth Spurlock, Ruri Syailendrawati, Roman Topor-Madry, Christopher E Troeger, Rebecca Walcott, Ally Walker, Charles Shey Wiysonge, Nahom Alemseged Worku, Bethany Zigler, David M Pigott, Mohsen Naghavi, Ali H Mokdad, Stephen S Lim, Simon I Hay, Emmanuela Gakidou, Christopher J L Murray.
Affiliations
Institute for Health Metrics and Evaluation (H Wang PhD, K R Paulson MPH, S A Pease BS, S Watson MS, H Comfort MPH, Prof P Zheng PhD, A Y Aravkin PhD, C Bisignano MPH, R M Barber BS, T Alam MPH, J E Fuller MIS, E A May BIE, D P Jones BS, M E Frisch BA, A Allorant PhD, J O Amlag MPH, B Bang-Jensen MA, G J Bertolacci BS, S S Bloom BA, A Carter MPH, E Castro MS, S Chakrabarti MA, J Chattopadhyay MS, R M Cogen BA, J K Collins BS, K Cooperrider BA, X Dai PhD, W J Dangel MEd, F Daoud BS, C Dapper MA, A Deen MPH, M Erickson MA, S B Ewald MS, T Fedosseeva MSc, A J Ferrari PhD, J J Frostad MPH, N Fullman MPH, J Gallagher MPA, G Guo MPH, J He MSc, M Helak BA, E N Hulland MPH, B M Huntley BA, A Lazzar-Atwood BSc, K E LeGrand MPH, E Linebarger BA, Prof R Lozano MD, J Månsson MS, P Naik MSPH, E G O'Brien MSc, J K O'Halloran MS, S M Ostroff PhD, L Penberthy MS, R C Reiner Jr PhD, G Reinke MA, D F Santomauro PhD, D H Shaw MSc, B S Sheena BS, A Sholokhov MSc, R J D Sorensen MPH, E E Spurlock MPH, R Syailendrawati MA, C E Troeger MPH, A Walker MA, B Zigler MPH, D M Pigott PhD, Prof M Naghavi PhD, A H Mokdad PhD, Prof S S Lim PhD, Prof S I Hay DSc, Prof E Gakidou PhD, Prof C J L Murray DPhil), Department of Health Metrics Sciences, School of Medicine (H Wang PhD, Prof P Zheng PhD, A Y Aravkin PhD, X Dai PhD, Prof R Lozano MD, A T Misganaw PhD, R C Reiner Jr PhD, D M Pigott PhD, Prof M Naghavi PhD, A H Mokdad PhD, Prof S S Lim PhD, Prof S I Hay DSc, Prof E Gakidou PhD, Prof C J L Murray DPhil), Department of Applied Mathematics (A Y Aravkin PhD), Department of Political Science (Prof C Adolph PhD), Center for Statistics and the Social Sciences (Prof C Adolph PhD), Department of Global Health (S Chakrabarti MA, E N Hulland MPH, R J D Sorensen MPH), Henry M Jackson School of International Studies (S M Ostroff PhD), Evans School of Public Policy & Governance (R Walcott MPH), University of Washington, Seattle, WA, USA; Department of Juridical and Economic Studies (C Abbafati PhD), La Sapienza University, Rome, Italy; Postgraduate Program in Epidemiology (Prof B B Duncan MD, Prof M I Schmidt PhD), Federal University of Rio Grande do Sul, Porto Alegre, Brazil; School of Public Health (A J Ferrari PhD, A Lindstrom MEpi, A M Mantilla Herrera PhD, D F Santomauro PhD), The University of Queensland, Brisbane, QLD, Australia; Medical Statistics Department (N Skhvitaridze MBA), National Center for Disease Control and Public Health (Prof A Gamkrelidze PhD, M Kereselidze PhD), Tbilisi, Georgia; Nuffield Department of Clinical Medicine (N J Henry BS), University of Oxford, Oxford, UK; School of Public Health (A Lindstrom MEpi), West Moreton Hospital Health Services (A M Mantilla Herrera PhD), Policy and Epidemiology Group (D F Santomauro PhD), Queensland Centre for Mental Health Research, Wacol, QLD, Australia; Department of Medicine (Prof P A Lotufo DrPH), University of Sao Paulo, Sao Paulo, Brazil; Munk School of Global Affairs and Public Policy (B Magistro PhD), University of Toronto, Toronto, ON, Canada; Department of Maternal and Child Nursing and Public Health (Prof D C Malta PhD), Department of Public Health (F Marinho PhD), Department of Internal Medicine (Prof A P Ribeiro MD), Centre of Telehealth (Prof A P Ribeiro MD), Federal University of Minas Gerais, Belo Horizonte, Brazil; Department of Public Health (F Marinho