Graph Learning for Bidirectional Disease Contact Tracing on Real Human Mobility Data
Journal:
arXiv
Published Date:
Jan 30, 2025
Abstract
For rapidly spreading diseases where many cases show no symptoms, swift and
effective contact tracing is essential. While exposure notification
applications provide alerts on potential exposures, a fully automated system is
needed to track the infectious transmission routes. To this end, our research
leverages large-scale contact networks from real human mobility data to
identify the path of transmission. More precisely, we introduce a new
Infectious Path Centrality network metric that informs a graph learning edge
classifier to identify important transmission events, achieving an F1-score of
94%. Additionally, we explore bidirectional contact tracing, which quarantines
individuals both retroactively and proactively, and compare its effectiveness
against traditional forward tracing, which only isolates individuals after
testing positive. Our results indicate that when only 30% of symptomatic
individuals are tested, bidirectional tracing can reduce infectious effective
reproduction rate by 71%, thus significantly controlling the outbreak.