Heart Failure Diagnosis, Readmission, and Mortality Prediction Using Machine Learning and Artificial Intelligence Models release_5w3qaimcw5bcpha4gabp6ascum

by Aixia Guo, Michael Pasque, Francis Loh, Douglas L. Mann, Philip R. O. Payne

Published in Current Epidemiology Reports by Springer Science and Business Media LLC.

2020  

Abstract

<jats:title>Abstract</jats:title> <jats:sec> <jats:title>Purpose of Review</jats:title> One in five people will develop heart failure (HF), and 50% of HF patients die in 5 years. The HF diagnosis, readmission, and mortality prediction are essential to develop personalized prevention and treatment plans. This review summarizes recent findings and approaches of machine learning models for HF diagnostic and outcome prediction using electronic health record (EHR) data. </jats:sec> <jats:sec> <jats:title>Recent Findings</jats:title> A set of machine learning models have been developed for HF diagnostic and outcome prediction using diverse variables derived from EHR data, including demographic, medical note, laboratory, and image data, and achieved expert-comparable prediction results. </jats:sec> <jats:sec> <jats:title>Summary</jats:title> Machine learning models can facilitate the identification of HF patients, as well as accurate patient-specific assessment of their risk for readmission and mortality. Additionally, novel machine learning techniques for integration of diverse data and improvement of model predictive accuracy in imbalanced data sets are critical for further development of these promising modeling methodologies. </jats:sec>
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