Abstract
Background
This study aimed to investigate overall and sex-specific excess all-cause mortality since the inception of the COVID-19 pandemic until August 2020 among 22 countries.
Methods
Countries reported weekly or monthly all-cause mortality from January 2015 until the end of June or August 2020. Weekly or monthly COVID-19 deaths were reported for 2020. Excess mortality for 2020 was calculated by comparing weekly or monthly 2020 mortality (observed deaths) against a baseline mortality obtained from 2015–2019 data for the same week or month using two methods: (i) difference in observed mortality rates between 2020 and the 2015–2019 average and (ii) difference between observed and expected 2020 deaths.
Results
Brazil, France, Italy, Spain, Sweden, the UK (England, Wales, Northern Ireland and Scotland) and the USA demonstrated excess all-cause mortality, whereas Australia, Denmark and Georgia experienced a decrease in all-cause mortality. Israel, Ukraine and Ireland demonstrated sex-specific changes in all-cause mortality.
Conclusions
All-cause mortality up to August 2020 was higher than in previous years in some, but not all, participating countries. Geographical location and seasonality of each country, as well as the prompt application of high-stringency control measures, may explain the observed variability in mortality changes.
Keywords: COVID-19, SARS-CoV-2, pandemic, mortality, infection control
Key Messages.
Some countries showed excess all-cause mortality between January and August 2020, whereas others displayed either negligible excess mortality or even a decrease in all-cause mortality.
Excess mortality may be partly attributed to delayed application of strict control measures.
Lack of excess mortality may be due to seasonality and/or strict control measures in the participating countries.
Sex-specific mortality was different from total mortality in some countries.
The synergistic effect of several predictors of mortality warrants investigation.
Introduction
A new coronavirus, severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), emerged in late 2019 as a cause of pneumonia in humans. SARS-CoV-2 rapidly spread worldwide from the initial outbreak site in the city of Wuhan, China, leading the World Health Organization (WHO) to declare a global pandemic on 11 March 2020. One year after its identification, the novel coronavirus had infected >80 million individuals and was responsible for >2.04 million deaths, with confirmed cases in 214 countries.1
To assess the health burden of the coronavirus disease 2019 (COVID-19) pandemic, the excess mortality (defined as the difference between expected and observed mortality in a given time period) has been investigated and described in several countries.2–11 However, the impact of the COVID-19 pandemic on mortality is not completely captured by the analysis of the reported COVID-19 deaths and cases due to limited testing capacity, disruption of health services and a possible reduction in other causes of death as a consequence of restrictive control measures. Indeed, many studies have highlighted that COVID-19 deaths represent only a small proportion of the excess mortality observed since the start of the pandemic in several countries,5,6,12,13 indicating that indirect excess deaths may also contribute to the overall mortality burden. This is particularly true in countries heavily affected by the pandemic such as Italy,5,6 France,6 Brazil,14,15 the UK6 and the USA.12,13 Thus, analysis of overall excess mortality represents an important complementary tool to investigate the influence of the SARS-CoV-2 pandemic on mortality. Importantly, in the case of COVID-19, during the initial weeks of the pandemic, most countries lacked adequate testing and healthcare systems were overwhelmed with patients displaying symptoms of COVID-19; therefore, many cases and deaths that should have been attributed to COVID-19 were not tested and identified.16–18 For this reason, all-cause excess deaths (i.e. observed deaths during the pandemic over those expected in the same period of previous years) is recommended by the WHO and the European Centre for Disease Prevention and Control as a more reliable metric for comparing countries/regions.19
Excess mortality in countries less affected by COVID-19 and the extent to which any excess can be attributed to COVID-19 are less well researched. In addition, most studies investigating excess mortality to date have focused on single countries or world regions and have mostly relied on publicly available data.2–11 Furthermore, existing studies have not interpreted the differences across jurisdictions or over time in the context of COVID-19 control measures and/or death-reporting criteria.2–11 This leaves a gap as to the excess-mortality picture in countries without publicly available data and in the interpretation of differences based on factors beyond excess deaths alone.
To this end, an international consortium consisting of >50 institutions across 52 countries and six continents was formed to investigate excess mortality during the COVID-19 pandemic. The consortium attempts to include countries worldwide without restriction and constitutes an ongoing effort to monitor overall and cause-specific mortality resulting from the COVID-19 pandemic. The present study investigates overall and sex-specific excess all-cause mortality since the inception of the COVID-19 pandemic until August 2020 in 22 countries.
Methods
Data acquisition
In this study, we examined the mortality data from 22 countries participating in the international consortium (Supplementary Figure S1 and Table S1, available as Supplementary data at IJE online) that have collected and provided data until the end of either June (n = 5) or August 2020 (n = 17), depending on data availability. Information was collected for total and sex-specific all-cause mortality (for 2015–2020), as well as total and sex-specific COVID-19 deaths (for 2020). Anonymous data were collected from national vital-statistics databases, either publicly available or with restricted access, from each participating country to the latest available data point of 2020 (Supplementary Table S1, available as Supplementary data at IJE online).
Countries reported all-cause mortality and COVID-19 deaths by week [either International Organization for Standardization (ISO) week, starting on Monday; or epidemiological (Epi) week, starting on Sunday; or another national counting week system, depending on the country]. COVID-19-death reporting also differed between countries, as shown in Supplementary Table S1, available as Supplementary data at IJE online. Some countries (n = 11) reported as COVID-19 deaths any deaths among positive cases irrespective of where COVID-19 was listed on the death certificate. Thus, COVID-19 was either listed among the chain of causes leading to death or as a contributing condition on the death certificate [cause of death (COD) or contributing condition].20 Other countries (n = 11) reported as COVID-19 deaths only the deaths for which COVID-19 was listed among the chain of causes leading to death (COD);20 of these latter countries, France reported only hospital and nursing-home COVID-19 deaths. The national primary data sources used in this study and endorsed by the national partners might differ from publicly available repositories/databases, primarily due to the retrospective addition of cases and deaths declared with some delay. Data were collected during October and November 2020, several weeks after the end of the study period, to account for reporting delays (ranging from a few days to a few weeks).6,21,22 The national data source, the period of available mortality data, time units and COVID-19-death definitions used per country are summarized in Supplementary Table S1, available as Supplementary data at IJE online.
Statistical analysis
Excess mortality for 2020 was calculated by comparing weekly or monthly 2020 mortality (observed deaths) against a baseline mortality obtained from 2015–2019 data for the same week or month using two different methods. The choice of 5 years for the baseline mortality estimation was based on widely adopted practices from well-established surveillance consortia3,23,24 as well as on other published studies.2 In the first method, the baseline was computed as the average mortality rate of the previous 5 years.8 In the second method, the baseline was estimated based on historical data accounting for seasonality and long- and short-term trends, representing the expected number of deaths in 2020.24–26
Method 1: Observed 2020 vs 2015–2019 average mortality rates
For each country (n = 22) and year, the weekly or monthly observed number of deaths was divided by the country’s population at the beginning of the particular year to obtain weekly and monthly mortality rates. Therefore, country-specific populations were assumed to be constant throughout the year and mortality rates were expressed as deaths per 100 000 population. Mortality rates instead of number of deaths were used to account for population differences. Total and sex-specific population estimates for the participating countries were obtained from the World Bank,27 except for the UK nations, for which data from the Office for National Statistics28 were used, and for Cyprus, for which Eurostat data29 were used to include only the population in the Republic of Cyprus government-controlled area. Population estimates for 2019 were also applied to 2020 data. For each country, the average weekly or monthly total and sex-specific mortality rate for 2015–2019 was calculated and plotted against weekly or monthly 2020 mortality rates up to the latest available data point of 2020, to provide a visual representation of excess mortality by time point. For data visualization, we downloaded and used a stringency index (SI)—a composite measure based on nine response indicators including school closures, workplace closures and travel bans, rescaled to a value from 0 to 100 (100 = strictest), from the Oxford COVID-19 Government Response Tracker.30 Although the index should not be interpreted as a score for the appropriateness or effectiveness of a country’s response, it provides an indication of the number and strictness of government policies. For each country and time unit of 2020, the SI was categorized as low (<25%), moderate (between 25% and 74%) and high (≥75%). The SI categories were then plotted together with the country profiles of excess mortality.
