To trace or not to trace: analytical insights from network-based contact-tracing models
Giulia de Meijere, Andrea Pugliese, Gerardo I\~niguez, P\'eter L. Simon, Istv\'an Z. Kiss

TL;DR
This paper develops a comprehensive analytical framework for contact tracing in epidemic networks, relaxing common assumptions and introducing triplewise tracing to better understand thresholds for epidemic control.
Contribution
It provides the first full analytical characterization of epidemic thresholds in pairwise models with partial compliance and higher-order tracing mechanisms.
Findings
Triplewise contact tracing enhances epidemic control.
Partial compliance can lead to uncontrollable outbreaks.
Combined tracing mechanisms improve threshold accuracy.
Abstract
Contact tracing is one of the most important control measures deployed during epidemics. Relying on the identification of contacts of known infected individuals, it necessitates a network perspective. Although pairwise models have been used extensively to study contact tracing, their analysis typically depends on a decoupling assumption-most commonly that contact tracing operates on a much faster timescale than disease transmission. Furthermore, contact tracing models often assume that all infected individuals become contact tracing-triggering, which is unrealistic given partial compliance to treatment. We relax both of these restrictive assumptions and provide a full analytical characterisation of the epidemic threshold in the pairwise mean-field model. Our analysis uses a fast-variables approach that captures the rapid early stabilisation of key network quantities. Inspired by…
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Taxonomy
TopicsCOVID-19 epidemiological studies · COVID-19 Digital Contact Tracing · Data-Driven Disease Surveillance