PhD), Vital Strategies, São Paulo, Brazil; National Data Management Center for Health (A H Mirkuzie PhD, A T Misganaw PhD, N A Worku MSc), Ethiopian Public Health Institute, Addis Ababa, Ethiopia; Center for International Health (A H Mirkuzie PhD), University of Bergen, Bergen, Norway; Clinical Epidemiology and Public Health Research Unit (L Monasta DSc), Burlo Garofolo Institute for Maternal and Child Health, Trieste, Italy; Department of Health Policy and Management (S Nomura PhD), Keio University, Tokyo, Japan; Department of Global Health Policy (S Nomura PhD), University of Tokyo, Tokyo, Japan; School of Electrical and Computer Engineering (L T Olana BSc), Addis Ababa University, Addis Ababa, Ethiopia; School of Health Sciences (N Skhvitaridze MBA), University of Georgia, Tbilisi, Georgia; Department of Social and Behavioral Sciences (E E Spurlock MPH), Yale University, New Haven, CT, USA; Institute of Public Health (R Topor-Madry PhD), Jagiellonian University Medical College, Kraków, Poland; Agency for Health Technology Assessment and Tariff System (R Topor-Madry PhD), Warsaw, Poland; Cochrane South Africa (Prof C S Wiysonge MD), South African Medical Research Council, Cape Town, South Africa; School of Public Health and Family Medicine (Prof C S Wiysonge MD), University of Cape Town, Cape Town, South Africa.
Contributors
Please see the appendix (pp 45–46) for more detailed information about individual author contributions to the research, divided into the following categories: managing the estimation or publication process; writing the first draft of the manuscript; primary responsibility for applying analytical methods to produce estimates; primary responsibility for seeking, cataloguing, extracting, or cleaning data; designing or coding figures and tables; providing data or critical feedback on data sources; development of methods or computational machinery; providing critical feedback on methods or results; drafting the manuscript or revising it critically for important intellectual content; and managing the overall research enterprise. Members of the core research team for this topic area had full access to the underlying data used to generate estimates presented in this paper. All other authors had access to, and reviewed, estimates as part of the research evaluation process.
Contributor Information
COVID-19 Excess Mortality Collaborators:
Haidong Wang, Katherine R Paulson, Spencer A Pease, Stefanie Watson, Haley Comfort, Peng Zheng, Aleksandr Y Aravkin, Catherine Bisignano, Ryan M Barber, Tahiya Alam, John E Fuller, Erin A May, Darwin Phan Jones, Meghan E Frisch, Cristiana Abbafati, Christopher Adolph, Adrien Allorant, Joanne O Amlag, Bree Bang-Jensen, Gregory J Bertolacci, Sabina S Bloom, Austin Carter, Emma Castro, Suman Chakrabarti, Jhilik Chattopadhyay, Rebecca M Cogen, James K Collins, Kimberly Cooperrider, Xiaochen Dai, William James Dangel, Farah Daoud, Carolyn Dapper, Amanda Deen, Bruce B Duncan, Megan Erickson, Samuel B Ewald, Tatiana Fedosseeva, Alize J Ferrari, Joseph Jon Frostad, Nancy Fullman, John Gallagher, Amiran Gamkrelidze, Gaorui Guo, Jiawei He, Monika Helak, Nathaniel J Henry, Erin N Hulland, Bethany M Huntley, Maia Kereselidze, Alice Lazzar-Atwood, Kate E LeGrand, Akiaja Lindstrom, Emily Linebarger, Paulo A Lotufo, Rafael Lozano, Beatrice Magistro, Deborah Carvalho Malta, Johan Månsson, Ana M Mantilla Herrera, Fatima Marinho, Alemnesh H Mirkuzie, Awoke Temesgen Misganaw, Lorenzo Monasta, Paulami Naik, Shuhei Nomura, Edward G O'Brien, James Kevin O'Halloran, Latera Tesfaye Olana, Samuel M Ostroff, Louise Penberthy, Robert C Reiner Jr, Grace Reinke, Antonio Luiz P Ribeiro, Damian Francesco Santomauro, Maria Inês Schmidt, David H Shaw, Brittney S Sheena, Aleksei Sholokhov, Natia Skhvitaridze, Reed J D Sorensen, Emma Elizabeth Spurlock, Ruri Syailendrawati, Roman Topor-Madry, Christopher E Troeger, Rebecca Walcott, Ally Walker, Charles Shey Wiysonge, Nahom Alemseged Worku, Bethany Zigler, David M Pigott, Mohsen Naghavi, Ali H Mokdad, Stephen S Lim, Simon I Hay, Emmanuela Gakidou, and Christopher J L Murray