Then, the average year-to-date (YTD) mortality rate (mortality rate up to the final week, month or trimester of data report for each country) between 2015 and 2019 was considered as the ‘baseline’, whereas the excess mortality for 2020 was estimated for each country by subtracting the baseline from the 2020 YTD mortality rate. For Sweden and Cape Verde, only monthly data were available for this analysis. For Colombia, trimester data were used for the YTD comparison (trimester data could not be graphically compared). For all other countries, weekly data were used for the graphical and YTD comparisons.
Method 2: Observed vs expected 2020 deaths
The expected number of deaths for 2020 was modelled using Poisson regression, assuming a quasi-Poisson distribution to account for overdispersion in the weekly mortality counts. We used a Generalized Linear Model with a linear time trend (weekly mortality as the time unit) to adjust for secular trends and two sine and cosine terms for yearly and half-yearly seasonal cycles. The terms for sine-type cyclical seasonality were chosen based on the weekly distribution of the data and periodograms. Other periodicities (i.e. 4 and 9 months) were also tested but were omitted because the effect was negligible and did not improve the model fit. The same model was applied to all countries with weekly data, separately. The regression models were built on complete weeks and any truncated weeks were excluded. Truncated weeks were observed during the last week of the year in Australia, England and Wales, Scotland and during the last 2 weeks in Northern Ireland. Different death counts around Christmas and New Year were observed and accounted for.2 The residual variation was corrected for skewness by applying a 2/3 power transformation.25 The 95% confidence intervals (CIs) and standard deviation for expected deaths were also estimated. The weekly results of the observed vs expected deaths are displayed graphically for each country using z-scores [(number of observed deaths – expected mortality)/standard deviation of the residuals]. Z-scores that range between –2 and +2 are considered ‘normal’ and a value of >4 Z-scores is considered a substantial increase.3,31
Then, the sum of the expected 2020 deaths was subtracted from the sum of the observed 2020 deaths to obtain an estimate of excess deaths. The statistical significance of excess deaths was determined using the 95% CIs estimated by the model.
It is important to note that only countries providing weekly data (n = 19) were included in the second methodological approach. In addition, 2019 weekly mortality data were not available for Scotland and therefore the estimation of ‘baseline’ was based on 2015–2018 data in both methods. For Northern Ireland and Spain, sex-specific all-cause mortality data were not available at the time of data analysis, so sex-specific all-cause mortality was calculated for 17 countries. England and Wales were considered as one country for the purposes of analysis and reporting of results, as combined data are routinely provided this way. For each country, the reported type of COVID-19 death was used in both methods and no between-country comparisons were attempted. A sensitivity analysis involving the truncation of the observation period to week 26 (June 2020) for all countries was conducted to investigate any further reporting delay.
All analyses were performed in R Statistical Software, version 3.6.1 (the R Foundation for Statistical Computing, Vienna, Austria).
Results
Observed 2020 vs 2015–2019 average mortality rates
Tables 1 and 2 compare the country-specific YTD mortality rates of the previous 5 years (2015–2019) to 2020 for the total population and by sex, respectively. The total all-cause mortality rate (total, males and females) was higher during 2020 compared with the average of the previous 5 years in 11 out of the 22 participating countries: Brazil, Cyprus, England and Wales, France, Italy, North Ireland, Scotland, Spain, the USA, Slovenia and Sweden. Among the total population, the highest increase, in descending order, was observed for England and Wales, Spain, the USA, Scotland, Brazil and Northern Ireland (>50 deaths per 100 000 population). In France, Sweden, Slovenia, Italy and Cyprus, the increase was less pronounced (<35 deaths per 100 000 population; countries listed in descending order). Within the countries with higher 2020 mortality rates, COVID-19 was reported as a COD in five countries (Cyprus, England and Wales, France, Italy and the USA) and as a COD or contributing condition in the other six countries (Brazil, Northern Ireland, Scotland, Slovenia, Spain and Sweden).
Table 1.
Excess mortality: observed 2020 mortality rate vs 2015–2019 average mortality rate (deaths per 100 000 population) and COVID-19 mortality rate
| Country | Time unita | Time frame: time unit 1 to time unit # | YTD mortality rate (average 2015–2019) | YTD mortality rate (2020) | Difference in mortality rates (2020 vs 2015–2019) | COVID-19 mortality rate |
|---|---|---|---|---|---|---|
| Australia | National week | 26 | 274.9 | 272.0 | –3.0 | 0.4†† |
| Austria | ISO | 35 | 627.0 | 633.6 | 6.6 | 8.2† |
| Brazil | Epi | 35 | 428.6 | 496.8 | 68.2 | 59.1† |
| Cyprus | ISO | 35 | 472.0 | 487.2 | 15.1 | 2.3†† |
| Denmark | Epi | 35 | 629.7 | 621.0 | 8– .8 | 10.7† |
| England and Wales | National week | 35 | 617.8 | 720.5 | 102.8 | 89.4†† |
| Estonia | ISO | 35 | 601.9 | 589.3 | −12.5 | 4.7†† |
| France | ISO | 35 | 616.1 | 649.8 | 33.7 | 30.0†† |
| Georgia | ISO | 35 | 874.7 | 810.6 | –64.1 | 0.5†† |
| Ireland | ISO | 26 | 330.9 | 331.5 | 0.6 | 29.8†† |
| Israel | Epi | 35 | 353.1 | 354.4 | 1.3 | 10.1† |
| Italy | Epi | 26 | 555.9 | 574.2 | 18.3 | 57.6† |
| Northern Ireland | National week | 35 | 567.7 | 620.4 | 52.8 | 47.3†† |
| Norway | ISO | 35 | 521.1 | 506.3 | –14.8 | 4.9† |
| Scotlandb | ISO | 35 | 721.8 | 808.2 | 86.4 | 78.7†† |
| Slovenia | ISO | 35 | 659.1 | 678.8 | 19.7 | 6.1† |
| Spain | Epi | 35 | 614.0 | 713.0 | 99.0 | 70.8† |
| Ukraine | ISO | 35 | 853.8 | 852.3 | –1.5 | 7.5†† |
| USA | Epi | 35 | 578.2 | 666.6 | 88.3 | 56.9† |
| Cape Verde | Month | 6 | 254.8 | 237.3 | –17.5 | 2.7† |
| Colombia | Trimester | 2 | 229.8 | 230.1 | 0.3 | 8.5† |
| Sweden | Month | 8 | 594.2 | 619.4 | 25.1 | 56.3†† |
YTD, mortality rate up to the final week/month/trimester of data report for each country; ISO, International Organization for Standardization week; Epi, epidemiological week.
ISO week: Monday–Sunday; Epi week: Sunday–Saturday; National week: Australia uses 7 days starting from 1 January; England, Wales and Northern Ireland use Saturday–Friday.
For Scotland, baseline comparison was the average of years 2015–2018, as 2019 data were not available.
COVID-19 was a cause of death (COD) or a contributing factor to death.
COVID-19 was a COD.
Table 2.
