2024
DOI: 10.1002/ehf2.14834
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Development of interpretable machine learning models to predict in‐hospital prognosis of acute heart failure patients

Munekazu Tanaka,
Hirohiko Kohjitani,
Erika Yamamoto
et al.

Abstract: AimsIn recent years, there has been remarkable development in machine learning (ML) models, showing a trend towards high prediction performance. ML models with high prediction performance often become structurally complex and are frequently perceived as black boxes, hindering intuitive interpretation of the prediction results. We aimed to develop ML models with high prediction performance, interpretability, and superior risk stratification to predict in‐hospital mortality and worsening heart failure (WHF) in p… Show more

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