A comparative analysis of statistical methods to estimate the reproduction number in emerging epidemics with implications for the current COVID-19 pandemic

<p><strong>Background:</strong><br /> As the SARS-CoV-2 pandemic continues its rapid global spread, quantification of local transmission patterns has been, and will continue to be, critical for guiding pandemic response. Understanding the accuracy and limitations of statistic...

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Main Authors: O'Driscoll, M, Harry, C, Donnelly, CA, Cori, A, Dorigatti, I
Format: Journal article
Language:English
Published: Oxford University Press 2020
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author O'Driscoll, M
Harry, C
Donnelly, CA
Cori, A
Dorigatti, I
author_facet O'Driscoll, M
Harry, C
Donnelly, CA
Cori, A
Dorigatti, I
author_sort O'Driscoll, M
collection OXFORD
description <p><strong>Background:</strong><br /> As the SARS-CoV-2 pandemic continues its rapid global spread, quantification of local transmission patterns has been, and will continue to be, critical for guiding pandemic response. Understanding the accuracy and limitations of statistical methods to estimate the basic reproduction number, R0, in the context of emerging epidemics is therefore vital to ensure appropriate interpretation of results and the subsequent implications for control efforts.</p><br /> <p><strong>Methods:</strong><br /> Using simulated epidemic data we assess the performance of 7 commonly-used statistical methods to estimate R0 as they would be applied in a real-time outbreak analysis scenario – fitting to an increasing number of data points over time and with varying levels of random noise in the data. Method comparison was also conducted on empirical outbreak data, using Zika surveillance data from the 2015-2016 epidemic in Latin America and the Caribbean.</p><br /> <p><strong>Results:</strong><br /> We find that most methods considered here frequently over-estimate R0 in the early stages of epidemic growth on simulated data, the magnitude of which decreases when fitted to an increasing number of time points. This trend of decreasing bias over time can easily lead to incorrect conclusions about the course of the epidemic or the need for control efforts.</p><br /> <p><strong>Conclusions:</strong><br /> We show that true changes in pathogen transmissibility can be difficult to disentangle from changes in methodological accuracy and precision in the early stages of epidemic growth, particularly for data with significant over-dispersion. As localised epidemics of SARS-CoV-2 take hold around the globe, awareness of this trend will be important for appropriately cautious interpretation of results and subsequent guidance for control efforts.</p>
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spelling oxford-uuid:3d7381a6-73f5-40a0-8785-a81450a69ebf2023-03-02T14:45:52ZA comparative analysis of statistical methods to estimate the reproduction number in emerging epidemics with implications for the current COVID-19 pandemicJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:3d7381a6-73f5-40a0-8785-a81450a69ebfEnglishSymplectic ElementsOxford University Press2020O'Driscoll, MHarry, CDonnelly, CACori, ADorigatti, I<p><strong>Background:</strong><br /> As the SARS-CoV-2 pandemic continues its rapid global spread, quantification of local transmission patterns has been, and will continue to be, critical for guiding pandemic response. Understanding the accuracy and limitations of statistical methods to estimate the basic reproduction number, R0, in the context of emerging epidemics is therefore vital to ensure appropriate interpretation of results and the subsequent implications for control efforts.</p><br /> <p><strong>Methods:</strong><br /> Using simulated epidemic data we assess the performance of 7 commonly-used statistical methods to estimate R0 as they would be applied in a real-time outbreak analysis scenario – fitting to an increasing number of data points over time and with varying levels of random noise in the data. Method comparison was also conducted on empirical outbreak data, using Zika surveillance data from the 2015-2016 epidemic in Latin America and the Caribbean.</p><br /> <p><strong>Results:</strong><br /> We find that most methods considered here frequently over-estimate R0 in the early stages of epidemic growth on simulated data, the magnitude of which decreases when fitted to an increasing number of time points. This trend of decreasing bias over time can easily lead to incorrect conclusions about the course of the epidemic or the need for control efforts.</p><br /> <p><strong>Conclusions:</strong><br /> We show that true changes in pathogen transmissibility can be difficult to disentangle from changes in methodological accuracy and precision in the early stages of epidemic growth, particularly for data with significant over-dispersion. As localised epidemics of SARS-CoV-2 take hold around the globe, awareness of this trend will be important for appropriately cautious interpretation of results and subsequent guidance for control efforts.</p>
spellingShingle O'Driscoll, M
Harry, C
Donnelly, CA
Cori, A
Dorigatti, I
A comparative analysis of statistical methods to estimate the reproduction number in emerging epidemics with implications for the current COVID-19 pandemic
title A comparative analysis of statistical methods to estimate the reproduction number in emerging epidemics with implications for the current COVID-19 pandemic
title_full A comparative analysis of statistical methods to estimate the reproduction number in emerging epidemics with implications for the current COVID-19 pandemic
title_fullStr A comparative analysis of statistical methods to estimate the reproduction number in emerging epidemics with implications for the current COVID-19 pandemic
title_full_unstemmed A comparative analysis of statistical methods to estimate the reproduction number in emerging epidemics with implications for the current COVID-19 pandemic
title_short A comparative analysis of statistical methods to estimate the reproduction number in emerging epidemics with implications for the current COVID-19 pandemic
title_sort comparative analysis of statistical methods to estimate the reproduction number in emerging epidemics with implications for the current covid 19 pandemic
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