Excess mortality by sex: observed 2020 mortality rate vs 2015–2019 average mortality rate (deaths per 100 000 population) and COVID-19 mortality*§
| Country | Time unita | Time frame: time unit 1 to time unit # | Males |
Females |
||||||
|---|---|---|---|---|---|---|---|---|---|---|
| YTD mortality rate (average 2015–2019) | YTD mortality rate (2020) | Difference in mortality rates (2020 vs 2015–2019) | COVID-19 mortality rate | YTD mortality rate (average 2015–2019) | YTD mortality rate (2020) | Difference in mortality rates (2020 vs 2015–2019) | COVID-19 mortality rate | |||
| Australia | National week | 26 | 274.8 | 274.8 | 0.0 | 275.1 | 269.2 | –5.9 | ||
| Austria | ISO | 35 | 612.8 | 630.5 | 17.7 | 640.6 | 636.6 | –4.1 | ||
| Brazil | Epi | 35 | 486.3 | 570.6 | 84.3 | 69.8† | 372.3 | 425.5 | 53.1 | 48.8† |
| Cyprus | ISO | 35 | 508.0 | 522.4 | 14.4 | 3.3†† | 437.8 | 453.5 | 15.7 | 1.3†† |
| Denmark | Epi | 35 | 636.7 | 638.0 | 1.4 | 622.9 | 604.1 | –18.8 | ||
| England and Wales | National week | 35 | 614.9 | 736.1 | 121.2 | 99.7†† | 620.6 | 705.4 | 84.8 | 79.4†† |
| Estonia | ISO | 26 | 601.7 | 588.0 | –13.7 | 4.8†† | 602.0 | 590.5 | –11.5 | 4.7†† |
| France | ISO | 35 | 636.2 | 673.1 | 36.9 | 36.3†† | 597.3 | 628.1 | 30.8 | 23.8†† |
| Georgia | ISO | 35 | 938.0 | 871.9 | –66.1 | 0.5†† | 816.9 | 754.7 | –62.2 | 0.5†† |
| Ireland | ISO | 26 | 342.2 | 339.7 | –2.5 | 29.5†† | 319.7 | 323.4 | 3.7 | 30.0†† |
| Israel | Epi | 35 | 358.5 | 362.7 | 4.2 | 10.8† | 347.7 | 346.2 | –1.5 | 9.4† |
| Italy | Epi | 26 | 545.7 | 571.2 | 25.5 | 565.6 | 577.1 | 11.4 | ||
| Norway | ISO | 35 | 500.6 | 493.8 | –6.8 | 541.9 | 519.1 | –22.8 | ||
| Scotlandb | ISO | 35 | 718.5 | 830.7 | 112.2 | 80.4†† | 725.0 | 786.9 | 61.9 | 77.1†† |
| Slovenia | ISO | 35 | 652.5 | 671.9 | 19.4 | 4.8† | 665.5 | 685.6 | 20.0 | 7.4† |
| Ukraine | ISO | 35 | 920.6 | 1048.5 | 127.9 | 10.7†† | 796.2 | 683.0 | –113.2 | 4.7†† |
| USA | Epi | 35 | 658.5 | 710.6 | 52.0 | 62.2† | 499.6 | 623.4 | 123.8 | 51.7† |
| Cape Verde | Month | 6 | 282.3 | 264.8 | –17.4 | 2.5† | 227.0 | 209.6 | –17.5 | 2.9† |
| Colombia | Trimester | 2 | 258.2 | 260.4 | 2.2 | 10.7† | 202.3 | 200.6 | –1.7 | 6.3† |
| Sweden | Month | 8 | 575.2 | 614.2 | 38.9 | 60.7†† | 613.2 | 624.6 | 11.3 | 52.0†† |
YTD, mortality rate up to the final week/month/trimester of data report for each country; ISO, International Organization for Standardization week; Epi, epidemiological week.
Empty cells indicate that data were not available for the specific country.
Northern Ireland and Spain not included because sex-specific data were not available.
ISO week: Monday–Sunday; Epi week: Sunday–Saturday; National week: Australia uses 7 days starting from 1 January; England, Wales and Northern Ireland use Saturday–Friday.
For Scotland, baseline comparison was the average of years 2015–2018, as 2019 data were not available.
COVID-19 was a cause of death (COD) or a contributing factor to death .
COVID-19 was a COD .
By contrast, Cape Verde, Estonia, Georgia and Norway had a reduced YTD mortality rate in 2020 compared with the previous 5 years (range between –12.5 and –64.1 deaths per 100 000 population).
In the rest of the participating countries (Australia, Austria, Colombia, Denmark, Ireland, Israel and Ukraine), we observed discordant results in the mortality-rate changes within the two sexes.
Weekly/monthly 2020 mortality rates and COVID-19 control measures
The 2020 all-cause mortality rate against the 2015–2019 average mortality rate per week is displayed graphically for each country using country-specific scales in Figure 1 for total population and Figure 2 by sex. Figure 3 displays countries reporting monthly data; trimester rates were not plotted. The same figures also display the progress of the control measures in each country using the weekly or monthly SI and the onset of COVID-19 death reports.
Figure 1.
Observed 2020 mortality rate vs 2015–2019 average mortality rate (per 100 000 population) and stringency index (SI, %) for countries providing weekly data (solid vertical line indicates the start of the reported COVID-19 deaths)
Figure 2.
Observed 2020 mortality rate vs 2015–2019 average mortality rate (per 100 000 population) and stringency index (SI, %) by sex for countries providing weekly data (solid vertical line indicates the start of the reported COVID-19 deaths)
Figure 3.
Observed 2020 mortality rate vs 2015–2019 average mortality rate (per 100 000 population) and stringency index (SI, %) for total population and by sex for countries providing monthly data (solid vertical line indicates the start of the reported COVID-19 deaths)
As shown in Figures 1–3, an excess-mortality rate during 2020 was observed for Brazil, England and Wales, France, Ireland, Italy, Northern Ireland, Scotland, Spain, Sweden and the USA. The maximum mortality rate was observed sometime between week 12/2020 (Italy; 36.2 deaths per 100 000 population) and weeks 19–20/2020 (Brazil; 17.0 deaths per 100 000 population), and in April 2020 in Sweden (100.8 deaths per 100 000 population). The mortality-rate peaks for 2020 were observed at the same time for males and females in France, England and Wales, the USA and Sweden. However, small peaks of excess mortality were observed in Australia (week 13/2020), Austria (weeks 12 and 15/2020), Cyprus (weeks 20–21/2020), Estonia (week 17/2020), Georgia (week 28/2020), Israel (weeks 14, 21 and 34/2020), Slovenia (week 26/2020) and Ukraine (weeks 4, 17 and 29/2020).
COVID-19 deaths were first reported in March 2020 for all the participating countries except in the case of Spain, Italy and the USA, for which COVID-19 deaths were first reported in February 2020 (Figures 1–3). In Australia, deaths due to COVID-19 started at the end of February to the beginning of March and, in Georgia, in late March to early April 2020. In Colombia, COVID-19 deaths were also first reported during the first trimester of 2020. At the same time, in all countries, the beginning of the implementation of moderate- or high-stringency control measures ranged from week 9 to week 13 (SI: 25–74%) and from week 11 to week 18 (SI: ≥75%).
Observed vs expected 2020 deaths
For most countries in which all-cause deaths in 2020 (January–June/August) were higher than expected, mortality was raised for both males and females (Brazil, England and Wales, France, Scotland and the USA) (Tables 3 and 4). For Ukraine and Israel, only male deaths were elevated; for Ireland, total and female deaths were elevated; and for Italy, total and male deaths were elevated. For some countries (Northern Ireland and Spain), only total deaths were elevated.
Table 3.
