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Inferring Influenza Infection Attack Rate from Seroprevalence Data

Seroprevalence survey is the most practical method for accurately estimating infection attack rate (IAR) in an epidemic such as influenza. These studies typically entail selecting an arbitrary titer threshold for seropositivity (e.g. microneutralization [MN] 1∶40) and assuming the probability of ser...

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Autores principales: Wu, Joseph T., Leung, Kathy, Perera, Ranawaka A. P. M., Chu, Daniel K. W., Lee, Cheuk Kwong, Hung, Ivan F. N., Lin, Che Kit, Lo, Su-Vui, Lau, Yu-Lung, Leung, Gabriel M., Cowling, Benjamin J., Peiris, J. S. Malik
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3974861/
https://www.ncbi.nlm.nih.gov/pubmed/24699693
http://dx.doi.org/10.1371/journal.ppat.1004054
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author Wu, Joseph T.
Leung, Kathy
Perera, Ranawaka A. P. M.
Chu, Daniel K. W.
Lee, Cheuk Kwong
Hung, Ivan F. N.
Lin, Che Kit
Lo, Su-Vui
Lau, Yu-Lung
Leung, Gabriel M.
Cowling, Benjamin J.
Peiris, J. S. Malik
author_facet Wu, Joseph T.
Leung, Kathy
Perera, Ranawaka A. P. M.
Chu, Daniel K. W.
Lee, Cheuk Kwong
Hung, Ivan F. N.
Lin, Che Kit
Lo, Su-Vui
Lau, Yu-Lung
Leung, Gabriel M.
Cowling, Benjamin J.
Peiris, J. S. Malik
author_sort Wu, Joseph T.
collection PubMed
description Seroprevalence survey is the most practical method for accurately estimating infection attack rate (IAR) in an epidemic such as influenza. These studies typically entail selecting an arbitrary titer threshold for seropositivity (e.g. microneutralization [MN] 1∶40) and assuming the probability of seropositivity given infection (infection-seropositivity probability, ISP) is 100% or similar to that among clinical cases. We hypothesize that such conventions are not necessarily robust because different thresholds may result in different IAR estimates and serologic responses of clinical cases may not be representative. To illustrate our hypothesis, we used an age-structured transmission model to fully characterize the transmission dynamics and seroprevalence rises of 2009 influenza pandemic A/H1N1 (pdmH1N1) during its first wave in Hong Kong. We estimated that while 99% of pdmH1N1 infections became MN(1∶20) seropositive, only 72%, 62%, 58% and 34% of infections among age 3–12, 13–19, 20–29, 30–59 became MN(1∶40) seropositive, which was much lower than the 90%–100% observed among clinical cases. The fitted model was consistent with prevailing consensus on pdmH1N1 transmission characteristics (e.g. initial reproductive number of 1.28 and mean generation time of 2.4 days which were within the consensus range), hence our ISP estimates were consistent with the transmission dynamics and temporal buildup of population-level immunity. IAR estimates in influenza seroprevalence studies are sensitive to seropositivity thresholds and ISP adjustments which in current practice are mostly chosen based on conventions instead of systematic criteria. Our results thus highlighted the need for reexamining conventional practice to develop standards for analyzing influenza serologic data (e.g. real-time assessment of bias in ISP adjustments by evaluating the consistency of IAR across multiple thresholds and with mixture models), especially in the context of pandemics when robustness and comparability of IAR estimates are most needed for informing situational awareness and risk assessment. The same principles are broadly applicable for seroprevalence studies of other infectious disease outbreaks.
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spelling pubmed-39748612014-04-08 Inferring Influenza Infection Attack Rate from Seroprevalence Data Wu, Joseph T. Leung, Kathy Perera, Ranawaka A. P. M. Chu, Daniel K. W. Lee, Cheuk Kwong Hung, Ivan F. N. Lin, Che Kit Lo, Su-Vui Lau, Yu-Lung Leung, Gabriel M. Cowling, Benjamin J. Peiris, J. S. Malik PLoS Pathog Research Article Seroprevalence survey is the most practical method for accurately estimating infection attack rate (IAR) in an epidemic such as influenza. These studies typically entail selecting an arbitrary titer threshold for seropositivity (e.g. microneutralization [MN] 1∶40) and assuming the probability of seropositivity given infection (infection-seropositivity probability, ISP) is 100% or similar to that among clinical cases. We hypothesize that such conventions are not necessarily robust because different thresholds may result in different IAR estimates and serologic responses of clinical cases may not be representative. To illustrate our hypothesis, we used an age-structured transmission model to fully characterize the transmission dynamics and seroprevalence rises of 2009 influenza pandemic A/H1N1 (pdmH1N1) during its first wave in Hong Kong. We estimated that while 99% of pdmH1N1 infections became MN(1∶20) seropositive, only 72%, 62%, 58% and 34% of infections among age 3–12, 13–19, 20–29, 30–59 became MN(1∶40) seropositive, which was much lower than the 90%–100% observed among clinical cases. The fitted model was consistent with prevailing consensus on pdmH1N1 transmission characteristics (e.g. initial reproductive number of 1.28 and mean generation time of 2.4 days which were within the consensus range), hence our ISP estimates were consistent with the transmission dynamics and temporal buildup of population-level immunity. IAR estimates in influenza seroprevalence studies are sensitive to seropositivity thresholds and ISP adjustments which in current practice are mostly chosen based on conventions instead of systematic criteria. Our results thus highlighted the need for reexamining conventional practice to develop standards for analyzing influenza serologic data (e.g. real-time assessment of bias in ISP adjustments by evaluating the consistency of IAR across multiple thresholds and with mixture models), especially in the context of pandemics when robustness and comparability of IAR estimates are most needed for informing situational awareness and risk assessment. The same principles are broadly applicable for seroprevalence studies of other infectious disease outbreaks. Public Library of Science 2014-04-03 /pmc/articles/PMC3974861/ /pubmed/24699693 http://dx.doi.org/10.1371/journal.ppat.1004054 Text en © 2014 Wu et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Wu, Joseph T.
Leung, Kathy
Perera, Ranawaka A. P. M.
Chu, Daniel K. W.
Lee, Cheuk Kwong
Hung, Ivan F. N.
Lin, Che Kit
Lo, Su-Vui
Lau, Yu-Lung
Leung, Gabriel M.
Cowling, Benjamin J.
Peiris, J. S. Malik
Inferring Influenza Infection Attack Rate from Seroprevalence Data
title Inferring Influenza Infection Attack Rate from Seroprevalence Data
title_full Inferring Influenza Infection Attack Rate from Seroprevalence Data
title_fullStr Inferring Influenza Infection Attack Rate from Seroprevalence Data
title_full_unstemmed Inferring Influenza Infection Attack Rate from Seroprevalence Data
title_short Inferring Influenza Infection Attack Rate from Seroprevalence Data
title_sort inferring influenza infection attack rate from seroprevalence data
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3974861/
https://www.ncbi.nlm.nih.gov/pubmed/24699693
http://dx.doi.org/10.1371/journal.ppat.1004054
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