Estimating the time-varying reproduction number for COVID-19 in South Africa during the first four waves using multiple measures of incidence for public and private sectors across four waves

Author:

Bingham JeremyORCID,Tempia Stefano,Moultrie Harry,Viboud Cecile,Jassat Waasila,Cohen CherylORCID,Pulliam Juliet R.C.ORCID

Abstract

Objectives The aim of this study was to quantify transmission trends in South Africa during the first four waves of the COVID-19 pandemic using estimates of the time-varying reproduction number (R) and to compare the robustness of R estimates based on three different data sources, and using data from public and private sector service providers. Methods R was estimated from March 2020 through April 2022, nationally and by province, based on time series of rt-PCR-confirmed cases, hospitalisations, and hospital-associated deaths, using a method that models daily incidence as a weighted sum of past incidence, as implemented in the R package EpiEstim. R was also estimated separately using public and private sector data. Results Nationally, the maximum case-based R following the introduction of lockdown measures was 1.55 (CI: 1.43–1.66), 1.56 (CI: 1.47–1.64), 1.46 (CI: 1.38–1.53) and 3.33 (CI: 2.84–3.97) during the first (Wuhan-Hu), second (Beta), third (Delta), and fourth (Omicron) waves, respectively. Estimates based on the three data sources (cases, hospitalisations, deaths) were generally similar during the first three waves, but higher during the fourth wave for case-based estimates. Public and private sector R estimates were generally similar except during the initial lockdowns and in case-based estimates during the fourth wave. Conclusion Agreement between R estimates using different data sources during the first three waves suggests that data from any of these sources could be used in the early stages of a future pandemic. The high R estimates for Omicron relative to earlier waves are interesting given a high level of exposure pre-Omicron. The agreement between public and private sector R estimates highlights that clients of the public and private sectors did not experience two separate epidemics, except perhaps to a limited extent during the strictest lockdowns in the first wave.

Funder

Wellcome Trust

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Reference39 articles.

1. Quantification of the South African Lockdown Regimes, for the SARS-CoV-2 Pandemic, and the Levels of Immunity They Require to Work;SJ Childs;medRxiv

2. Direct and Indirect Health Effects of Lockdown in South Africa. In: Center For Global Development [Internet]. [cited 27 May 2021]. Available: https://www.cgdev.org/publication/direct-and-indirect-health-effects-lockdown-south-africa

3. Regulations and Guidelines ‐ Coronavirus COVID-19 | South African Government. [cited 20 Jul 2021]. Available: https://www.gov.za/covid-19/resources/regulations-and-guidelines-coronavirus-covid-19

4. Network for Genomic Surveillance in South Africa (NGS-SA). SARS-CoV-2 Sequencing Update. National Institute for Communicable Diseases, South Africa; 2021. Available: https://www.nicd.ac.za/wp-content/uploads/2022/01/Update-of-SA-sequencing-data-from-GISAID-30-Dec-2021_dash.pdf

5. Statistics South Africa. General Household Survey 2018. Statistics South Africa; 2019 May p. 203. Report No.: 318. Available: https://www.statssa.gov.za/publications/P0302/P03022019.pdf

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