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利用机器学习实时预测患者出院准备情况,改善传染病爆发期间的患者流程。

Improving patient flow during infectious disease outbreaks using machine learning for real-time prediction of patient readiness for discharge.

机构信息

Department of Engineering Science, University of Oxford, Oxford, United Kingdom.

Oxford University Hospitals NHS Foundation Trust, Oxford, United Kingdom.

出版信息

PLoS One. 2021 Nov 23;16(11):e0260476. doi: 10.1371/journal.pone.0260476. eCollection 2021.

Abstract

BACKGROUND

Delays in patient flow and a shortage of hospital beds are commonplace in hospitals during periods of increased infection incidence, such as seasonal influenza and the COVID-19 pandemic. The objective of this study was to develop and evaluate the efficacy of machine learning methods at identifying and ranking the real-time readiness of individual patients for discharge, with the goal of improving patient flow within hospitals during periods of crisis.

METHODS AND PERFORMANCE

Electronic Health Record data from Oxford University Hospitals was used to train independent models to classify and rank patients' real-time readiness for discharge within 24 hours, for patient subsets according to the nature of their admission (planned or emergency) and the number of days elapsed since their admission. A strategy for the use of the models' inference is proposed, by which the model makes predictions for all patients in hospital and ranks them in order of likelihood of discharge within the following 24 hours. The 20% of patients with the highest ranking are considered as candidates for discharge and would therefore expect to have a further screening by a clinician to confirm whether they are ready for discharge or not. Performance was evaluated in terms of positive predictive value (PPV), i.e., the proportion of these patients who would have been correctly deemed as 'ready for discharge' after having the second screening by a clinician. Performance was high for patients on their first day of admission (PPV = 0.96/0.94 for planned/emergency patients respectively) but dropped for patients further into a longer admission (PPV = 0.66/0.71 for planned/emergency patients still in hospital after 7 days).

CONCLUSION

We demonstrate the efficacy of machine learning methods at making operationally focused, next-day discharge readiness predictions for all individual patients in hospital at any given moment and propose a strategy for their use within a decision-support tool during crisis periods.

摘要

背景

在流感季节和 COVID-19 大流行等感染发生率增加期间,医院经常会出现患者流程延迟和医院床位短缺的情况。本研究的目的是开发和评估机器学习方法在识别和评估患者实时出院准备情况方面的功效,以改善危机期间医院内的患者流程。

方法和性能

使用牛津大学医院的电子健康记录数据来训练独立的模型,以根据患者入院的性质(计划性或紧急性)和入院天数,对 24 小时内患者实时出院准备情况进行分类和排序。提出了一种使用模型推断的策略,即模型对所有住院患者进行预测,并按在接下来 24 小时内出院的可能性进行排序。将排名前 20%的患者视为出院候选者,因此预计将由临床医生进行进一步筛查,以确认他们是否准备好出院。性能评估基于阳性预测值(PPV),即这些患者中有多少人在经过临床医生第二次筛查后被正确认为“准备好出院”。对于入院第一天的患者,性能较高(计划/紧急患者的 PPV 分别为 0.96/0.94),但对于入院时间较长的患者,性能下降(计划/紧急患者在入院 7 天后仍在医院的 PPV 分别为 0.66/0.71)。

结论

我们证明了机器学习方法在任何给定时刻对所有住院患者进行操作重点、次日出院准备情况预测的功效,并提出了在危机期间决策支持工具中使用它们的策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a747/8610279/812e74250af6/pone.0260476.g001.jpg

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