Feb. 9, 2024, 5:44 a.m. | Hyewon Jeong Nassim Oufattole Matthew Mcdermott Aparna Balagopalan Bryan Jangeesingh Marzyeh Ghassemi

cs.LG updates on arXiv.org arxiv.org

In clinical practice, one often needs to identify whether a patient is at high risk of adverse outcomes after some key medical event; for example, the short-term risk of death after an admission for heart failure. This task is challenging due to the complexity, variability, and heterogeneity of longitudinal medical data, especially for individuals suffering from chronic diseases like heart failure. In this paper, we introduce Event-Based Contrastive Learning (EBCL), a method for learning embeddings of heterogeneous patient data that …

clinical complexity cs.lg data death event example failure identify key medical medical data patient practice risk series time series

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