Estimating global, regional, and national daily and cumulative infections with SARS-CoV-2 through Nov 14, 2021: a statistical analysis

Timely, accurate, and comprehensive estimates of SARS-CoV-2 daily infection rates, cumulative infections, the proportion of the population that has been infected at least once, and the effective reproductive number (Reffective) are essential for understanding the determinants of past infection, curr...

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Veröffentlicht in:The Lancet (British edition) 2022-06, Vol.399 (10344), p.2351-2380
Hauptverfasser: Barber, Ryan M, Sorensen, Reed J D, Pigott, David M, Bisignano, Catherine, Carter, Austin, Amlag, Joanne O, Collins, James K, Abbafati, Cristiana, Adolph, Christopher, Allorant, Adrien, Aravkin, Aleksandr Y, Bang-Jensen, Bree L, Castro, Emma, Chakrabarti, Suman, Cogen, Rebecca M, Combs, Emily, Comfort, Haley, Cooperrider, Kimberly, Dai, Xiaochen, Daoud, Farah, Deen, Amanda, Earl, Lucas, Erickson, Megan, Ewald, Samuel B, Ferrari, Alize J, Flaxman, Abraham D, Frostad, Joseph Jon, Fullman, Nancy, Giles, John R, Guo, Gaorui, He, Jiawei, Helak, Monika, Hulland, Erin N, Huntley, Bethany M, Lazzar-Atwood, Alice, LeGrand, Kate E, Lim, Stephen S, Lindstrom, Akiaja, Linebarger, Emily, Lozano, Rafael, Magistro, Beatrice, Malta, Deborah Carvalho, Månsson, Johan, Mantilla Herrera, Ana M, Mokdad, Ali H, Monasta, Lorenzo, Naghavi, Mohsen, Nomura, Shuhei, Odell, Christopher M, Olana, Latera Tesfaye, Ostroff, Samuel M, Pasovic, Maja, Pease, Spencer A, Reiner Jr, Robert C, Reinke, Grace, Ribeiro, Antonio Luiz P, Santomauro, Damian F, Sholokhov, Aleksei, Spurlock, Emma E, Syailendrawati, Ruri, Topor-Madry, Roman, Vo, Anh Truc, Vos, Theo, Walcott, Rebecca, Walker, Ally, Wiens, Kirsten E, Wiysonge, Charles Shey, Worku, Nahom Alemseged, Zheng, Peng, Hay, Simon I, Gakidou, Emmanuela, Murray, Christopher J L
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Zusammenfassung:Timely, accurate, and comprehensive estimates of SARS-CoV-2 daily infection rates, cumulative infections, the proportion of the population that has been infected at least once, and the effective reproductive number (Reffective) are essential for understanding the determinants of past infection, current transmission patterns, and a population's susceptibility to future infection with the same variant. Although several studies have estimated cumulative SARS-CoV-2 infections in select locations at specific points in time, all of these analyses have relied on biased data inputs that were not adequately corrected for. In this study, we aimed to provide a novel approach to estimating past SARS-CoV-2 daily infections, cumulative infections, and the proportion of the population infected, for 190 countries and territories from the start of the pandemic to Nov 14, 2021. This approach combines data from reported cases, reported deaths, excess deaths attributable to COVID-19, hospitalisations, and seroprevalence surveys to produce more robust estimates that minimise constituent biases. We produced a comprehensive set of global and location-specific estimates of daily and cumulative SARS-CoV-2 infections through Nov 14, 2021, using data largely from Johns Hopkins University (Baltimore, MD, USA) and national databases for reported cases, hospital admissions, and reported deaths, as well as seroprevalence surveys identified through previous reviews, SeroTracker, and governmental organisations. We corrected these data for known biases such as lags in reporting, accounted for under-reporting of deaths by use of a statistical model of the proportion of excess mortality attributable to SARS-CoV-2, and adjusted seroprevalence surveys for waning antibody sensitivity, vaccinations, and reinfection from SARS-CoV-2 escape variants. We then created an empirical database of infection–detection ratios (IDRs), infection–hospitalisation ratios (IHRs), and infection–fatality ratios (IFRs). To estimate a complete time series for each location, we developed statistical models to predict the IDR, IHR, and IFR by location and day, testing a set of predictors justified through published systematic reviews. Next, we combined three series of estimates of daily infections (cases divided by IDR, hospitalisations divided by IHR, and deaths divided by IFR), into a more robust estimate of daily infections. We then used daily infections to estimate cumulative infections and the cumulative proportio
ISSN:0140-6736
1474-547X
DOI:10.1016/S0140-6736(22)00484-6