Predicting whether patients in an acute medical unit are physiologically fit-for-discharge using machine learning: A proof-of-concept

IF 3.7 2区 医学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS International Journal of Medical Informatics Pub Date : 2024-08-10 DOI:10.1016/j.ijmedinf.2024.105586
S.H. Garssen , C.A. Vernooij , N. Kant , M.V. Koning , F.H. Bosch , C.J.M. Doggen , B.P. Veldkamp , W.F.J. Verhaegh , S.F. Oude Wesselink
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Abstract

Introduction

Delays in discharging patients from Acute Medical Units hamper patient flows throughout the hospital. The decision to discharge a patient is mainly based on the patients’ physiological condition, but may vary between physicians. An objective decision-support system based on patients’ physiological data may help minimizing unnecessary delays in discharge. The aim of this proof-of-concept study is to assess the feasibility of predicting whether patients in an Acute Medical Unit are physiologically fit-for-discharge using machine learning with commonly available hospital data. Furthermore, this study investigated how long before actual time of discharge from the Acute Medical Unit we could predict discharge fitness. Also, the predictive importance of features extracted from these data was assessed.

Methods

Electronic Medical Records of patients who participated in a Randomized Controlled Trial conducted in an Acute Medical Unit were used retrospectively (N = 199). Only commonly available hospital data were used. Logistic Regression and Random Forest models were applied to predict every hour whether patients were physiologically fit-for-discharge. Nested 5-fold cross-validation with 5 repeats was used to optimize the model hyperparameters and to estimate the predictive performances.

Results

Physiological discharge fitness was predictable with reasonable performance for Logistic Regression (mean AUROC: 0.67) and Random Forest (mean AUROC: 0.69). For an intuitively chosen classification threshold of 0.8, mean specificity was 93.3 % and sensitivity 14.1 %. Models could predict physiological discharge fitness more than 24 h earlier than actual time of discharge for most patients who were correctly predicted to be fit-for-discharge. Patient characteristics, vital signs and laboratory results were shown to be important predictors.

Conclusion

This proof-of-concept study showed that it is feasible to predict with machine learning whether patients in an Acute Medical Unit are physiologically fit-for-discharge using commonly available hospital data.

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利用机器学习预测急诊科病人的生理状况是否适合出院:概念验证
导言:急诊科病人延迟出院阻碍了整个医院的病人流动。病人出院的决定主要基于病人的生理状况,但不同医生的决定可能有所不同。基于病人生理数据的客观决策支持系统可能有助于减少不必要的出院延误。这项概念验证研究旨在评估利用机器学习和医院常用数据预测急诊科病人的生理状况是否适合出院的可行性。此外,本研究还调查了在急诊科实际出院时间之前多久,我们可以预测出院患者的健康状况。方法回顾性使用了在急诊科参与随机对照试验的患者的电子病历(N = 199)。仅使用医院常用数据。应用逻辑回归和随机森林模型预测患者每小时的生理状况是否适合出院。结果Logistic回归(平均AUROC:0.67)和随机森林(平均AUROC:0.69)都能以合理的性能预测患者是否适合出院。直观选择的分类阈值为 0.8,平均特异性为 93.3%,灵敏度为 14.1%。对于大多数被正确预测为适合出院的患者来说,模型可以比实际出院时间提前 24 小时以上预测出他们的出院健康状况。患者特征、生命体征和实验室结果均被证明是重要的预测因素。 结论这项概念验证研究表明,利用常用的医院数据,通过机器学习预测急诊科患者的生理状况是否适合出院是可行的。
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来源期刊
International Journal of Medical Informatics
International Journal of Medical Informatics 医学-计算机:信息系统
CiteScore
8.90
自引率
4.10%
发文量
217
审稿时长
42 days
期刊介绍: International Journal of Medical Informatics provides an international medium for dissemination of original results and interpretative reviews concerning the field of medical informatics. The Journal emphasizes the evaluation of systems in healthcare settings. The scope of journal covers: Information systems, including national or international registration systems, hospital information systems, departmental and/or physician''s office systems, document handling systems, electronic medical record systems, standardization, systems integration etc.; Computer-aided medical decision support systems using heuristic, algorithmic and/or statistical methods as exemplified in decision theory, protocol development, artificial intelligence, etc. Educational computer based programs pertaining to medical informatics or medicine in general; Organizational, economic, social, clinical impact, ethical and cost-benefit aspects of IT applications in health care.
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