Machine learning approaches for estimating cross-neutralization potential among FMD serotype O viruses
Dennis N Makau,
Jonathan Arzt,
Kimberly VanderWaal
Abstract:In this study, we aimed to develop an algorithm that uses sequence data to estimate cross-neutralization between serotype O foot-and-mouth disease viruses (FMDV) based on r1 values, while identifying key genomic sites associated with high or low r1 values. The ability to estimate cross-neutralization potential among co-circulating FMDVs in silico is significant for vaccine developers, animal health agencies making herd immunization decisions, and disease preparedness. Using published data on virus neutralizati… Show more
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