Efficient vaccination strategies for epidemic control using network information
Yingrui Yang, Ashley McKhann, Sixing Chen, Guy Harling, Jukka-Pekka, Onnela

TL;DR
This study evaluates how partial network data impacts the effectiveness of network-based vaccination strategies in controlling epidemics, showing that even limited information can significantly improve outcomes.
Contribution
The paper demonstrates that partial network information, including data truncated by fixed choice design, can effectively guide vaccination strategies, reducing the need for complete network data.
Findings
Partial network data improves vaccination outcomes over random approaches.
Full network data reduces infections by two-thirds.
Degree distribution predicts epidemic size effectively.
Abstract
Network-based interventions against epidemic spread are most powerful when the full network structure is known. However, in practice, resource constraints require decisions to be made based on partial network information. We investigated how the accuracy of network data available at individual and village levels affected network-based vaccination effectiveness. We simulated a Susceptible-Infected-Recovered process on empirical social networks from 75 villages. First, we used regression to predict the percentage of individuals ever infected based on village-level network. Second, we simulated vaccinating 10 percent of each of the 75 empirical village networks at baseline, selecting vaccinees through one of five network-based approaches: random individuals; random contacts of random individuals; random high-degree individuals; highest degree individuals; or most central individuals. The…
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Taxonomy
TopicsComplex Network Analysis Techniques · COVID-19 epidemiological studies · Misinformation and Its Impacts
