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Main Authors: Harris, Thomas J., Alexander, Prescott C., Pham, Anh B. D., Tuccillo, Joseph, Geard, Nicholas, Zachreson, Cameron
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.03897
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author Harris, Thomas J.
Alexander, Prescott C.
Pham, Anh B. D.
Tuccillo, Joseph
Geard, Nicholas
Zachreson, Cameron
author_facet Harris, Thomas J.
Alexander, Prescott C.
Pham, Anh B. D.
Tuccillo, Joseph
Geard, Nicholas
Zachreson, Cameron
contents Social contact patterns are a key input to many infectious disease models. Contact surveys, where participants are asked to provide information on their recent close and casual contacts with others, are one of the standard methods to measure contact patterns in a population. Surveys that require detailed sociodemographic descriptions of contacts allow for the specification of fine-grained contact rates between subpopulations in models. However, perception biases affecting a surveyed person's ability to estimate sociodemographic attributes (e.g., age, race, socioeconomic status) of others could affect contact rates derived from survey data. Here, we simulate contact surveys using a synthetic contact network of New Mexico to investigate the impact of these biases on survey accuracy and infectious disease model projections. We found that perception biases affecting the estimation of another individual's age and race substantially decreased the accuracy of the derived contact patterns. Using these biased patterns in a Susceptible-Infectious-Recovered compartmental model lead to an underestimation of cumulative incidence among older people (65+ years) and individuals identifying as races other than White. Our study shows that perception biases can impact contact patterns estimated from surveys in ways that systematically underestimate disease burden in minority populations when used in transmission models.
format Preprint
id arxiv_https___arxiv_org_abs_2511_03897
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Simulating the impact of perception bias on social contact surveys for infectious disease modelling
Harris, Thomas J.
Alexander, Prescott C.
Pham, Anh B. D.
Tuccillo, Joseph
Geard, Nicholas
Zachreson, Cameron
Populations and Evolution
Social contact patterns are a key input to many infectious disease models. Contact surveys, where participants are asked to provide information on their recent close and casual contacts with others, are one of the standard methods to measure contact patterns in a population. Surveys that require detailed sociodemographic descriptions of contacts allow for the specification of fine-grained contact rates between subpopulations in models. However, perception biases affecting a surveyed person's ability to estimate sociodemographic attributes (e.g., age, race, socioeconomic status) of others could affect contact rates derived from survey data. Here, we simulate contact surveys using a synthetic contact network of New Mexico to investigate the impact of these biases on survey accuracy and infectious disease model projections. We found that perception biases affecting the estimation of another individual's age and race substantially decreased the accuracy of the derived contact patterns. Using these biased patterns in a Susceptible-Infectious-Recovered compartmental model lead to an underestimation of cumulative incidence among older people (65+ years) and individuals identifying as races other than White. Our study shows that perception biases can impact contact patterns estimated from surveys in ways that systematically underestimate disease burden in minority populations when used in transmission models.
title Simulating the impact of perception bias on social contact surveys for infectious disease modelling
topic Populations and Evolution
url https://arxiv.org/abs/2511.03897