| Literature DB >> 33712648 |
Francesco Pinotti1, José Lourenço2, Uri Obolski3,4, Paul Wikramaratna1, Marta Giovanetti5,6, Robert Paton1, Paul Klenerman7, Craig Thompson1, Sunetra Gupta1.
Abstract
For endemic pathogens, seroprevalence mimics overall exposure and is minimally influenced by the time that recent infections take to seroconvert. Simulating spatially-explicit and stochastic outbreaks, we set out to explore how, for emerging pathogens, the mix of exponential growth in infection events and a constant rate for seroconversion events could lead to real-time significant differences in the total numbers of exposed versus seropositive. We find that real-time seroprevalence of an emerging pathogen can underestimate exposure depending on measurement time, epidemic doubling time, duration and natural variation in the time to seroconversion among hosts. We formalise mathematically how underestimation increases non-linearly as the host's time to seroconversion is ever longer than the pathogen's doubling time, and how more variable time to seroconversion among hosts results in lower underestimation. In practice, assuming that real-time seroprevalence reflects the true exposure to emerging pathogens risks overestimating measures of public health importance (e.g. infection fatality ratio) as well as the epidemic size of future waves. These results contribute to a better understanding and interpretation of real-time serological data collected during the emergence of pathogens in infection-naive host populations.Entities:
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Year: 2021 PMID: 33712648 PMCID: PMC7954847 DOI: 10.1038/s41598-021-84672-1
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379