Application of Machine Learning Algorithms for Patient Length of Stay Prediction in Emergency Department During Hajj

Hassan Hijry, Richard Olawoyin
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引用次数: 5

Abstract

Hospital emergency departments (EDs) in vital locations face high patient demand during peak events such as the annual Islamic pilgrimage (the Hajj event) in Mecca, Saudi Arabia, the New Year celebration ceremony in New York, and the World Cup, etc. Variable patient arrival rates and hospital conditions, particularly the availability of beds for inpatients, impacts long waiting times and length of stay (LOS), causing pain and dissatisfaction to patients. Patient length of stay is chosen to be a measure of ED overcrowding as a compliance measure set by most hospitals. Clinicians need to get an opportunity to be proactive in ED overcrowding crises, specifically in the case of peak days. For this purpose, the research aims to build a model to forecast Hajj patient LOS, using machine learning algorithms through predictive input factors such as patient age, mode of arrival, and patient’s type of condition in the ED. Therefore, using machine learning algorithms, such as artificial neural networks, linear and logistic regressions, to forecast ED LOS allows clinicians to prepare for high levels of congestion and provide insights to determine the LOS of patients during vital times.
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机器学习算法在朝觐期间急诊科患者住院时间预测中的应用
在沙特阿拉伯麦加的年度伊斯兰朝圣(Hajj事件)、纽约的新年庆祝仪式和世界杯等高峰事件期间,重要地点的医院急诊科(EDs)面临着很高的患者需求。不同的病人到达率和医院条件,特别是住院病人床位的可用性,影响了漫长的等待时间和住院时间(LOS),给病人带来痛苦和不满。病人的住院时间是选择作为一个措施,以急诊室过度拥挤的依从性措施,由大多数医院设置。临床医生需要有机会主动应对急诊科人满为患的危机,特别是在高峰时期。为此,该研究旨在建立一个模型来预测朝觐患者的LOS,使用机器学习算法通过预测输入因素,如患者年龄、到达方式和患者在急诊科的病情类型。因此,使用机器学习算法,如人工神经网络、线性和逻辑回归,来预测急诊科的LOS,使临床医生能够为高度拥堵做好准备,并提供在重要时期确定患者LOS的洞察力。
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