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Quantifying superspreading for COVID-19 using Poisson mixture distributions
Cécile Kremer; Andrea Torneri; Sien Boesmans; Hanne Meuwissen; Selina Verdonschot; Koen Vanden Driessche; Christian L. Althaus; Christel Faes; Niel Hens.
Affiliation
  • Cécile Kremer; Hasselt University
  • Andrea Torneri; University of Antwerp
  • Sien Boesmans; Hasselt University
  • Hanne Meuwissen; Hasselt University
  • Selina Verdonschot; Hasselt University
  • Koen Vanden Driessche; Antwerp University Hospital & Radboud University Medical Center
  • Christian L. Althaus; University of Bern
  • Christel Faes; Hasselt University
  • Niel Hens; Hasselt University & University of Antwerp
Preprint in English | medRxiv | ID: ppmedrxiv-20239657
Journal article
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ABSTRACT
The number of secondary cases is an important parameter for the control of infectious diseases. When individual variation in disease transmission is present, like for COVID-19, the number of secondary cases is often modelled using a negative binomial distribution. However, this may not be the best distribution to describe the underlying transmission process. We propose the use of three other offspring distributions to quantify heterogeneity in transmission, and we assess the possible bias in estimates of the offspring mean and its overdispersion when the data generating distribution is different from the one used for inference. We find that overdispersion estimates may be biased when there is a substantial amount of heterogeneity, and that the use of other distributions besides the negative binomial should be considered. We revisit three previously analysed COVID-19 datasets and quantify the proportion of cases responsible for 80% of transmission, p80%, while acknowledging the variation arising from the assumed offspring distribution. We find that the number of secondary cases for these datasets is better described by a Poisson-lognormal distribution.
License
cc_by_nc_nd
Full text: Available Collection: Preprints Database: medRxiv Type of study: Observational study Language: English Year: 2020 Document type: Preprint
Full text: Available Collection: Preprints Database: medRxiv Type of study: Observational study Language: English Year: 2020 Document type: Preprint
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