Machine Learning Readmission Risk Modeling: A Pediatric Case Study
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2019Metadata
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Wolff Rojas, Patricio
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Machine Learning Readmission Risk Modeling: A Pediatric Case Study
Abstract
© 2019 Patricio Wolff et al.Hospital readmission prediction in pediatric hospitals has received little attention. Studies have focused on the readmission frequency analysis stratified by disease and demographic/geographic characteristics but there are no predictive modeling approaches, which may be useful to identify preventable readmissions that constitute a major portion of the cost attributed to readmissions. Objective. To assess the all-cause readmission predictive performance achieved by machine learning techniques in the emergency department of a pediatric hospital in Santiago, Chile. Materials. An all-cause admissions dataset has been collected along six consecutive years in a pediatric hospital in Santiago, Chile. The variables collected are the same used for the determination of the child's treatment administrative cost. Methods. Retrospective predictive analysis of 30-day readmission was formulated as a binary classification problem. We report classification results achieved
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URI: https://repositorio.uchile.cl/handle/2250/171248
DOI: 10.1155/2019/8532892
ISSN: 23146141
23146133
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BioMed Research International, Volumen 2019,
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