Abstract
The use of big data containing millions of primary care medical records provides an opportunity for rapid research to help inform patient care and policy decisions during the first and subsequent waves of the coronavirus disease 2019 (COVID-19) pandemic. Routinely collected primary care data have previously been used for national pandemic surveillance, quantifying associations between exposures and outcomes, identifying high risk populations, and examining the effects of interventions at scale, but there is no consensus on how to effectively conduct or report these data for COVID-19 research. A COVID-19 primary care database consortium was established in April 2020 and its researchers have ongoing COVID-19 projects in overlapping data sets with over 40 million primary care records in the United Kingdom that are variously linked to public health, secondary care, and vital status records. This consensus agreement is aimed at facilitating transparency and rigor in methodological approaches, and consistency in defining and reporting cases, exposures, confounders, stratification variables, and outcomes in relation to the pharmacoepidemiology of COVID-19. This will facilitate comparison, validation, and meta-analyses of research during and after the pandemic.
Key words: big data, coronavirus, epidemiology, primary health care
INTRODUCTION
Primary care big data refers to routinely collected anonymized general practitioner (GP) electronic health records that form large and complex longitudinal databases, often with hundreds of variables at an individual level. These can often be linked to secondary care records, registries (eg, cancer), or to the UK’s Office for National Statistics which records births and deaths.1-3 A coronavirus disease 2019 (COVID-19) primary care database consortium was established in April 2020 and its researchers have ongoing COVID-19 projects in overlapping data sets with over 40 million UK primary care records that are variously linked to public health, secondary care, and vital status records. We summarize the UK databases being utilized by the COVID-19 consortium in Table 1. It is likely that additional data sources will be forthcoming.
Table 1.
Characteristics | QResearch | RCGP Research & Surveillance Network Center | Clinical Practice Research Datalink | UK Biobank |
---|---|---|---|---|
Established, y | 2003 | 1957 | 1989 | 2006 |
GP practices, No. | 1,500 (increasing to 2,519 from Sept 2020) | 700 | 1,841 | Partial cohort coverage |
Current patient records as of Jan 1, 2020, No. | 10.6 million (21 million from Sept 2020) | 5 million | 14 million | 0.5 million |
Coverage, countries | England, Scotland | England | All of UK | England, Scotland, Wales |
Age groups | All | All | All | 40-69 years at recruitment |
Clinical system | EMIS Web | EMIS Web, INPS Vision, TPP System One | EMIS Web, INPS Vision | Bespoke system |
Birth registration | Yes | Yes | Yes | No |
Death registration | Yes | Yes | Yes | Yes |
Sociodemographic data | Yes | Yes | Yes | Yes |
Ethnicity | Yes | Yes | Yes | Yes |
Genome-wide genotyping data | No | No | No | Yes |
Geographical location | Yes | Yes | Yes | Yes |
Lab tests incl COVID-19 results | Yes | Yes | Yes | Yes |
Anthropometric data | Yes | Yes | Yes | Yes |
Clinical signs and symptoms | Yes | Yes | Yes | Yes |
Drugs prescribed | Yes | Yes | Yes | Yes |
Radiology reports | Yes | Yes | Yes | No |
Hospital referral | Yes | Yes | Yes | Yes |
Hospital diagnosis | Yes | Yes | Yes | Yes |
GP attendances | Yes | Yes | Yes | Partial |
Hospital attendance | Yes | Yes | Yes | Yes |
Additional key linkages to other data setsa | ||||
Hospital episode statistics | Yes | Yes | Yes | No |
HES outpatient data | Yes | Yes | Yes | No |
HES accident and emergency data | Yes | Yes | Yes | No |
HES diagnostic imaging data set | Yes | Yes | Yes | No |
Death registration data from the Office for National Statistics | Yes | Yes | Yes | Yes |
Intensive care data set: ICNARC Case Mix Program | Yes | No | Pending | No |
URL for data access | https://www.qresearch.org | https://www.qresearch.org | https://www.cprd.com | https://www.ukbiobank.ac.uk/aboutbiobank-uk |
COVID-19 = coronavirus disease 2019; GP = general practitioner; HES = hospital episode statistics; ICNARC = Intensive Care National Audit and Research Centre; INPS = In Practice Systems Limited; RCGP = Royal College of General Practitioners; TPP = The Phoenix Partnership.
