Use of machine learning to predict abandonment rates in an emergency department

G. Improta, Ylenia Colella, Giovanni Rossi, A. Borrelli, Giuseppe Russo, M. Triassi
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引用次数: 3

Abstract

Overcrowding is a serious issue that Emergency Departments (EDs) must deal with, since it is leading to longer delays and greater patients’ dissatisfaction, which are directly connected with an increasing number of patients who leave the ED prematurely. Hospital is affected by this aspect in terms of lost revenues from opportunities missed in providing care and adverse outcomes deriving from ED process. For this reason, the ability to control and predict in advance patients who leave ED without any evaluation becomes strategic for healthcare administrators. The purpose of this work is to investigate causes that determine patients who leave the ED without being seen. Machine Learning algorithms are used in order to build and compare different models for LWBS prediction, with the aim of obtaining a helpful support tool for the ED management in healthcare facilities.
使用机器学习来预测急诊科的放弃率
过度拥挤是急诊科(ED)必须处理的一个严重问题,因为它会导致更长时间的延误和更大的患者不满,这与越来越多的患者过早离开急诊室直接相关。医院受到这方面的影响,因为在提供护理和ED过程中产生的不良后果方面错过了机会,从而损失了收入。出于这个原因,控制和提前预测患者离开ED没有任何评估的能力成为医疗保健管理人员的战略。这项工作的目的是调查决定病人离开急诊室而不被看到的原因。机器学习算法用于构建和比较LWBS预测的不同模型,目的是为医疗机构的急诊科管理获得有用的支持工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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