Excess deaths: observed vs expected 2020 deaths
| Country | Time unita | Time frame: week 1 to week # | E deaths (95% CI) | O deaths (2020) | Ratio of O/E deaths | Excess deaths (95% CI)b/c | COVID-19 deaths |
|---|---|---|---|---|---|---|---|
| Australia | National week | 26 | 71 068 (70 138; 72 003) | 68 985 | 0.97 | –2083 (–3018; –1153)c | 104†† |
| Austria | ISO | 35 | 55 725 (54 553; 56 905) | 56 245 | 1.01 | 520 (–660; 1692) | 728† |
| Brazil | Epi | 35 | 928 308 (920 863; 935 772) | 1 048 528 | 1.13 | 120 220 (112 756; 127 665)b | 120 814† |
| Cyprus | ISO | 35 | 4260 (4098; 4423) | 4267 | 1.00 | 7 (–156; 169) | 20†† |
| Denmark | Epi | 35 | 37 470 (36 915; 38 028) | 36 131 | 0.96 | –1339 (–1897; –784)c | 624† |
| England and Wales | National week | 35 | 363 219 (354 828; 371 675) | 417 088 | 1.15 | 53 869 (45 413; 62 260)b | 51 740†† |
| Estonia | ISO | 26 | 7954 (7732; 8178) | 7818 | 0.98 | –136 (–360; 86) | 63†† |
| France | ISO | 35 | 422 087 (415 175; 429 036) | 435 787 | 1.03 | 13 700 (6751; 20 612)b | 20 099†† |
| Georgia | ISO | 35 | 30 997 (30 193; 31 808) | 30 158 | 0.97 | –839 (–1650; –35) c | 18†† |
| Ireland | ISO | 26 | 15 975 (15 610; 16 342) | 16 380 | 1.03 | 405 (38, 770)b | 1471†† |
| Israel | Epi | 35 | 31 577 (31 061; 32 096) | 32 086 | 1.02 | 509 (–10; 1025) | 912† |
| Italy | Epi | 26 | 335 133 (326 803; 343 533) | 346 236 | 1.03 | 11 103 (2703; 19 433)b | 34 751† |
| Northern Ireland | National Week | 35 | 10 663 (10 303; 11 027) | 11 488 | 1.08 | 825 (461; 1185)b | 876†† |
| Norway | ISO | 35 | 27 423 (26 973; 27 875) | 27 076 | 0.99 | –347 (–799; 103) | 264† |
| Scotlandd | ISO | 35 | 39 512 (38 563; 40 468) | 43 423 | 1.10 | 3911 (2955; 4860)b | 4229†† |
| Slovenia | ISO | 35 | 14 412 (14 037; 14 789) | 14 172 | 0.98 | –240 (–617; 135) | 128† |
| Spain | Epi | 35 | 287 014 (281 525; 292 537) | 335 657 | 1.17 | 48 643 (43 120; 54 132)b | 33 340† |
| Ukraine | ISO | 35 | 370 875 (337 716; 405 053) | 378 306 | 1.02 | 7431 (–26 747; 40 590) | 3322†† |
| USA | Epi | 35 | 1 956 566 (1 940 797; 1 972 377) | 2 187 893 | 1.12 | 231 327 (215 516; 247 096)b | 186 754† |
E, expected; O, observed; ISO, International Organization for Standardization week; Epi, epidemiological week.
ISO week: Monday–Sunday; Epi week: Sunday–Saturday; National week: Australia uses 7 days starting from 1 January; England, Wales and Northern Ireland use Saturday–Friday.
Statistically significant increase in 2020 observed deaths compared with expected.
Statistically significant decrease in 2020 observed deaths compared with expected.
For Scotland, baseline comparison was the average of years 2015–2018, as 2019 data were not available.
COVID-19 was a cause of death (COD) or a contributing factor to death.
COVID-19 was a COD.
Table 4.
Excess deaths by sex: observed vs expected 2020 deaths*§
| Country | Time unita | Time frame: week 1 to week # | E deaths (95% CI) | O deaths (2020) | Ratio O/E deaths | Excess deaths (95% CI)b/c | COVID-19 deaths |
|---|---|---|---|---|---|---|---|
| Males | |||||||
|
|
|||||||
| Australia | National week | 26 | 35 833 (35 325; 36 344) | 34 709 | 0.97 | –1124 (–1635; –616)c | |
| Austria | ISO | 35 | 27 082 (26 507; 27 662) | 27 560 | 1.02 | 478 (–102; 1053) | |
| Brazil | Epi | 35 | 511 928 (507 710; 516 158) | 591 948 | 1.16 | 80 020 (75 790; 84 238)b | 70 135† |
| Cyprus | ISO | 35 | 2238 (2134; 2344) | 2235 | 1.00 | –3 (–109; 101) | 14†† |
| Denmark | Epi | 35 | 19 092 (18 748; 19 438) | 18 458 | 0.97 | –634 (–980; –290)c | |
| England and Wales | National week | 35 | 182 453 (178 534; 186 401) | 210 180 | 1.15 | 27 727 (23 779; 31 646)b | 28 466†† |
| Estonia | ISO | 26 | 3707 (3573; 3839) | 3687 | 1.00 | –18 (–152; 114) | 30†† |
| France | ISO | 35 | 210 169 (207 011; 213 343) | 218 467 | 1.04 | 8298 (5124; 11 456)b | 11 795†† |
| Georgia | ISO | 35 | 15 890 (15 476; 16 308) | 15 468 | 0.97 | –422 (–840; –8)c | 8†† |
| Ireland | ISO | 26 | 8347 (8140; 8557) | 8328 | 1.00 | –19 (–229; 188) | 724†† |
| Israel | Epi | 35 | 15 930 (15 616; 16 246) | 16 332 | 1.03 | 402 (86; 716)b | 486† |
| Italy | Epi | 26 | 160 293 (156 716; 163 897) | 167 581 | 1.05 | 7288 (3684; 10 865)b | |
| Norway | ISO | 35 | 13 405 (13 137; 13 674) | 13 338 | 1.00 | –67 (–336; 201) | |
| Scotlandd | ISO | 35 | 19 411 (18 956; 19 870) | 21 686 | 1.12 | 2275 (1816; 2730)b | 2098†† |
| Slovenia | ISO | 35 | 7138 (6913; 7366) | 6983 | 0.98 | –155 (–383; 70) | 50† |
| Ukraine | ISO | 35 | 188 961 (166 282; 212 586) | 215 579 | 1.14 | 26 618 (2993; 49 297)b | 2209†† |
| USA | Epi | 35 | 1 111 443 (1 102 159; 1 120 753) | 1 154 095 | 1.04 | 42 653 (33 343; 51 936)b | 101 081† |
| Females | |||||||
|
|
|||||||
| Australia | National week | 26 | 35 241 (34 683; 35 802) | 34 276 | 0.97 | –965 (–1526; –407)c | |
| Austria | ISO | 35 | 28 646 (27 957; 29 339) | 28 685 | 1.00 | 39 (–654; 728) | |
| Brazil | Epi | 35 | 416 071 (412 427; 419 726) | 456 580 | 1.10 | 40 509 (36 854; 44 153)b | 50 661† |
| Cyprus | ISO | 35 | 2021 (1915; 2130) | 2032 | 1.01 | 11 (–98; 117) | 6†† |
| Denmark | Epi | 35 | 18 379 (18 050; 18 711) | 17 673 | 0.96 | –706 (–1038; –377)c | |
| England and Wales | National week | 35 | 180 815 (176 217; 185 452) | 206 908 | 1.14 | 26 093 (21 456; 30 691)b | 23 274†† |
| Estonia | ISO | 26 | 4250 (4106; 4395) | 4131 | 0.97 | –119 (–264; 25) | 33†† |
| France | ISO | 35 | 211 921 (207 998; 215 868) | 217 320 | 1.03 | 5399 (1452; 9322)b | 8229†† |
| Georgia | ISO | 35 | 15 107 (14 630; 15 588) | 14 690 | 0.97 | –417 (–898; 60) | 10†† |
| Ireland | ISO | 26 | 7629 (7395; 7866) | 8052 | 1.06 | 423 (186; 657)b | 747†† |
| Israel | Epi | 35 | 15 647 (15 316; 15 980) | 15 754 | 1.01 | 107 (–226; 438) | 426† |
| Italy | Epi | 26 | 174 840 (169 978; 179 747) | 178 655 | 1.02 | 3815 (–1092; 8677) | |
| Norway | ISO | 35 | 14 018 (13 712; 14 327) | 13 738 | 0.98 | –280 (–589; 26) | |
| Scotlandd | ISO | 35 | 20 102 (19 526; 20 684) | 21 737 | 1.08 | 1635 (1053; 2211)b | 2131†† |
| Slovenia | ISO | 35 | 7274 (7047; 7503) | 7189 | 0.99 | –85 (–314; 142) | 78† |
| Ukraine | ISO | 35 | 182 010 (159 894; 205 061) | 162 727 | 0.89 | –19 283 (–42 334; 2833) | 1113†† |
| USA | Epi | 35 | 845 188 (838 507; 851 887) | 1 033 798 | 1.22 | 188 609 (181 910; 195 291)b | 85 673† |
E: expected; O: observed; ISO, International Organization for Standardization week; Epi, epidemiological week.
