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    Characterizing the effective reproduction number during the COVID-19 pandemic: Insights from Qatar's experience

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    Date
    2022
    Author
    Bsat, Raghid
    Chemaitelly, Hiam
    Coyle, Peter
    Tang, Patrick
    Hasan, Mohammad R.
    Kanaani, Zaina Al
    Kuwari, Einas Al
    Butt, Adeel A.
    Jeremijenko, Andrew
    Kaleeckal, Anvar Hassan
    Latif, Ali Nizar
    Shaik, Riyazuddin Mohammad
    Nasrallah, Gheyath K.
    Benslimane, Fatiha M.
    Khatib, Hebah A.Al
    Yassine, Hadi M.
    Kuwari, Mohamed G.Al
    Romaihi, Hamad Eid Al
    Al-Thani, Mohamed H.
    Khal, Abdullatif Al
    Bertollini, Roberto
    Abu-Raddad, Laith J.
    Ayoub, Houssein H.
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    Abstract
    Background The effective reproduction number, Rt, is a tool to track and understand pandemic dynamics. This investigation of Rt estimations was conducted to guide the national COVID-19 response in Qatar, from the onset of the pandemic until August 18, 2021. Methods Real-time “empirical” RtEmpirical was estimated using five methods, including the Robert Koch Institute, Cislaghi, Systrom-Bettencourt and Ribeiro, Wallinga and Teunis, and Cori et al. methods. Rt was also estimated using a transmission dynamics model (RtModel-based). Uncertainty and sensitivity analyses were conducted. Correlations between different Rt estimates were assessed by calculating correlation coefficients, and agreements between these estimates were assessed through Bland-Altman plots. Results RtEmpirical captured the evolution of the pandemic through three waves, public health response landmarks, effects of major social events, transient fluctuations coinciding with significant clusters of infection, and introduction and expansion of the Alpha (B.1.1.7) variant. The various estimation methods produced consistent and overall comparable RtEmpirical estimates with generally large correlation coefficients. The Wallinga and Teunis method was the fastest at detecting changes in pandemic dynamics. RtEmpirical estimates were consistent whether using time series of symptomatic PCR-confirmed cases, all PCR-con-firmed cases, acute-care hospital admissions, or ICUcare hospital admissions, to proxy trends in true infection incidence. RtModel-based correlated strongly with RtEmpirical and provided an average RtEmpirical. Conclusions Rt estimations were robust and generated consistent results regardless of the data source or the method of estimation. Findings affirmed an influential role for Rt estimations in guiding national responses to the COVID-19 pandemic, even in resource-limited settings.
    URI
    https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85124320495&origin=inward
    DOI/handle
    http://dx.doi.org/10.7189/jogh.12.05004
    http://hdl.handle.net/10576/56525
    Collections
    • Biomedical Research Center Research [‎785‎ items ]
    • Biomedical Sciences [‎796‎ items ]
    • Mathematics, Statistics & Physics [‎786‎ items ]
    • Public Health [‎480‎ items ]

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