Note: For more information see relevant websites. The data in these databases are likely to overlap (about 20% of patients will fall into at least 2 of the data sets). Additional governance and approvals will be needed to remove duplicate entries so that a single patient record and characteristics are included.
aFull lists available from each database on request.
The potential of primary care and linked data for understanding COVID-19 is vast, and includes descriptive epidemiology; testing associations with prescribed drugs, including drugs that influence risk; clinical prediction tools for COVID-19 risk and outcome; the impact of and effects of health inequalities; or examining indirect immediate and long-term effects of the infection, such as delayed clinical diagnoses, domestic abuse, or mental health sequelae.
The focus of this consensus statement is on the pharmacoepidemiology of COVID-19, ie, the potential influence of old and new drug therapies on COVID-19 outcomes. The vast majority of drugs for common conditions such as hypertension, diabetes, or heart failure are prescribed in primary care; eg, 15 million prescriptions of angiotensin-converting enzyme inhibitors were prescribed by UK primary care practitioners last year alone—this drug is now hypothesized to be significant to COVID-19 outcomes.1
With an increasing number of studies using primary care big data to examine the influence of drugs on COVID-19 outcomes, it is timely to consider how to best conduct studies. This will facilitate study consistency and rigor, improve transparency, and reduce ambiguity in both methods and reporting. As the pandemic progresses, with the urgency to find solutions, rapid and rigorous research must be conducted with emergent findings externally validated. Consensus on definitions of COVID-19, exposures, outcomes, and consistency in considering potential confounders and stratification variables, will enable meaningful comparisons between findings and facilitate the potential for pooling results in meta-analyses. Our collective efforts and agreement on transparency in reporting and methodological approaches may contribute toward improved clinical decisions and in turn, improved population health.
METHODS: CONSENSUS DEVELOPMENT
This statement was developed by our primary care database consortium: UK big data experts, epidemiologists, intensive care and primary care researchers, statisticians, patient and public representatives, journal editors, and frontline clinical staff. Universities represented are Bristol, Cambridge, Manchester, Nottingham, Oxford, and Southampton. After initial discussions on the need for such a statement in our projects, we met weekly to refine ideas and reach agreement on item inclusion. The recommendations are entirely those of the consortium with sponsors and funders having no role in their development or reporting.
RESULTS: ITEMS FOR INCLUSION
Protocols
Wherever possible, protocols and analysis plans for COVID-19 research using primary care big data should be made widely available online before commencing the data analysis. Protocols may be published through open-access journals or publicly available institutional repositories. When a study has to adapt or respond to changes, for example, in data availability, published protocols should be updated accordingly. This will facilitate transparency and scrutiny of findings, and a priori analysis plans should reduce false-positive findings. Given the urgency of the research during the current pandemic, publicly available protocols will encourage greater efficiency and less duplication of efforts, except when duplication is conducted for validation purposes. Further, when the same data releases are being reused to answer additional or new research questions, this should be set out in the protocol with adequate consideration of the Findable, Accessible, Interoperable, and Resuable (FAIR) Guiding Principles for scientific data management and stewardship.2 These principals, however, are generic. In most cases individual patient level data are unlikely to be published in repositories; reuse of the data would thus require applying to the data owner and working with them to ensure an identical data cut is obtained.