Empty cells indicate that data were not available for the specific country.
Northern Ireland and Spain not included because sex-specific data were not available .
ISO week: Monday–Sunday; Epi week: Sunday–Saturday; National week: Australia uses 7 days starting from 1 January; England, Wales and Northern Ireland use Saturday–Friday.
Statistically significant increase in 2020 observed deaths compared with expected.
Statistically significant decrease in 2020 observed deaths compared with expected.
For Scotland, baseline comparison was the average of years 2015–2018, as 2019 data were not available.
COVID-19 was a cause of death (COD) or a contributing factor to death.
COVID-19 was a COD.
On the contrary, all-cause 2020 deaths in Australia and Denmark (both sexes) and only total and male deaths in Georgia were lower than expected.
The weekly COVID-19 deaths in relation to excess deaths are displayed graphically in Supplementary Figure S2, available as Supplementary data at IJE online.
Weekly deaths Z-score
Figure 4 shows the weekly deaths Z-score over time from week 1/2018 to week 26/2020 or week 35/2020, for the total population. The countries that showed a substantial increase (>4 Z-scores) in the observed mortality during 2020 include Brazil, Cyprus, England and Wales, France, Ireland, Italy, Northern Ireland, Scotland, Spain and the USA. The first substantial weekly excess in all-cause deaths was observed in different weeks of 2020 depending on the country; from week 11 (Italy) to week 21 (Cyprus). This excess in mortality lasted from 1 (Cyprus) to 7 (England and Wales, and Scotland) weeks. In Brazil and the USA, a substantial excess mortality has been observed since weeks 17 and 14 of 2020, respectively.
Figure 4.
Observed (z-score) vs expected (baseline) deaths
Among the countries with a substantial excess of mortality for the total population, a similar excess was observed for both males and females in Brazil, France, Ireland and the USA, with differences in the duration and timing of observed weekly excess mortality (Figure 5). However, a substantial excess in mortality was observed only for the total population in Cyprus, only for the total population and males in England and Wales, and only for the total population and females in Italy and Scotland.
Figure 5.
Observed (z-score) vs expected (baseline) deaths by sex
The sensitivity analysis by truncating the observation period to week 26 for all countries did not show any difference for the participating countries experiencing the first wave of the pandemic in the first half of 2020 (data not shown).
Discussion
Summary of findings
In this investigation of 22 countries across five continents, we show that Brazil, France, Ireland, Italy, Spain, Sweden, the UK (England, Wales, North Ireland and Scotland) and the USA demonstrated excess all-cause deaths between January and June or August 2020, among males and females combined. In Italy, the excess deaths were driven by excess deaths among males and, in Ireland, by excess deaths in females. On the other hand, we show that Australia, Denmark and Georgia actually experienced a decrease in deaths in 2020 among males and females combined. Austria, Cyprus, Ireland, Israel, Norway, Slovenia, Ukraine, Cape Verde and Colombia experienced none or only very limited excess deaths among males and females combined.
Our findings on excess mortality in Brazil, France, Italy, Spain, Sweden, the UK (England, Wales, North Ireland and Scotland) and the USA are in agreement with previous publications and reports.2,3,5–8,10,11,13,32,33 Similarly, the lack of an increase in overall all-cause mortality in Australia, Austria, Denmark, Estonia, Israel and Norway was in agreement with previous reports.2,3,32–34 Colombia was elsewhere demonstrated to have excess mortality during 2020,35 but the increase in mortality started towards the end of the observation period of Colombia for this study, explaining the lack of an increase in our results. To our knowledge, this is the first published analysis on excess mortality in Cyprus, Georgia, Ireland, Slovenia, Ukraine and Cape Verde.
Mortality burden across countries
In several of the participating countries, moderate- and high-stringency control measures were first put in place on the same week or 1 week after the first reported COVID-19 deaths. Other countries implemented such measures ahead of the peak of the pandemic. Still, in some countries, strict control measures were either applied with delay or not applied at all. As discussed below, the mortality burden observed in the participating countries of this study seems to be, at least partly, related to the promptness in the application of control measures of high SI.
The magnitude of excess mortality observed in Brazil, France, Italy, Spain, Sweden, the UK and the USA appears to correspond to lack of, or delay in, the application of strict control measures by the respective governments after the first COVID-19 death in these countries. Italy, Spain, the UK and Brazil enforced high-stringency measures after 3 (Italy, the UK), 5 (Spain) and 7 (Brazil) weeks from the first COVID-19 death. Although, for France, it appears that strict measures were implemented soon after the first rise in COVID-19 deaths in hospitals and nursing homes (week 12), the first COVID-19 deaths occurred in mid-February in the country,36 suggesting a delay in enforcing strict control measures. Similarly, in the countries of the UK, the delay between the first death and the application of measures with an SI of ≥75% is likely to be longer due to limited testing taking place in the UK during the first weeks of the pandemic.37 In Brazil, pre-existing inequalities in healthcare access, particularly to critically ill patients, also accounted for excess mortality.38 On the other hand, Swedish and US governments did not apply measures whose SI was >75% for the duration of this study and this may have contributed to poorer control of the pandemic and higher excess mortality.
Ireland enforced strict measures 4 weeks after the first COVID-19 death, which may have led to an initial surge in cases. However, mortality was decreased in the weeks subsequent to these strict measures, possibly leading to lower overall excess mortality. In Denmark, despite the lack of enforcement of measures with an SI ≥75%, the Danish government was among the first countries in Europe to act firmly against the virus by declaring a national lockdown and closing its borders, which, along with other social factors, was sufficient to prevent excess mortality.39
On the contrary, the lack of or only modest excess mortality in countries such as Austria, Estonia, Israel, Norway, Cyprus, Georgia, Slovenia and Ukraine can be partly attributed to the implementation of measures of stringency of ≥75% within 2 weeks of the first COVID-19 death in these countries. Previous studies gave evidence that a strict lockdown is associated with a rapid and large decrease in transmission as measured by the effective reproduction number.40,41 Our study adds to this evidence by suggesting that the introduction of strict lockdown measures in the early pandemic phase may also be associated with lower mortality.
Furthermore, the decreased mortality seen in some countries located in the tropical region or in the southern hemisphere, such as Colombia, Cape Verde and Australia, are most likely attributed to the different timing of the COVID-19 pandemic in these countries. The different seasonality patterns and different meteorological factors, coupled with strict control measures informed from lessons learned based on countries affected earlier on, led to a mild impact of the pandemic in these countries before July, thereby explaining their lack of excess mortality within the date window of this study. More specifically, Colombia experienced a steady increase in cases since March but had its peak of the COVID-19 pandemic in July and August 2020; Australia had a minor peak in coronavirus cases in March, but the number of cases substantially escalated in July 2020; and Cape Verde started seeing a surge in cases over the summer, but the peak of the pandemic was experienced in September–October 2020.30 Moreover, Australia was entering the influenza season as the restrictions were introduced and the government brought forward and expanded the flu-vaccination campaign. As a consequence, flu deaths were delayed or avoided, contributing to reduced all-cause mortality.
