Modeling of Network Based Digital Contact Tracing and Testing Strategies for the COVID-19 Pandemic
Daniel Xu

TL;DR
This paper presents a mathematical model using real-world social network data to evaluate digital contact tracing and testing strategies for COVID-19, identifying the most effective approaches to reduce infections.
Contribution
It introduces a novel simulation framework that extends social networks and assesses combined contact tracing and testing strategies for COVID-19.
Findings
Combined pre-exposure notification and testing second/third degree contacts significantly reduce infections.
High app adoption rates correlate with greater infection reduction.
The model's results are consistent across different network sizes.
Abstract
With more than 1.7 million COVID-19 deaths, identifying effective measures to prevent COVID-19 is a top priority. We developed a mathematical model to simulate the COVID-19 pandemic with digital contact tracing and testing strategies. The model uses a real-world social network generated from a high-resolution contact data set of 180 students. This model incorporates infectivity variations, test sensitivities, incubation period, and asymptomatic cases. We present a method to extend the weighted temporal social network and present simulations on a network of 5000 students. The purpose of this work is to investigate optimal quarantine rules and testing strategies with digital contact tracing. The results show that the traditional strategy of quarantining direct contacts reduces infections by less than 20% without sufficient testing. Periodic testing every 2 weeks without contact tracing…
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Taxonomy
TopicsCOVID-19 epidemiological studies · COVID-19 Digital Contact Tracing · Data-Driven Disease Surveillance
