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利用历史电子病历预测住院死亡率、再入院率和延长住院时间风险

In-hospital mortality, readmission, and prolonged length of stay risk prediction leveraging historical electronic patient records.

作者信息

Bopche Rajeev, Gustad Lise Tuset, Afset Jan Egil, Ehrnström Birgitta, Damås Jan Kristian, Nytrø Øystein

机构信息

Department of Computer Science, Norwegian University of Science and Technology, Trondheim, 7491, Norway.

Faculty of Nursing and Health Sciences, Nord University, Levanger, 7600, Norway.

出版信息

JAMIA Open. 2024 Sep 14;7(3):ooae074. doi: 10.1093/jamiaopen/ooae074. eCollection 2024 Oct.

Abstract

OBJECTIVE

This study aimed to investigate the predictive capabilities of historical patient records to predict patient adverse outcomes such as mortality, readmission, and prolonged length of stay (PLOS).

METHODS

Leveraging a de-identified dataset from a tertiary care university hospital, we developed an eXplainable Artificial Intelligence (XAI) framework combining tree-based and traditional machine learning (ML) models with interpretations and statistical analysis of predictors of mortality, readmission, and PLOS.

RESULTS

Our framework demonstrated exceptional predictive performance with a notable area under the receiver operating characteristic (AUROC) of 0.9625 and an area under the precision-recall curve (AUPRC) of 0.8575 for 30-day mortality at discharge and an AUROC of 0.9545 and AUPRC of 0.8419 at admission. For the readmission and PLOS risk, the highest AUROC achieved were 0.8198 and 0.9797, respectively. The tree-based models consistently outperformed the traditional ML models in all 4 prediction tasks. The key predictors were age, derived temporal features, routine laboratory tests, and diagnostic and procedural codes.

CONCLUSION

The study underscores the potential of leveraging medical history for enhanced hospital predictive analytics. We present an accurate and intuitive framework for early warning models that can be easily implemented in the current and developing digital health platforms to predict adverse outcomes accurately.

摘要

目的

本研究旨在调查历史患者记录预测患者不良结局(如死亡率、再入院率和住院时间延长)的预测能力。

方法

利用一家三级医疗大学医院的去识别数据集,我们开发了一个可解释人工智能(XAI)框架,该框架将基于树的模型和传统机器学习(ML)模型与死亡率、再入院率和住院时间延长的预测因素的解释及统计分析相结合。

结果

我们的框架展示了卓越的预测性能,出院时30天死亡率的受试者工作特征曲线下面积(AUROC)显著为0.9625,精确召回率曲线下面积(AUPRC)为0.8575,入院时AUROC为0.9545,AUPRC为0.8419。对于再入院和住院时间延长风险,所达到的最高AUROC分别为0.8198和0.9797。在所有4项预测任务中,基于树的模型始终优于传统ML模型。关键预测因素为年龄、派生的时间特征、常规实验室检查以及诊断和程序代码。

结论

该研究强调了利用病史增强医院预测分析的潜力。我们提出了一个准确且直观的早期预警模型框架,该框架可轻松应用于当前及正在发展的数字健康平台,以准确预测不良结局。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3dca/11401612/f548a833e1e8/ooae074f1.jpg

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