COVID-19 Infection Definition
We considered the World Health Organization (WHO) and Public Health England definitions of COVID-19 infection as of March 13, 2020.4,5 These definitions have several limitations in terms of operationalizing them within databases of electronic medical records. For example, clinical symptoms such as nasal discharge or sneezing may not be coded within GP records. Virology and serology tests that are being used to define cases are still being validated with varying reports on sensitivity and specificity.6 UK national testing has been sparse in the initial phases of the pandemic, and has varied between hospital and community settings at different stages of the pandemic. Definitions are evolving each day and across different regions. They are also likely to evolve over time as more standardization of GP coding is introduced, testing rates are widened from largely secondary to community settings, and more accurate tests of infection and immunity are developed. Acknowledging these limitations, at this time, we have agreed on the definitions which follow.
Confirmed COVID-19 Case
Positive result from real-time reverse transcription polymerase chain reaction (RT-PCR) assay of nasal or pharyngeal swab specimen ever OR positive serology ever is considered a confirmed case.
Suspected COVID-19 Case
Cases may be only be classified as suspected if they occurred after January 20, 2020, the date first confirmed case outside mainland China was reported to the World Health Organization, AND patients meet the following additional criteria:
-
Required admission to hospital AND 1 or more of the following:
Clinical evidence of pneumonia OR • Radiological evidence of pneumonia OR
Acute respiratory distress syndrome OR
-
Had an influenza-like illness (fever ≥37.8°C) and at least 1 of the following acute onset respiratory symptoms: persistent cough (with or without sputum), hoarseness, nasal discharge or congestion, shortness of breath, sore throat, wheezing, sneezing
OR
-
Did not require admission to hospital AND had 1 or both of the following:
New continuous cough AND/OR high temperature
Suspected COVID-19 With a Negative Test
Negative result (never positive) on RT-PCR assay of nasal or pharyngeal swab specimen OR negative (never positive) serology.
Drug Exposures
Where prescribed drugs are being examined in COVID-19 infection, the following reporting principles should be applied:
Report generic drug name
-
List distinct classes of drugs (eg, angiotensin receptor blockers and angiotensin-converting enzyme-inhibitors are listed as separate drug classes)
AND
Provide individual drug chemical names
When combination preparations have been prescribed, consider the component ingredients as separate for the purposes of the analysis
-
Provide clear definitions of drug exposure including:
Exposure time—describe relevant dates of prescription for drug being investigated in relation to COVID-19 case-definition date; ie, time duration before/during/after infection. For research questions with specific aim of altering outcomes, drug exposure during/after infection will be most informative
Repeat prescriptions for long-term medications—list number of prescriptions within a defined time period
Dosage—describe how different drug dosage regimens are being treated in analysis
A list of UK-prescribed drugs that require urgent characterization for their potential in treating or altering outcomes in COVID-19 is given in Supplemental Appendix 1., available at https://www.AnnFamMed.org/content/19/2/135/suppl/DC1/. This list was compiled from the limited existing literature on the subject, our ongoing systematic review, and anecdotal evidence from front line clinical staff treating patients with COVID-19 infections as of April 18, 2020.7-11 The list is not exhaustive and will be updated on the QResearch website (www.qresearch.org/) as more data become available. Drug names within classes have been extracted from the British National Formulary.
Confounding Variables
A list of variables that we recommend reporting and considering for inclusion as confounders within statistical models can be found in the Supplemental Appendix 2, available at https://www.AnnFamMed.org/content/19/2/135/suppl/DC1/. We have not provided restrictive recommendations on how these variables should be categorized as this is dependent on the data available and researcher discretion. We suggest considering these variables when determining confounders with a clear description of how categorization of the variable was determined and rationale for its inclusion.
Stratification Variables
In response to emergent findings on particular subgroups within the populations being disproportionately affected by COVID-19 infection,12 we propose examining outcomes stratified by age, sex, ethnic group, and domicile (own home vs care/nursing home). As more data are published, further stratification variables should be considered.
Outcome Reporting
We endorse the use of appropriate reporting guidelines such as the Strengthening the Reporting of Observational Studies in Epidemiology (STROBE), REporting of studies Conducted using Observational Routinely-collected Data (RECORD), or Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis (TRIPOD) checklist.13-15 We have considered outcomes from both intensive care unit (ICU) and primary care data as some linked data sets are used within our consortium. Wherever possible, there are minimal data (Table 2) to be reported. We acknowledge, as the short and long-term sequela of COVID-19 are better understood, additional outcomes in primary care will need to be added to this list.