Supplementary Material
References
- 1.Friedman J, Liu P, Troeger CE, et al. Predictive performance of international COVID-19 mortality forecasting models. Nat Commun. 2021;12 doi: 10.1038/s41467-021-22457-w. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 2.Li Y, Fang F, He M. Factors associated with nursing homes' late participation in COVID-19 reporting. J Am Geriatr Soc. 2020;68:2468–2469. doi: 10.1111/jgs.16810. [DOI] [PubMed] [Google Scholar]
- 3.Li R, Pei S, Chen B, et al. Substantial undocumented infection facilitates the rapid dissemination of novel coronavirus (SARS-CoV-2) Science. 2020;368:489–493. doi: 10.1126/science.abb3221. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 4.Lau H, Khosrawipour T, Kocbach P, Ichii H, Bania J, Khosrawipour V. Evaluating the massive underreporting and undertesting of COVID-19 cases in multiple global epicenters. Pulmonology. 2021;27:110–115. doi: 10.1016/j.pulmoe.2020.05.015. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 5.Kupek E. How many more? Under-reporting of the COVID-19 deaths in Brazil in 2020. Trop Med Int Health. 2021;26:1019–1028. doi: 10.1111/tmi.13628. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 6.Biswas RK, Afiaz A, Huq S. Underreporting COVID-19: the curious case of the Indian subcontinent. Epidemiol Infect. 2020;148:e207. doi: 10.1017/S0950268820002095. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 7.WHO The true death toll of COVID-19: estimating global excess mortality. May, 2021. https://www.who.int/data/stories/the-true-death-toll-of-covid-19-estimating-global-excess-mortality
- 8.Kontis V, Bennett JE, Rashid T, et al. Magnitude, demographics and dynamics of the effect of the first wave of the COVID-19 pandemic on all-cause mortality in 21 industrialized countries. Nat Med. 2020;26:1919–1928. doi: 10.1038/s41591-020-1112-0. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 9.Kobak D. Excess mortality reveals Covid's true toll in Russia. Significance. 2021;18:16–19. doi: 10.1111/1740-9713.01486. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 10.Stokes AC, Lundberg DJ, Elo IT, Hempstead K, Bor J, Preston SH. COVID-19 and excess mortality in the United States: a county-level analysis. PLoS Med. 2021;18 doi: 10.1371/journal.pmed.1003571. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 11.Mungmunpuntipantip R, Wiwanitkit V. The COVID-19 pandemic and traffic accidents. S Afr Med J. 2021;111 doi: 10.7196/SAMJ.2021.v111i3.15531. [DOI] [PubMed] [Google Scholar]
- 12.Rozenfeld M, Peleg K, Givon A, et al. COVID-19 changed the injury patterns of hospitalized patients. Prehosp Disaster Med. 2021;36:251–259. doi: 10.1017/S1049023X21000285. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 13.Salottolo K, Caiafa R, Mueller J, et al. Multicenter study of US trauma centers examining the effect of the COVID-19 pandemic on injury causes, diagnoses and procedures. Trauma Surg Acute Care Open. 2021;6 doi: 10.1136/tsaco-2020-000655. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 14.Zubiri L, Rosovsky RP, Mooradian MJ, et al. Temporal trends in inpatient oncology census before and during the COVID-19 pandemic and rates of nosocomial COVID-19 among patients with cancer at a large academic center. Oncologist. 