Influenza Infection Rates, Measurement Errors and the Interpretation of Paired Serology

Serological studies are the gold standard method to estimate influenza infection attack rates (ARs) in human populations. In a common protocol, blood samples are collected before and after the epidemic in a cohort of individuals; and a rise in haemagglutination-inhibition (HI) antibody titers during...

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Published inPLoS pathogens Vol. 8; no. 12; p. e1003061
Main Authors Cauchemez, Simon, Horby, Peter, Fox, Annette, Mai, Le Quynh, Thanh, Le Thi, Thai, Pham Quang, Hoa, Le Nguyen Minh, Hien, Nguyen Tran, Ferguson, Neil M.
Format Journal Article
LanguageEnglish
Published United States Public Library of Science 01.12.2012
Public Library of Science (PLoS)
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Summary:Serological studies are the gold standard method to estimate influenza infection attack rates (ARs) in human populations. In a common protocol, blood samples are collected before and after the epidemic in a cohort of individuals; and a rise in haemagglutination-inhibition (HI) antibody titers during the epidemic is considered as a marker of infection. Because of inherent measurement errors, a 2-fold rise is usually considered as insufficient evidence for infection and seroconversion is therefore typically defined as a 4-fold rise or more. Here, we revisit this widely accepted 70-year old criterion. We develop a Markov chain Monte Carlo data augmentation model to quantify measurement errors and reconstruct the distribution of latent true serological status in a Vietnamese 3-year serological cohort, in which replicate measurements were available. We estimate that the 1-sided probability of a 2-fold error is 9.3% (95% Credible Interval, CI: 3.3%, 17.6%) when antibody titer is below 10 but is 20.2% (95% CI: 15.9%, 24.0%) otherwise. After correction for measurement errors, we find that the proportion of individuals with 2-fold rises in antibody titers was too large to be explained by measurement errors alone. Estimates of ARs vary greatly depending on whether those individuals are included in the definition of the infected population. A simulation study shows that our method is unbiased. The 4-fold rise case definition is relevant when aiming at a specific diagnostic for individual cases, but the justification is less obvious when the objective is to estimate ARs. In particular, it may lead to large underestimates of ARs. Determining which biological phenomenon contributes most to 2-fold rises in antibody titers is essential to assess bias with the traditional case definition and offer improved estimates of influenza ARs.
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SC received consulting fees from Sanofi Pasteur MSD for a project on the modelling of the transmission of varicella zoster virus (i.e. different subject than submission). This does not alter our adherence to all PLOS Pathogens policies on sharing data and materials.
Conceived and designed the experiments: SC PH AF NMF. Performed the experiments: SC PH AF LQM LTT PQT LNMH NTH. Analyzed the data: SC PH AF. Wrote the paper: SC PH AF LQM LTT PQT LNMH NTH NMF.
ISSN:1553-7374
1553-7366
1553-7374
DOI:10.1371/journal.ppat.1003061