Global, regional, and national estimates of the population at increased risk of severe COVID-19 due to underlying health conditions in 2020: a modelling study
London School of Hygiene & Tropical Medicine · University of Edinburgh · +5 more institutions
Abstract
The risk of severe COVID-19 if an individual becomes infected is known to be higher in older individuals and those with underlying health conditions. Understanding the number of individuals at increased risk of severe COVID-19 and how this varies between countries should inform the design of possible strategies to shield or vaccinate those at highest risk.
We estimated the number of individuals at increased risk of severe disease (defined as those with at least one condition listed as "at increased risk of severe COVID-19" in current guidelines) by age (5-year age groups), sex, and country for 188 countries using prevalence data from the Global Burden of Diseases, Injuries, and Risk Factors Study (GBD) 2017 and UN population estimates for 2020. The list of underlying conditions relevant to COVID-19 was determined by mapping the conditions listed in GBD 2017 to those listed in guidelines published by WHO and public health agencies in the UK and the USA. We analysed data from two large multimorbidity studies to determine appropriate adjustment factors for clustering and multimorbidity. To help interpretation of the degree of risk among those at increased risk, we also estimated the number of individuals at high risk (defined as those that would require hospital admission if infected) using age-specific infection-hospitalisation ratios for COVID-19 estimated for mainland China and making adjustments to reflect country-specific differences in the prevalence of underlying conditions and frailty. We assumed males were twice at likely as females to be at high risk. We also calculated the number of individuals without an underlying condition that could be considered at increased risk because of their age, using minimum ages from 50 to 70 years. We generated uncertainty intervals (UIs) for our estimates by running low and high scenarios using the lower and upper 95% confidence limits for country population size, disease prevalences, multimorbidity fractions, and infection-hospitalisation ratios, and plausible low and high estimates for the degree of clustering, informed by multimorbidity studies.
Citation impact
- FWCI
- 158.10
- Percentile
- 100%
- References
- 42
Authors
55Topics & keywords
- Medicine
- Coronavirus disease 2019 (COVID-19)
- Demography
- Mainland China
- Population
- Public health
- Epidemiology
- Risk assessment
Funding
- BABill and Melinda Gates FoundationAward: INV-003174
- WTWellcome TrustAwards: 221303/Z/20/Z, 221303
- ATAlan Turing Institute
- EFEuropean Federation of Pharmaceutical Industries and Associations
- GOGovernment of the United Kingdom
- URUK Research and InnovationAwards: OPP1184344, OPP1191821, OPP1180644, ES/P010873/1, OPP1183986
- NINational Institute for Health Research Health Protection Research UnitAward: HPRU-2012–10096
- NINational Institute for Health and Care ResearchAward: ITCRZ 03010
- DODepartment of Health and Social Care
- DFDepartment for International Development, UK Government
- RCResearch Councils UK
- ICImperial College London
- ECEuropean CommissionAward: PR-OD-1017–20002
- PHPublic Health England
- EOEuropean Observatory on Health Systems and Policies
- DFDepartment for International Development
- HNHeiwa Nakajima Foundation
- MRMedical Research CouncilAwards: MR/S003975/1, MC_PC 19065, MR/S003975/1
- EAEconomic and Social Research Council
- EREuropean Research CouncilAwards: MR/P014658/1, 210758/Z/18/Z, 206250/Z/17/Z, 757699, 208812/Z/17/Z, MR/N013638/1, 757688