2021;26:e1427–e1433. doi: 10.1002/onco.13807. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 15.Folino AF, Zorzi A, Cernetti C, et al. Impact of COVID-19 epidemic on coronary care unit accesses for acute coronary syndrome in Veneto region, Italy. Am Heart J. 2020;226:26–28. doi: 10.1016/j.ahj.2020.04.021. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 16.Fullman N, Yearwood J, Abay SM, et al. Measuring performance on the Healthcare Access and Quality Index for 195 countries and territories and selected subnational locations: a systematic analysis from the Global Burden of Disease Study 2016. Lancet. 2018;391:2236–2271. doi: 10.1016/S0140-6736(18)30994-2. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 17.Stevens GA, Alkema L, Black RE, et al. Guidelines for Accurate and Transparent Health Estimates Reporting: the GATHER statement. Lancet. 2016;388:e19–e23. doi: 10.1016/S0140-6736(16)30388-9. [DOI] [PubMed] [Google Scholar]
- 18.Karlinsky A, Kobak D. Tracking excess mortality across countries during the COVID-19 pandemic with the World Mortality Dataset. eLife. 2021;10 doi: 10.7554/eLife.69336. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 19.Burkart KG, Brauer M, Aravkin AY, et al. Estimating the cause-specific relative risks of non-optimal temperature on daily mortality: a two-part modelling approach applied to the Global Burden of Disease Study. Lancet. 2021;398:685–697. doi: 10.1016/S0140-6736(21)01700-1. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 20.Robine J-M, Cheung SLK, Le Roy S, et al. Death toll exceeded 70 000 in Europe during the summer of 2003. C R Biol. 2008;331:171–178. doi: 10.1016/j.crvi.2007.12.001. [DOI] [PubMed] [Google Scholar]
- 21.Shaposhnikov D, Revich B, Bellander T, et al. Mortality related to air pollution with the Moscow heat wave and wildfire of 2010. Epidemiology. 2014;25:359–364. doi: 10.1097/EDE.0000000000000090. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 22.Vos T, Lim SS, Abbafati C, et al. Global burden of 369 diseases and injuries in 204 countries and territories, 1990–2019: a systematic analysis for the Global Burden of Disease Study 2019. Lancet. 2020;396:1204–1222. doi: 10.1016/S0140-6736(20)30925-9. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 23.Centers for Disease Control and Prevention Science brief: evidence used to update the list of underlying medical conditions associated with higher risk for severe COVID-19. Oct 14, 2021. https://www.cdc.gov/coronavirus/2019-ncov/science/science-briefs/underlying-evidence-table.html [PubMed]
- 24.Dinmohamed AG, Visser O, Verhoeven RHA, et al. Fewer cancer diagnoses during the COVID-19 epidemic in the Netherlands. Lancet Oncol. 2020;21:750–751. doi: 10.1016/S1470-2045(20)30265-5. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 25.Schwarz V, Mahfoud F, Lauder L, et al. Decline of emergency admissions for cardiovascular and cerebrovascular events after the outbreak of COVID-19. Clin Res Cardiol. 2020;109:1500–1506. doi: 10.1007/s00392-020-01688-9. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 26.Causey K, Fullman N, Sorensen RJD, et al. Estimating global and regional disruptions to routine childhood vaccine coverage during the COVID-19 pandemic in 2020: a modelling study. Lancet. 2021;398:522–534. doi: 10.1016/S0140-6736(21)01337-4. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 27.Ezenwa BN, Fajolu IB, Nabwera H, Wang D, Ezeaka CV, Allen S. Impact of COVID-19 lockdown measures on institutional delivery, neonatal admissions and prematurity: a reflection from Lagos, Nigeria. BMJ Paediatr Open. 2021;5 doi: 10.1136/bmjpo-2021-001029. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 28.Goldenberg RL, McClure EM. Have coronavirus disease 2019 (COVID-19) community lockdowns reduced preterm birth rates? Obstet Gynecol. 2021;137:399–402. doi: 10.1097/AOG.0000000000004302. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 29.National Safety Council Preliminary semiannual estimates. 2021. https://injuryfacts.nsc.org/motor-vehicle/overview/preliminary-estimates/
