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Estimation of reproduction numbers in real time: Conceptual and statistical challenges.
Pellis, Lorenzo; Birrell, Paul J; Blake, Joshua; Overton, Christopher E; Scarabel, Francesca; Stage, Helena B; Brooks-Pollock, Ellen; Danon, Leon; Hall, Ian; House, Thomas A; Keeling, Matt J; Read, Jonathan M; De Angelis, Daniela.
  • Pellis L; Department of Mathematics The University of Manchester Manchester UK.
  • Birrell PJ; Joint UNIversities Pandemic and Epidemiological Research UK.
  • Blake J; The Alan Turing Institute London UK.
  • Overton CE; Joint UNIversities Pandemic and Epidemiological Research UK.
  • Scarabel F; MRC Biostatistics Unit, School of Clinical Medicine University of Cambridge Cambridge UK.
  • Stage HB; Statistics Modelling and Economics Department Public Health England London UK.
  • Brooks-Pollock E; Joint Modelling Team Public Health England London UK.
  • Danon L; Joint UNIversities Pandemic and Epidemiological Research UK.
  • Hall I; MRC Biostatistics Unit, School of Clinical Medicine University of Cambridge Cambridge UK.
  • House TA; Department of Mathematics The University of Manchester Manchester UK.
  • Keeling MJ; Joint UNIversities Pandemic and Epidemiological Research UK.
  • Read JM; Manchester University NHS Foundation Trust Manchester UK.
  • De Angelis D; Joint UNIversities Pandemic and Epidemiological Research UK.
J R Stat Soc Ser A Stat Soc ; 185(Suppl 1): S112-S130, 2022 Nov.
Article in English | MEDLINE | ID: covidwho-2301654
ABSTRACT
The reproduction number R has been a central metric of the COVID-19 pandemic response, published weekly by the UK government and regularly reported in the media. Here, we provide a formal definition and discuss the advantages and most common misconceptions around this quantity. We consider the intuition behind different formulations of R , the complexities in its estimation (including the unavoidable lags involved), and its value compared to other indicators (e.g. the growth rate) that can be directly observed from aggregate surveillance data and react more promptly to changes in epidemic trend. As models become more sophisticated, with age and/or spatial structure, formulating R becomes increasingly complicated and inevitably model-dependent. We present some models currently used in the UK pandemic response as examples. Ultimately, limitations in the available data streams, data quality and time constraints force pragmatic choices to be made on a quantity that is an average across time, space, social structure and settings. Effectively communicating these challenges is important but often difficult in an emergency.
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Full text: Available Collection: International databases Database: MEDLINE Language: English Journal: J R Stat Soc Ser A Stat Soc Year: 2022 Document Type: Article

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Full text: Available Collection: International databases Database: MEDLINE Language: English Journal: J R Stat Soc Ser A Stat Soc Year: 2022 Document Type: Article