2020
DOI: 10.2172/1670999
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Predicting Future Disease Burden in a Rapidly Changing Climate

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“…Our own recent work in climate, together with expertise in epidemiological modeling, pathogenesis, machine learning (ML) and data analytics, bring together a unique capability for discovering latent water cycle features useful for calibrating, constraining and elaborating the next generation of climate models. These newly updated climate models will in turn be used to forecast emerging and re-emerging, climate-mediated infectious disease 8,9 .…”
Section: Narrativementioning
confidence: 99%
“…Our own recent work in climate, together with expertise in epidemiological modeling, pathogenesis, machine learning (ML) and data analytics, bring together a unique capability for discovering latent water cycle features useful for calibrating, constraining and elaborating the next generation of climate models. These newly updated climate models will in turn be used to forecast emerging and re-emerging, climate-mediated infectious disease 8,9 .…”
Section: Narrativementioning
confidence: 99%