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Incorporating temporal distribution of population-level viral load enables real-time estimation of COVID-19 transmission.

Yun LinBingyi YangSarah E CobeyEric Ho Yin LauDillon C AdamJessica Y WongHelen S BondJustin K CheungFaith HoHuizhi GaoSheikh Taslim AliNancy Hiu Lan LeungTim K TsangPeng WuGabriel Matthew LeungBenjamin John Cowling
Published in: Nature communications (2022)
Many locations around the world have used real-time estimates of the time-varying effective reproductive number ([Formula: see text]) of COVID-19 to provide evidence of transmission intensity to inform control strategies. Estimates of [Formula: see text] are typically based on statistical models applied to case counts and typically suffer lags of more than a week because of the latent period and reporting delays. Noting that viral loads tend to decline over time since illness onset, analysis of the distribution of viral loads among confirmed cases can provide insights into epidemic trajectory. Here, we analyzed viral load data on confirmed cases during two local epidemics in Hong Kong, identifying a strong correlation between temporal changes in the distribution of viral loads (measured by RT-qPCR cycle threshold values) and estimates of [Formula: see text] based on case counts. We demonstrate that cycle threshold values could be used to improve real-time [Formula: see text] estimation, enabling more timely tracking of epidemic dynamics.
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