Scientific Reports (Jan 2023)

Early detection of variants of concern via funnel plots of regional reproduction numbers

  • Simone Milanesi,
  • Francesca Rosset,
  • Marta Colaneri,
  • Giulia Giordano,
  • Kenneth Pesenti,
  • Franco Blanchini,
  • Paolo Bolzern,
  • Patrizio Colaneri,
  • Paolo Sacchi,
  • Giuseppe De Nicolao,
  • Raffaele Bruno

DOI
https://doi.org/10.1038/s41598-022-27116-8
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 14

Abstract

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Abstract Early detection of the emergence of a new variant of concern (VoC) is essential to develop strategies that contain epidemic outbreaks. For example, knowing in which region a VoC starts spreading enables prompt actions to circumscribe the geographical area where the new variant can spread, by containing it locally. This paper presents ‘funnel plots’ as a statistical process control method that, unlike tools whose purpose is to identify rises of the reproduction number ( $${R}_{t}$$ R t ), detects when a regional $${R}_{t}$$ R t departs from the national average and thus represents an anomaly. The name of the method refers to the funnel-like shape of the scatter plot that the data take on. Control limits with prescribed false alarm rate are derived from the observation that regional $${R}_{t}$$ R t 's are normally distributed with variance inversely proportional to the number of infectious cases. The method is validated on public COVID-19 data demonstrating its efficacy in the early detection of SARS-CoV-2 variants in India, South Africa, England, and Italy, as well as of a malfunctioning episode of the diagnostic infrastructure in England, during which the Immensa lab in Wolverhampton gave 43,000 incorrect negative tests relative to South West and West Midlands territories.