Sex differences
In this study, some countries that did not display changes in mortality for the total population demonstrated sex-specific increases or decreases. Males in Israel and Ukraine and females in Ireland demonstrated increases in mortality. This highlights the importance of examining sex-specific differences in all-cause mortality, as there is an evident sex difference in excess mortality.2
Challenges in COVID-19 and all-cause excess-mortality investigations
One challenge in excess-mortality investigations, which complicates between-country statistical comparisons, is the issue of delays in death registrations within and between countries, which is complicated even further by whether the country reports deaths by the date of death or by the date of registration. Delays in death reporting can range from a few days to a few weeks.6,21,22 We attempted to account for such delays by allowing a minimum of 4 weeks between the end of the observation period and data acquisition, and by carrying out a sensitivity analysis, which demonstrated that our results were not affected by reporting delays. However, death counts from each country may be differentially affected by delays in registrations, making comparisons up to one time point inaccurate.
Another challenge that contributes to the variability of results between countries is differential practices in death reporting. Many studies have previously established significant inaccuracies in the COD as reported on death certificates and the WHO estimates that only 13% of the world’s population resides in countries with ideal death-registration systems (reviewed in 42). These inaccuracies may have been exacerbated during the COVID-19 pandemic. More specifically, a report on the reporting of COVID-19 deaths in five European countries has identified regulatory and legislative differences in the procedures followed regarding the completion of death certificates.43 Differential practices between countries include, among others, the need for an external examiner, who is authorized to complete the death certificate, and the legislative requirement to notify authorities of suspected COVID-19 deaths. Additionally, regarding the COD, the report highlighted differences between countries in how this is documented on the death certificate since, in most countries, the medical practitioner completing the form can exert considerable discretion on what is listed on the certificate. Information provided on the causes of death and reported on death certificates was found to vary considerably, based on different conventions and/or rules regarding whether COVID-19 was included as a direct or indirect COD.
Furthermore, the different COVID-19-death definitions adopted by each country, but also the testing practices followed during the pandemic by different countries (testing only hospitalized patients, not testing care-home residents, etc.), adds uncertainty to investigations of COVID-19 and all-cause mortality.44,45
Also, depending on their geographical location, different countries experienced the first wave of the pandemic and its peak during different weeks or months of the year. Early in the pandemic, northern-hemisphere countries with cold climates appeared to be the most vulnerable to COVID-19 transmission, whereas southern-hemisphere countries and tropical regions seemed to be the least affected.46 As previously mentioned, these differences may be due to seasonality patterns and more specifically the role of meteorological factors affecting host susceptibility to infection and modes of transmission.46,47 The countries participating in this study have very diverse geographic locations, spanning both hemispheres. Even though we attempted to include in this publication data up until the end of August 2020, we were not able to fully capture the first wave of the pandemic; countries such as Cape Verde never experienced a peak in COVID-19 infections during the observation period of this study. Case numbers provide evidence that the COVID-19 pandemic only started to noticeably influence Cape Verde after June 2020.48 Therefore, the timing of such investigations needs to be considered when interpreting each country’s results.
Excess all-cause mortality investigations are made even more challenging by the evidenced differences in baseline mortality in different countries.49 In this study, the crude YTD all-cause mortality rate for countries providing data until August ranged from 353.1 deaths per 100 000 population in Israel to 874.7 deaths per 100 000 population in Georgia. Differences in baseline mortality between countries can be attributed to, among other things, the age distribution of populations, the different burdens of disease and differential access to healthcare.49 An appropriate measure to facilitate between-country comparisons is the P-Score, which takes the absolute difference in mortality as a percentage of the baseline mortality. However, even if excess mortality is presented with reference to baseline mortality, it is likely that baseline mortality and the reasons that contribute to a country’s baseline mortality can exaggerate or inflate excess mortality during the pandemic.
Finally, the strictness and timeliness of government measures, and geographical location as discussed in this study, are not the only potential contributors to excess mortality due to COVID-19. Baseline healthcare availability, access and quality in each country, and particularly a country's critical-care capacity and its ability to surge this capacity quickly under rising cases, were likely other contributors to excess mortality.50 On the other hand, country prosperity was shown to be associated with a higher COVID-19 spread and mortality for several reasons outlined elsewhere.51 Moreover, population density is associated with both COVID-19 infection and mortality.52–54 Therefore, variation in population densities between countries may also contribute to a variation in COVID-19 mortality and excess mortality. Also, the demographic and immunological profiles of populations, including their age structure, may also be impacting on their mortality experience during the COVID-19 pandemic.55 Undeniably, the first wave of the pandemic unfolded diverse and complex responses of citizens, governments and businesses. Civic behaviour with respect to social distancing and the use of masks, adequate contact-tracing services coupled with sufficient testing capacity and the smart use of mobile technologies, as well as community support and solidarity, along with good governance and tempered and evidenced-based government communication, are good examples of the complexity of effective response and resiliency to COVID-19.56 All the aforementioned complex factors probably synergistically or additively moderated mortality and contributed to the variability in mortality changes between countries. Albeit challenging and beyond the scope of the present study, a comprehensive analysis of the relative impact of these factors on COVID-19 and all-cause excess mortality is warranted.
Strengths and limitations
Our study has some important strengths compared with other comparative mortality studies. First, it is one of the largest and most geographically diverse studies that relied on data from national and primary sources, rather than on publicly available data. Moreover, 19 out of the 22 countries (86.4%) included in the analysis were evaluated as having very high- or high-quality civil-registration and vital-statistics systems (only two and one countries were evaluated as of low and medium quality, respectively), reinforcing the validity of our results.57 In addition, it is one of the few studies investigating excess sex-specific mortality and also one of the few examining excess mortality in light of COVID-19 control measures. Lastly, our results were based on two independent methodologies, which demonstrated agreement in cases of increases or decreases in mortality. The use of two methodologies enabled us to investigate countries that lacked weekly mortality data and it also allowed us to validate Method 1: Observed 2020 versus 2015-2019 average mortality rate, which can be considered a simpler approach and feasible even for countries with mortality data of limited granularity, against Method 2: Observed versus expected 2020 deaths, which is based on a more accurate statistical methodology.
At the same time, our study also has limitations. First, for all the reasons outlined in the ‘Discussion’, our study did not attempt any between-country statistical comparisons or a pooled analysis, but focused instead on the mortality picture of each of the participating countries independently. Second, due to the lack of age-group-specific mortality data from many countries, the investigation of excess mortality by age group was not possible. Lastly, we cannot rule out that delays in death reporting may be affecting our results, even though we attempted to account for such delays by (i) allowing at least 4 weeks between the end of the observation period and data acquisition and (ii) performing a sensitivity analysis in which the observation period was truncated ≥3 months before data acquisition.
Conclusion
In this excess-mortality investigation including 22 countries across the globe, it became evident that, up until the end of June or August 2020, several countries showed excess all-cause mortality compared with what was observed or expected based on the previous five years. Yet, other countries managed to avoid increases in all-cause mortality. The excess-mortality picture in the 22 participating countries was shown to be heavily influenced by the geographical location and seasonality of each country, as well as the promptness of governments to apply control measures of high stringency. As the pandemic continues and even worsens in many northern-hemisphere countries and as it now heavily affects countries of the southern hemisphere as well, the lessons learned from the first six or eight months of the pandemic can prove useful in order to minimize increases in all-cause mortality.
Supplementary data
Supplementary data are available at IJE online.
Supplementary Material
Acknowledgements
The authors would like to acknowledge Dr Jennifer Wenjing Tao for her contribution in obtaining and analysing Swedish mortality data, as well as for her insightful contributions to the drafting and revising of this article.