Table 2.
Treatment Setting | Time Period | Type of Outcomes to Report |
---|---|---|
Primary care outcomes | Short-term | Lower respiratory tract infection (pneumonia) |
Emergency admission ICU admission |
||
Long-term | All-cause mortality and cause-specific mortality including COVID-19 specific mortality | |
ICU outcomes | Short-term | Vital status at ICU discharge (alive/dead) Vital status at acute hospital discharge (alive/dead) Days of advanced respiratory support (artificial ventilation) Days of advanced cardiovascular support (inotropes, pressors or mechanical cardiovascular support) Days of renal support (use of renal replacement therapy) Days of ICU care (reported from ICU admission to discharge) Days of acute hospital care after ICU discharge (for repeat ICU admissions in the same acute hospital admission the total days not on ICU should be used) |
Long-term | Vital status (alive/dead) at 30 and 90 days after ICU admission All-cause and COVID-19 specific mortality at 6 and 12 months after ICU admission |
COVID-19 = coronavirus disease 2019; ICU = intensive care unit.
Analytical Methods
Individual study analyses are likely to vary from project to project. We agree on ensuring analytical methods are transparent and reported in full, with the following guiding principles:
State an a priori hypothesis wherever possible
Report descriptive characteristics including age, sex, ethnic group, measures of deprivation (such as the Index of Multiple Deprivation or Townsend deprivation score), comorbidities, and medication use
State sample size considerations, power calculations, and multiple testing considerations
Consider clustering by ICU or general practices or physician and employ appropriate methods (eg, robust standard errors)
Check assumptions for any models (eg, proportional hazards assumption)
Report how missing data were managed (eg, multiple imputation method to replace missing data)
Report both unadjusted and adjusted models
Report methods used to examine subgroups and interactions
Report causal analysis methods (eg, instrumental variables analysis16)
Report sensitivity analyses
Report steps taken to mitigate time-window bias (in case-control study designs) or immortal time bias (in cohort study designs)17
Consider propensity score weighting methods to account for multiple differences between groups
DISCUSSION: KEY CHALLENGES AND SHORTCOMINGS
Across the primary care data sets, we acknowledge the potential limitations of using big data for COVID-19 research. All data are collected from routine clinical care records. They are dependent on accurate coding by individual clinicians which does not guarantee consistency or accuracy of codes. The precision and quality of each variable may be different and it is necessary to ensure adequate preliminary work be done on each variable’s quality, completeness, and accuracy.3,4 Further, some data on exposures and confounders will have been entered before the pandemic, and there might be a delay in outcome data reaching GP records. Uptake of newly introduced clinical codes that are specific to COVID-19 may not be universal. Historically, however, UK primary care records have been of high quality in terms of accuracy, completeness of clinical diagnosis, and medication prescribing.18,19 The use of non-randomized observational data to make causal inferences still requires careful interpretation and appropriate analyses.20 Other considerations relate to the case definition of COVID-19.
Our definitions have been informed by those proposed by Public Health England and the WHO. We will use positive RT-PCR or serology results as a definitive for confirmed cases. UK testing for COVID-19 has been limited and to date, we are not aware of any established serology or virology test with high sensitivity or specificity. Moreover, recent modeling suggests that there might be a substantial proportion of asymptomatic COVID-19 cases.21 These individuals will not have presented to the health services and or identified within our data sets. It is possible that patients who are in trials on experimental treatments may be included in the large database analyses. Although they may be few and may have a flag in their record to identify their inclusion within a trial, this may not always be the case.
