Machine learning in patient flow: a review.

IF 5 Q1 ENGINEERING, BIOMEDICAL
Rasheed El-Bouri, Thomas Taylor, Alexey Youssef, Tingting Zhu, David A Clifton
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Abstract

This work is a review of the ways in which machine learning has been used in order to plan, improve or aid the problem of moving patients through healthcare services. We decompose the patient flow problem into four subcategories: prediction of demand on a healthcare institution, prediction of the demand and resource required to transfer patients from the emergency department to the hospital, prediction of potential resource required for the treatment and movement of inpatients and prediction of length-of-stay and discharge timing. We argue that there are benefits to both approaches of considering the healthcare institution as a whole as well as the patient by patient case and that ideally a combination of these would be best for improving patient flow through hospitals. We also argue that it is essential for there to be a shared dataset that will allow researchers to benchmark their algorithms on and thereby allow future researchers to build on that which has already been done. We conclude that machine learning for the improvement of patient flow is still a young field with very few papers tailor-making machine learning methods for the problem being considered. Future works should consider the need to transfer algorithms trained on a dataset to multiple hospitals and allowing for dynamic algorithms which will allow real-time decision-making to help clinical staff on the shop floor.

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病人流中的机器学习:综述。
本研究综述了机器学习用于规划、改善或帮助解决病人在医疗服务中流动问题的方法。我们将患者流动问题分解为四个子类别:预测医疗机构的需求、预测将患者从急诊科转至医院所需的需求和资源、预测住院患者治疗和流动所需的潜在资源以及预测住院时间和出院时间。我们认为,将医疗机构作为一个整体来考虑以及根据病人的具体情况来考虑这两种方法都有好处,理想的情况是将这两种方法结合起来,以改善医院的病人流量。我们还认为,有必要建立一个共享数据集,让研究人员能够以其算法为基准,从而让未来的研究人员在已有的基础上更上一层楼。我们的结论是,用于改善患者流量的机器学习仍是一个年轻的领域,很少有论文针对所考虑的问题量身定制机器学习方法。未来的工作应考虑将在数据集上训练的算法转移到多家医院的需要,并允许采用动态算法,从而实现实时决策,为车间的临床人员提供帮助。
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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CiteScore
9.40
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