| Literature DB >> 34305484 |
Jose Cadena1, Achla Marathe2, Anil Vullikanti3.
Abstract
Geographical clusters of undervaccinated populations have emerged in various parts of the United States in recent years. Public health response involves surveillance and field work, which is very resource intensive. Given that public health resources are often limited, identifying and rank-ordering critical clusters can help prioritize and allocate scarce resources for surveillance and quick intervention. We quantify the criticality of a cluster as the additional number of infections caused if the cluster is underimmunized. We focus on finding clusters that maximize this measure and develop efficient approximation algorithms for finding critical clusters by exploiting structural properties of the problem. Our methods involve solving a more general problem of maximizing a submodular function on a graph with connectivity constraints. We apply our methods to the state of Minnesota, where we find clusters with significantly higher criticality than those obtained by heuristics used in public health.Entities:
Year: 2020 PMID: 34305484 PMCID: PMC8300049
Source DB: PubMed Journal: Proc Int Joint Conf Auton Agents Multiagent Syst ISSN: 1548-8403