Author contributions
Authors S.A., A.Q., A.H., O.K., C.C., C.A.D., C.Z., G.A., F.S., J.M.R.L., C.M.B., L.H.M., N.L.M. and J.A.C. contributed to (i) the conception and design of the study, or acquisition of data, or analysis and interpretation of data, (ii) the drafting of the article or revising it critically for important intellectual content and (iii) the final approval of the version to be submitted. Authors M.P.U., N.N., J.G., A.P., A.C., E.B., E.S., A.J.L.C., J.C.P.L., N.M.F., A.P.S.A., G.I.J.R., O.D.M.G., L.P.G., G.D., K.R., L.K., S.T., J.O.D., A.O., Z.K., I.Z., T.P.H., I.E., P.K., P.A.G., A.F.C., B.B., N.P., O.V., Q.H. and N.K.M. contributed to (i) the conception and design of the study, or acquisition of data, or analysis and interpretation of data and (ii) the final approval of the version to be submitted.
Ethics approval
Ethical approval to conduct the study was obtained from the Cyprus National Bioethics Committee (16/6/2020, ΕΕΒΚ/ΕΠ/2020/01.127).
Data availability
The data underlying this article are available in the article and in its online Supplementary Material, available as Supplementary data at IJE online.
Conflict of interest
The corresponding author confirms on behalf of all authors that there have been no involvements that might raise the question of bias in the work reported or in the conclusions, implications, or opinions stated.
Funding
This work was supported by the University of Nicosia Medical School (internal funding).
References
- 1.European Centre for Disease Prevention and Control. COVID-19 Situation Update Worldwide, as of Week 52. 2020. https://www.ecdc.europa.eu/en/geographical-distribution-2019-ncov-cases (3 January 2021, date last accessed).
- 2. 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;26:1919–28. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 3. Vestergaard LS, Nielsen J, Richter L. et al. ; ECDC Public Health Emergency Team for COVID-1. Excess all-cause mortality during the COVID-19 pandemic in Europe—preliminary pooled estimates from the EuroMOMO network, March to April 2020. Eurosurveillance 2020;25:2001214. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 4. Stang A, Standl F, Kowall B. et al. Excess mortality due to COVID-19 in Germany. J Infect 2020;81:797–801. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 5. Michelozzi P, Donato F, de’ Scortichini M. et al. Temporal dynamics in total excess mortality and COVID-19 deaths in Italian cities. BMC Public Health 2020;20:1238. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 6. Felix-Cardoso J, Vasconcelos H, Rodrigues P, Cruz-Correia R.. Excess mortality during COVID-19 in five European countries and a critique of mortality analysis data. medRxiv 2020;2020.04.28.20083147. [Google Scholar]
- 7. Modig K, Ahlbom A, Ebeling M.. Excess mortality from COVID-19: weekly excess death rates by age and sex for Sweden and its most affected region. Eur J Public Health. 2021 Feb 1;31: 17–22. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 8. Campbell A, Morgan E.. Comparisons of All-Cause Mortality between European Countries and Regions: January to June 2020 : Office for National Statistics, 2020. https://www.ons.gov.uk/peoplepopulationandcommunity/birthsdeathsandmarriages/deaths/articles/comparisonsofallcausemortalitybetweeneuropeancountriesandregions/januarytojune2020#toc (20 November 2020, date last accessed).
- 9. Alicandro G, Remuzzi G, Vecchia CL.. Italy’s first wave of the COVID-19 pandemic has ended: no excess mortality in May, 2020. Lancet 2020;396:e27–28. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 10. Blangiardo M, Cameletti M, Pirani M, Corsetti G, Battaglini M, Baio G.. Estimating weekly excess mortality at sub-national level in Italy during the COVID-19 pandemic. PLOS One 2020;15:e0240286. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 11. Fouillet A, Pontais I, Caserio-Schönemann C.. Excess all-cause mortality during the first wave of the COVID-19 epidemic in France, March to May 2020. Eurosurveillance 2020;25:2001485. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 12. Tanne JH. Covid-19: At least two thirds of 225 000 excess deaths in US were due to virus. BMJ 2020;371:m3948. https://www.bmj.com/content/371/bmj.m3948 (20 November 2020, date last accessed). [DOI] [PubMed] [Google Scholar]
- 13. Woolf SH, Chapman DA, Sabo RT, Weinberger DM, Hill L, Taylor DDH.. Excess deaths from COVID-19 and other causes, March-July 2020. JAMA 2020;324:1562–64. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 14. Freitas ARR, Medeiros NM, de Frutuoso LCV. et al. Tracking excess deaths associated with the COVID-19 epidemic as an epidemiological surveillance strategy-preliminary results of the evaluation of six Brazilian capitals. Rev Soc Bras Med Trop 2020. Nov 6;53:e20200558. https://www.scielo.br/j/rsbmt/a/XMdCbDTyhwc8zWfWy9gRKDt/?lang=en (14 Jun 2021, date last accessed). [DOI] [PMC free article] [PubMed] [Google Scholar]
- 15. Carvalho TA, Boschiero MN, Marson FAL.. COVID-19 in Brazil: 150,000 deaths and the Brazilian underreporting. Diagn Microbiol Infect Dis 2021;99:115258. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 16. Arons MM, Hatfield KM, Reddy SC. et al. ; Public Health–Seattle and King County and CDC COVID-19 Investigation Team. Presymptomatic SARS-CoV-2 infections and transmission in a skilled nursing facility. N Engl J Med 2020;382:2081–90. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 17. Li R, Pei S, Chen B. et al. Substantial undocumented infection facilitates the rapid dissemination of novel coronavirus (SARS-CoV-2). Science 2020;368:489–93. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 18.Vital Strategies, World Health Organization. Revealing the Toll of COVID-19: A Technical Package for Rapid Mortality Surveillance and Epidemic Response. Report No.: v04. New York: Vital Strategies , 2020. https://www.who.int/publications/i/item/revealing-the-toll-of-covid-19 (21 January 2021, date last accessed).
- 19.European Centre for Disease Prevention and Control. Rapid Risk Assessment: Coronavirus disease 2019 (COVID-19) in the EU/EEA and the UK—ninth update, 23 April 2020. Stockholm: ECDC; 2020. https://www.ecdc.europa.eu/en/publications-data/rapid-risk-assessment-coronavirus-disease-2019-covid-19-pandemic-ninth-update (21 January 2021, date last accessed). [Google Scholar]
- 20.World Health Organisation. International Guidelines for Certification and Classification (Coding) of COVID-19 as Cause of Death; Based on ICD International Statistical Classification of Diseases. Report No.: 1. WHO, 2020. https://www.who.int/classifications/icd/Guidelines_Cause_of_Death_COVID-19.pdf?ua=1 (14 Jun 2021, date last accessed).
- 21. Quast T, Andel R, Gregory S, Storch EA.. Years of life lost associated with COVID-19 deaths in the United States. J Public Health 2020;42:717–22. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 22.Eurostat: Weekly deaths—special data collection [Internet]. eurostat.eu. https://ec.europa.eu/eurostat/cache/metadata/en/demomwk_esms.htm (15 December2020, date last accessed).
- 23. Gergonne B, Mazick A, O’Donnell J. et al. A European Algorithm for a Common Monitoring of Mortality across Europe. Report No. 1: Work Package 7 Report. Copenhagen: EUROMOMO. https://euromomo.eu/uploads/pdf/wp7_report.pdf (14 Jun 2021, date last accessed). [Google Scholar]
- 24. Nielsen J, Krause TG, Mølbak K.. Influenza-associated mortality determined from all-cause mortality, Denmark 2010/11-2016/17: the FluMOMO model. Influenza Other Respir Viruses 2018;12:591–604. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 25. Farrington CP, Andrews NJ, Beale AD, Catchpole MA.. A statistical algorithm for the early detection of outbreaks of infectious disease. J R Stat Soc Ser A Stat Soc 1996;159:547–63. [Google Scholar]
- 26. Serfling RE. Methods for current statistical analysis of excess pneumonia-influenza deaths. Public Health Rep 1963;78:494–506. [PMC free article] [PubMed] [Google Scholar]
- 27.World Bank Open Data | Data. https://data.worldbank.org/indicator/SP.POP.TOTL (20 November 2020, date last accessed).