It is also plausible that big data will over-represent disease severity and the contributing factors because the less severe and asymptomatic cases are not recorded. This issue will be less relevant in subgroup designs or analyses assessing the risk of adverse outcomes in those presenting to hospital or ICU. All observational studies nested within these databases will be subject to the usual risk of statistical error (type 1 or 2), bias, and confounding. These must be considered in terms of magnitude and direction. It is likely that many of the biases will be non-differential and minimized to some extent by the large sample sizes afforded by the data. Moreover, these primary care data lack selection and recall biases and often include multiple linkages to enable best-attainable ascertainment of outcome and exposure data. Large sample sizes will increase precision but could also lead to false positives. In the early stages of the pandemic, the number of people with outcomes recorded in GP records will be small but this is rising rapidly and the timing of analyses will, therefore, be important. If conducted too early the sample size will be inadequate but if too late, opportunities for findings to influence policy will be missed.
CONCLUSIONS
Our consensus statement focused on inferential analytical methods with a recommendation for a priori hypothesis and sample size calculations. However, big data should not ignore the increasing value of exploratory or data mining analyses. These methods have raised concerns around reporting and data interpretation but will inevitably become more widely used especially as new diseases such as COVID-19 emerge. Indeed, many of the principles that we have set out here will apply to the pharmacoepidemiology research questions of the future. Finally, our consortium has thus far included researchers and databases across the UK but our work could inform similar approaches worldwide. Our databases are available to those outside the UK. Establishing linked primary care records within individual countries has immense potential to answer pressing national research questions. Further, this could subsequently allow between-country comparisons and external validation of findings.
Supplementary Material
Footnotes
Conflicts of interests: P.T. has consulted for Astra-Zeneca and Duke-NUS. J.H. reports the Clinical Trial Service Unit receives research grants from the pharmaceutical industry. In addition to University of Oxford affilitation, J.H-C. is founder and director of QResearch database, co-owner of ClinRisk Ltd, and was a paid director there until June 2019. No other authors have any competing interests to declare. The authors declare that no support from any organization and no financial relationships have influenced the submitted work.
To read or post commentaries in response to this article, go to https://www.AnnFamMed.org/content/19/2/135/tab-e-letters.
Author affiliations: Division of Primary Care and Population Health, University of Southampton, England (H.D-M.); Department of Public Health and Primary Care, University of Cambridge, England (S.J.G.; J.M.); Nuffield Department of Clinical Neurosciences, University of Oxford, England (D.Y., P.W.); Nuffield Department of Primary Care Health Sciences, University of Oxford, England (A.K.C., P.S.T., J.H-C.); Population Health Sciences, University of Bristol, England (R.A.P., R.M.M.); Division of Primary Care, School of Medicine, University of Nottingham, England (C.C.); Clinical Trial Service Unit, Nuffield Department of Population Health, University of Oxford, England (J.C.H.); National Institute of Health Research Bristol Biomedical Research Centre, University of Bristol, England (R.M.M.).
Author contributions: H.D-M. drafted the manuscript and all authors contributed toward revising it.
Funding support: S.J.G. is supported by an MRC Epidemiology Unit program: MC_UU_12015/4. The University of Cambridge has received salary support for S.J.G. from the NHS in the East of England through the Clinical Academic Reserve. H.D-M. is a NIHR funded Academic Clinical Lecturer. R.M.M. is supported in part by the NIHR Bristol Biomedical Research Centre and by a Cancer Research UK (C18281/A19169) program grant (the Integrative Cancer Epidemiology Programme). P.W. is supported in part by the NIHR Oxford Biomedical Research Centre. J.C.H. acknowledges personal support from the British Heart Foundation (FS/14/55/30806) and Cancer Research UK (C5255/A18085) through the Cancer Research UK Oxford Centre. J.H-C. also receives support from the NHS and NIHR. J.M. is an NIHR Senior Investigator.
Disclaimer: The views and opinions expressed by authors in this article are those of the authors and do not necessarily reflect those of the UK NIHR or the Department of Health and Social Care.
Transparency declaration: This manuscript is an honest, accurate, and transparent account; no important aspects have been omitted.
Supplemental materials: Available at https://www.AnnFamMed.org/content/19/2/135/suppl/DC1/.
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