Abstract
AbstractPublic health surveillance for pathogens presents an optimization problem: we require enough sampling to identify intervention-triggering shifts in pathogen epidemiology, such as new introductions or sudden increases in prevalence, but not so much that costs due to surveillance itself outweigh those from pathogen-associated illness. To determine this optimal sampling frequency, we developed a general mathematical model for the introduction of a new pathogen that, once introduced, increases in prevalence exponentially. Given the relative cost of infectionvs. sampling, we derived equations for the expected combined cost of disease burden and surveillance given a sampling frequency and thus the sampling frequency for which the expected total cost is lowest.
Publisher
Cold Spring Harbor Laboratory
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