- 28. Estimates of the Population for the UK, England and Wales, Scotland and Northern Ireland—Office for National Statistics. https://www.ons.gov.uk/peoplepopulationandcommunity/populationandmigration/populationestimates/datasets/populationestimatesforukenglandandwalesscotlandandnorthernireland (20 November 2020, date last accessed).
- 29.European Commission. Statistics | Eurostat [Internet]. Popul. 1 January Age Sex. https://ec.europa.eu/eurostat/databrowser/view/demo_pjan/default/table?lang=en (23 November 2020, date last accessed).
- 30. Hale T, Atav T, Hallas L, et al. Oxford COVID-19 Government Response Tracker. Oxford, UK: Blavatnik School of Government 2020. https://www.bsg.ox.ac.uk/research/research-projects/covid-19-government-response-tracker (14 Jun 2021, date last accessed).
- 31. Nielsen J, Vestergaard LS, Richter L. et al. European all-cause excess and influenza-attributable mortality in the 2017/18 season: should the burden of influenza B be reconsidered? Clin Microbiol Infect 2019;25:1266–76. [DOI] [PubMed] [Google Scholar]
- 32. Madsen W, Kao JS, Burn-Murdoch J, et al. Coronavirus Tracker: The Latest Figures as Countries Fight Covid-19 Resurgence | Free to Read. 2020. https://www.ft.com/content/a2901ce8-5eb7-4633-b89c-cbdf5b386938 (17 December 2020, date last accessed).
- 33.The Economist. Tracking Covid-19 Excess Deaths Across Countries. 2020. https://www.economist.com/graphic-detail/2020/07/15/tracking-covid-19-excess-deaths-across-countries (17 December 2020, date last accessed).
- 34. Last M. The first wave of COVID-19 in Israel: initial analysis of publicly available data. PLOS One 2020;15:e0240393. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 35. Brown PE, Greenwald ZR, Salinas LE. et al. Mortality from COVID in Colombia and Peru: analyses of mortality data and statistical forecasts. MedRxiv 16 November 2020;2020.08.24.20181016. https://www.medrxiv.org/content/10.1101/2020.08.24.20181016v2.full (18 December 2020, date last accessed) [Google Scholar]
- 36.European Centre for Disease Prevention and Control. Download Historical Data (to 14 December 2020) on the Daily Number of New Reported COVID-19 Cases and Deaths Worldwide. 2020. https://www.ecdc.europa.eu/en/publications-data/download-todays-data-geographic-distribution-covid-19-cases-worldwide (18 December 2020, date last accessed).
- 37.European Centre for Disease Prevention and Control. Data on Testing for COVID-19 by Week and Country. 2020. https://www.ecdc.europa.eu/en/publications-data/covid-19-testing (18 December 2020, date last accessed).
- 38. Ranzani OT, Bastos LSL, Gelli JGM. et al. Characterisation of the first 250 000 hospital admissions for COVID-19 in Brazil: a retrospective analysis of nationwide data. Lancet Respir Med 2021;9:407–18. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 39. Olagnier D, Mogensen TH.. The Covid-19 pandemic in Denmark: big lessons from a small country. Cytokine Growth Factor Rev 2020;53:10–12. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 40. Jarvis CI, Van Zandvoort K, Gimma A. et al. ; CMMID COVID-19 working group. Quantifying the impact of physical distance measures on the transmission of COVID-19 in the UK. BMC Med 2020;18:124. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 41. Li Y, Campbell H, Kulkarni D. et al. The temporal association of introducing and lifting non-pharmaceutical interventions with the time-varying reproduction number (R) of SARS-CoV-2: a modelling study across 131 countries. Lancet Infect Dis 202121:193–202. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 42. Pierce JR, Denison AV.. Accuracy of death certifications and the implications for studying disease burdens. In: Preedy VR, Watson RR (eds). Handb Dis Burd Qual Life Meas. New York, NY: Springer, 2010, pp. 329–44. [Google Scholar]
- 43. West A, Czypionka T, Steffen M, Ettelt S, Ghislandi S, Mateus C.. Reporting COVID-19 Deaths in Austria, France, Germany, Italy, Portugal and the UK. Report No.: Social Policy Working Paper 10–20. London: LSE Department of Social Policy, 2020. https://www.lse.ac.uk/social-policy/Assets/Documents/PDF/working-paper-series/10-20-Anne-West.pdf (14 Jun 2021, date last accessed).
- 44. Karanikolos M, McKee M.. How Comparable Is COVID-19 Mortality across Countries? Cross-Country Analysis. https://analysis.covid19healthsystem.org/index.php/2020/06/04/how-comparable-is-covid-19-mortality-across-countries/ (15 December 2020, date last accessed).
- 45. Labib PL, Aroori S.. Expanding the definition of covid-19 deaths will show the true effect of the pandemic. BMJ 2020;369:m2153. [DOI] [PubMed] [Google Scholar]
- 46. Audi A, AlIbrahim M, Kaddoura M, Hijazi G, Yassine HM, Zaraket H.. Seasonality of respiratory viral infections: will COVID-19 follow suit? Front Public Health 2020; 8: 567184. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 47. Merow C, Urban MC.. Seasonality and uncertainty in global COVID-19 growth rates. Proc Natl Acad Sci USA 2020;117:27456–64. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 48. Roser M, Ritchie H, Ortiz-Ospina E, Hasell J.. Cape verde: coronavirus pandemic country profile. Our World Data 2020. https://ourworldindata.org/coronavirus/country/cape-verde (15 December 2020, date last accessed). [Google Scholar]
- 49. Feigin VL, Abajobir AA, Abate KH. et al. Global, regional, and national burden of neurological disorders during 1990–2015: a systematic analysis for the Global Burden of Disease Study 2015. Lancet Neurol 2017;16:877–97. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 50. Rodriguez-Llanes JM, Delgado RC, Pedersen MG, González PA, Meneghini M, Confronting COVID-19: surging critical care capacity in Italy. medRxiv. 2020;2020.04.01.20050237.
- 51. Khorram-Manesh A, Carlström E, Hertelendy AJ, Goniewicz K, Casady CB, Burkle FM.. Does the prosperity of a country play a role in COVID-19 outcomes? Disaster Med Public Health Prep 2020 Aug 12: 1–10. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 52. Bhadra A, Mukherjee A, Sarkar K.. Impact of population density on Covid-19 infected and mortality rate in India. Model Earth Syst Environ 2021;7: 623–9. 10.1007/s40808-020-00984-7. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 53. Brandén M, Aradhya S, Kolk M. et al. Residential context and COVID-19 mortality among adults aged 70 years and older in Stockholm: a population-based, observational study using individual-level data. Lancet Healthy Longev 2020;1:e80–88. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 54.Our World Data. COVID-19 Death Rate vs. Population Density. https://ourworldindata.org/grapher/covid-19-death-rate-vs-population-density (15 December 2020, date last accessed).
- 55. O’Driscoll M, Ribeiro Dos Santos G, Wang L. et al. Age-specific mortality and immunity patterns of SARS-CoV-2. Nature 2020;590:140–46. [DOI] [PubMed] [Google Scholar]
- 56. Rodriguez-Llanes JM, Castro Delgado R, Pedersen MG, Meneghini M, Arcos González P.. Surging critical care capacity for COVID-19: Key now and in the future. Prog Disaster Sci 2020;8:100136. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 57. Mikkelsen L, Phillips DE, AbouZahr C. et al. A global assessment of civil registration and vital statistics systems: monitoring data quality and progress. Lancet 2015;386:1395–406. [DOI] [PubMed] [Google Scholar]
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Data Availability Statement
The data underlying this article are available in the article and in its online Supplementary Material, available as Supplementary data at IJE online.





