2023
DOI: 10.21203/rs.3.rs-2720458/v1
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Predicting emerging zoonotic disease under resource-limited settings: Case study of Kyasanur Forest Disease using event-based surveillance data and transfer learning

Abstract: In recent years, the reports of Kyasanur Forest Disease (KFD) breaking endemic barriers by spreading to new regions and crossing state boundaries is alarming. Effective disease surveillance and reporting systems are lacking for this emerging zoonosis, hence hindering control and prevention efforts. We compared time-series models using weather data with and without Event-Based Surveillance (EBS) information, i.e., news media reports and internet search trends, to predict monthly KFD cases in humans. We fitted E… Show more

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