Inference of R(0) and transmission heterogeneity from the size distribution of stuttering chains.

For many infectious disease processes such as emerging zoonoses and vaccine-preventable diseases, [Formula: see text] and infections occur as self-limited stuttering transmission chains. A mechanistic understanding of transmission is essential for characterizing the risk of emerging diseases and mon...

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Main Authors: Seth Blumberg, James O Lloyd-Smith
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC3642075?pdf=render
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spelling doaj-7389a97f095b412383576733b9e1c2f22020-11-25T01:46:02ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582013-01-0195e100299310.1371/journal.pcbi.1002993Inference of R(0) and transmission heterogeneity from the size distribution of stuttering chains.Seth BlumbergJames O Lloyd-SmithFor many infectious disease processes such as emerging zoonoses and vaccine-preventable diseases, [Formula: see text] and infections occur as self-limited stuttering transmission chains. A mechanistic understanding of transmission is essential for characterizing the risk of emerging diseases and monitoring spatio-temporal dynamics. Thus methods for inferring [Formula: see text] and the degree of heterogeneity in transmission from stuttering chain data have important applications in disease surveillance and management. Previous researchers have used chain size distributions to infer [Formula: see text], but estimation of the degree of individual-level variation in infectiousness (as quantified by the dispersion parameter, [Formula: see text]) has typically required contact tracing data. Utilizing branching process theory along with a negative binomial offspring distribution, we demonstrate how maximum likelihood estimation can be applied to chain size data to infer both [Formula: see text] and the dispersion parameter that characterizes heterogeneity. While the maximum likelihood value for [Formula: see text] is a simple function of the average chain size, the associated confidence intervals are dependent on the inferred degree of transmission heterogeneity. As demonstrated for monkeypox data from the Democratic Republic of Congo, this impacts when a statistically significant change in [Formula: see text] is detectable. In addition, by allowing for superspreading events, inference of [Formula: see text] shifts the threshold above which a transmission chain should be considered anomalously large for a given value of [Formula: see text] (thus reducing the probability of false alarms about pathogen adaptation). Our analysis of monkeypox also clarifies the various ways that imperfect observation can impact inference of transmission parameters, and highlights the need to quantitatively evaluate whether observation is likely to significantly bias results.http://europepmc.org/articles/PMC3642075?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Seth Blumberg
James O Lloyd-Smith
spellingShingle Seth Blumberg
James O Lloyd-Smith
Inference of R(0) and transmission heterogeneity from the size distribution of stuttering chains.
PLoS Computational Biology
author_facet Seth Blumberg
James O Lloyd-Smith
author_sort Seth Blumberg
title Inference of R(0) and transmission heterogeneity from the size distribution of stuttering chains.
title_short Inference of R(0) and transmission heterogeneity from the size distribution of stuttering chains.
title_full Inference of R(0) and transmission heterogeneity from the size distribution of stuttering chains.
title_fullStr Inference of R(0) and transmission heterogeneity from the size distribution of stuttering chains.
title_full_unstemmed Inference of R(0) and transmission heterogeneity from the size distribution of stuttering chains.
title_sort inference of r(0) and transmission heterogeneity from the size distribution of stuttering chains.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2013-01-01
description For many infectious disease processes such as emerging zoonoses and vaccine-preventable diseases, [Formula: see text] and infections occur as self-limited stuttering transmission chains. A mechanistic understanding of transmission is essential for characterizing the risk of emerging diseases and monitoring spatio-temporal dynamics. Thus methods for inferring [Formula: see text] and the degree of heterogeneity in transmission from stuttering chain data have important applications in disease surveillance and management. Previous researchers have used chain size distributions to infer [Formula: see text], but estimation of the degree of individual-level variation in infectiousness (as quantified by the dispersion parameter, [Formula: see text]) has typically required contact tracing data. Utilizing branching process theory along with a negative binomial offspring distribution, we demonstrate how maximum likelihood estimation can be applied to chain size data to infer both [Formula: see text] and the dispersion parameter that characterizes heterogeneity. While the maximum likelihood value for [Formula: see text] is a simple function of the average chain size, the associated confidence intervals are dependent on the inferred degree of transmission heterogeneity. As demonstrated for monkeypox data from the Democratic Republic of Congo, this impacts when a statistically significant change in [Formula: see text] is detectable. In addition, by allowing for superspreading events, inference of [Formula: see text] shifts the threshold above which a transmission chain should be considered anomalously large for a given value of [Formula: see text] (thus reducing the probability of false alarms about pathogen adaptation). Our analysis of monkeypox also clarifies the various ways that imperfect observation can impact inference of transmission parameters, and highlights the need to quantitatively evaluate whether observation is likely to significantly bias results.
url http://europepmc.org/articles/PMC3642075?pdf=render
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