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Systematic selection between age and household structure for models aimed at emerging epidemic predictions

Abstract : Numerous epidemic models have been developed to capture aspects of human contact patterns, making model selection challenging when they fit (often-scarce) early epidemic data equally well but differ in predictions. Here we consider the invasion of a novel directly transmissible infection and perform an extensive, systematic and transparent comparison of models with explicit age and/or household structure, to determine the accuracy loss in predictions in the absence of interventions when ignoring either or both social components. We conclude that, with heterogeneous and assortative contact patterns relevant to respiratory infections, the model’s age stratification is crucial for accurate predictions. Conversely, the household structure is only needed if transmission is highly concentrated in households, as suggested by an empirical but robust rule of thumb based on household secondary attack rate. This work serves as a template to guide the simplicity/accuracy trade-off in designing models aimed at initial, rapid assessment of potential epidemic severity.
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https://hal-pasteur.archives-ouvertes.fr/pasteur-03325910
Contributor : Cécile Limouzin <>
Submitted on : Wednesday, August 25, 2021 - 1:58:29 PM
Last modification on : Friday, August 27, 2021 - 3:30:03 AM

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Lorenzo Pellis, Simon Cauchemez, Neil Ferguson, Christophe Fraser. Systematic selection between age and household structure for models aimed at emerging epidemic predictions. Nature Communications, Nature Publishing Group, 2020, 11 (1), pp.906. ⟨10.1038/s41467-019-14229-4⟩. ⟨pasteur-03325910⟩

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