- 30.Gunnell D, Appleby L, Arensman E, et al. Suicide risk and prevention during the COVID-19 pandemic. Lancet Psychiatry. 2020;7:468–471. doi: 10.1016/S2215-0366(20)30171-1. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 31.John A, Pirkis J, Gunnell D, Appleby L, Morrissey J. Trends in suicide during the covid-19 pandemic. BMJ. 2020;371 doi: 10.1136/bmj.m4352. [DOI] [PubMed] [Google Scholar]
- 32.Sakamoto H, Ishikane M, Ghaznavi C, Ueda P. Assessment of suicide in Japan during the COVID-19 pandemic vs previous years. JAMA Netw Open. 2021;4 doi: 10.1001/jamanetworkopen.2020.37378. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 33.Baumgartner JC, Radley DC. The Commonwealth Fund; March 25, 2021. The spike in drug overdose deaths during the COVID-19 pandemic and policy options to move forward.https://www.commonwealthfund.org/blog/2021/spike-drug-overdose-deaths-during-covid-19-pandemic-and-policy-options-move-forward [Google Scholar]
- 34.Rosenbaum J, Lucas N, Zandrow G, et al. Impact of a shelter-in-place order during the COVID-19 pandemic on the incidence of opioid overdoses. Am J Emerg Med. 2021;41:51–54. doi: 10.1016/j.ajem.2020.12.047. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 35.Currie JM, Schnell MK, Schwandt H, Zhang J. Trends in drug overdose mortality in Ohio during the first 7 months of the COVID-19 pandemic. JAMA Netw Open. 2021;4 doi: 10.1001/jamanetworkopen.2021.7112. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 36.Centers for Disease Control and Prevention Health Alert Network Increase in fatal drug overdoses across the United States driven by synthetic opioids before and during the COVID-19 pandemic. Dec 17, 2020. https://emergency.cdc.gov/han/2020/han00438.asp
- 37.Bourzac K. COVID-19 lockdowns had strange effects on air pollution across the globe. Sept 25, 2020. https://cen.acs.org/environment/atmospheric-chemistry/COVID-19-lockdowns-had-strange-effects-on-air-pollution-across-the-globe/98/i37
- 38.Gautam AS, Dilwaliya NK, Srivastava A, et al. Temporary reduction in air pollution due to anthropogenic activity switch-off during COVID-19 lockdown in northern parts of India. Environ Dev Sustain. 2020;23:1–24. doi: 10.1007/s10668-020-00994-6. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 39.Government of Belgium COVID-19 mortality. July 19, 2021. https://www.healthybelgium.be/en/health-status/covid-19-crisis/covid-19-mortality
- 40.Statistics Bureau of the Netherlands 3·9 thousand people died from COVID-19 in December 2020. April 7, 2021. https://www.cbs.nl/nl-nl/nieuws/2021/14/3-9-duizend-mensen-overleden-aan-covid-19-in-december-2020
Associated Data
This section collects any data citations, data availability statements, or supplementary materials included in this article.
Supplementary Materials
Data Availability Statement
The data sources used in these analyses are available to download on the Global Health Data Exchange website. Reported COVID-19 death data sources are also listed by location and institution in the appendix (pp 8–37).
This online publication has been corrected. The corrected version first appeared at thelancet.com on April 14, 2022