Machine Learning Approaches to Predict Patient’s Length of Stay in Emergency Department

IF 2.4 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Applied Computational Intelligence and Soft Computing Pub Date : 2023-10-27 DOI:10.1155/2023/8063846
Mohammad A. Shbool, Omar S. Arabeyyat, Ammar Al-Bazi, Abeer Al-Hyari, Arwa Salem, Thana’ Abu-Hmaid, Malak Ali
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Abstract

As the COVID-19 pandemic has afflicted the globe, health systems worldwide have also been significantly affected. This pandemic has impacted many sectors, including health in the Kingdom of Jordan. Crises that put heavy pressure on the health systems’ shoulders include the emergency departments (ED), the most demanded hospital resources during normal conditions, and critical during crises. However, managing the health systems efficiently and achieving the best planning and allocation of their EDs’ resources becomes crucial to improve their capabilities to accommodate the crisis’s impact. Knowing critical factors affecting the patient length of stay prediction is critical to reducing the risks of prolonged waiting and clustering inside EDs. That is, by focusing on these factors and analyzing the effect of each. This research aims to determine the critical factors that predict the outcome: the length of stay, i.e., the predictor variables. Therefore, patients’ length of stay in EDs across waiting time duration is categorized as (low, medium, and high) using supervised machine learning (ML) approaches. Unsupervised algorithms have been applied to classify the patient’s length of stay in local EDs in the Kingdom of Jordan. The Arab Medical Centre Hospital is selected as a case study to justify the performance of the proposed ML model. Data that spans a time interval of 22 months, covering the period before and after COVID-19, is used to train the proposed feedforward network. The proposed model is compared with other ML approaches to justify its superiority. Also, comparative and correlation analyses are conducted on the considered attributes (inputs) to help classify the LOS and the patient’s length of stay in the ED. The best algorithms to be used are the trees such as the decision stump, REB tree, and Random Forest and the multilayer perceptron (with batch sizes of 50 and 0.001 learning rate) for this specific problem. Results showed better performance in terms of accuracy and easiness of implementation.
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预测急诊科病人住院时间的机器学习方法
随着COVID-19大流行在全球范围内肆虐,世界各地的卫生系统也受到了重大影响。这一大流行病影响到许多部门,包括约旦王国的卫生部门。给卫生系统带来沉重压力的危机包括急诊科(ED),它在正常情况下是医院资源需求最大的部门,在危机期间则是关键部门。然而,有效地管理卫生系统并实现最佳规划和分配其急诊科资源对于提高其适应危机影响的能力至关重要。了解影响患者住院时间预测的关键因素对于减少长时间等待和聚集在急诊室的风险至关重要。也就是说,通过关注这些因素并分析每个因素的影响。本研究旨在确定预测结果的关键因素:住院时间,即预测变量。因此,使用监督机器学习(ML)方法,将患者在急诊室的等待时间分为(低、中、高)三个级别。在约旦王国,已应用无监督算法对患者在当地急诊室的住院时间进行分类。选择阿拉伯医疗中心医院作为案例研究,以证明所提议的机器学习模型的性能。数据跨度为22个月,涵盖了COVID-19之前和之后的时间间隔,用于训练所提出的前馈网络。将所提出的模型与其他ML方法进行比较,以证明其优越性。此外,还对考虑的属性(输入)进行了比较和相关性分析,以帮助对LOS和患者在急诊室的住院时间进行分类。对于这个特定问题,使用的最佳算法是决策树桩、REB树和随机森林等树和多层感知器(批大小为50,学习率为0.001)。结果表明,该方法具有较好的准确性和易于实现性。
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来源期刊
Applied Computational Intelligence and Soft Computing
Applied Computational Intelligence and Soft Computing COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
6.10
自引率
3.40%
发文量
59
审稿时长
21 weeks
期刊介绍: Applied Computational Intelligence and Soft Computing will focus on the disciplines of computer science, engineering, and mathematics. The scope of the journal includes developing applications related to all aspects of natural and social sciences by employing the technologies of computational intelligence and soft computing. The new applications of using computational intelligence and soft computing are still in development. Although computational intelligence and soft computing are established fields, the new applications of using computational intelligence and soft computing can be regarded as an emerging field, which is the focus of this journal.
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