2022
DOI: 10.48550/arxiv.2210.16598
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Self-supervised predictive coding and multimodal fusion advance patient deterioration prediction in fine-grained time resolution

Abstract: In the Emergency Department (ED), accurate prediction of critical events using Electronic Health Records (EHR) allows timely intervention and effective resource allocation. Though many studies have suggested automatic prediction methods, their coarse-grained time resolutions limit their practical usage. Therefore, in this study, we propose an hourly prediction method of critical events in ED, i.e., mortality and vasopressor need. Through extensive experiments, we show that both 1) bi-modal fusion between EHR t… Show more

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