How to estimate epidemic risk from incomplete contact diaries data?
Rossana Mastrandrea, Alain Barrat

TL;DR
This paper examines how incomplete contact diary data impacts epidemic risk predictions and proposes methods to create surrogate contact networks from diary data that closely match sensor-based network simulations.
Contribution
It introduces techniques to construct surrogate contact networks from diary data that accurately estimate epidemic risk, despite data collection limitations.
Findings
Surveys show discrepancies between diary and sensor contact networks.
Surrogate networks can replicate sensor-based epidemic risk estimates.
Complementing diary data with public contact duration information improves accuracy.
Abstract
Social interactions shape the patterns of spreading processes in a population. Techniques such as diaries or proximity sensors allow to collect data about encounters and to build networks of contacts between individuals. The contact networks obtained from these different techniques are however quantitatively different. Here, we first show how these discrepancies affect the prediction of the epidemic risk when these data are fed to numerical models of epidemic spread: low participation rate, under-reporting of contacts and overestimation of contact durations in contact diaries with respect to sensor data determine indeed important differences in the outcomes of the corresponding simulations {with for instance an enhanced sensitivity to initial conditions}. Most importantly, we investigate if and how information gathered from contact diaries can be used in such simulations in order to…
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