预测重症患者术后住院时间的机器学习模型的可解释预测:机器学习模型的开发与评估。

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS BMC Medical Informatics and Decision Making Pub Date : 2024-11-20 DOI:10.1186/s12911-024-02755-1
Ha Na Cho, Imjin Ahn, Hansle Gwon, Hee Jun Kang, Yunha Kim, Hyeram Seo, Heejung Choi, Minkyoung Kim, Jiye Han, Gaeun Kee, Seohyun Park, Tae Joon Jun, Young-Hak Kim
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引用次数: 0

摘要

背景:提前预测住院时间不仅能使医院在临床和经济上受益,还能使医疗服务提供者更好地做出决策,从而提高医疗质量。更重要的是,了解需要全身麻醉的重症患者的住院时间是提高医疗效果的关键。目的:在此,我们旨在探索机器学习如何支持住院时间预测所带来的资源分配管理和决策:从 2018 年 1 月至 2020 年 10 月进行了一项回顾性队列研究。共收集了 24 万份患者病历。为准确分析影响术后住院时间的预测因素,专门收集了术前变量数据。本研究的主要结果是分析手术后到出院前的住院时间(天数)。预测采用了脊回归、随机森林、XGBoost 和多层感知器神经网络模型:结果:XGBoost 的效果最好,平均误差在 3 天以内。此外,我们还解释了每个特征对 XGBoost 模型的贡献,并进一步显示了影响患者层面整体预测结果的不同预测因素。对术后住院时间影响最大的风险因素如下:直接胆红素实验室检测、科室变更、氯化钙药物、性别和切除其他器官的诊断。我们的研究结果表明,医疗服务提供者应将实验室血液检测、患者分布和术前用药等风险因素考虑在内:我们成功地预测了手术后的住院时间,并提供了可解释的模型和辅助分析。总之,我们通过 XGBoost 模型展示了对术前特征的解释,并定义了住院时间结果的高风险预测因素。我们开发的可解释模型支持当前对电子病历中未来住院时间预测的深入了解,有助于手术部门的决策和便利性。
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Explainable predictions of a machine learning model to forecast the postoperative length of stay for severe patients: machine learning model development and evaluation.

Background: Predicting the length of stay in advance will not only benefit the hospitals both clinically and financially but enable healthcare providers to better decision-making for improved quality of care. More importantly, understanding the length of stay of severe patients who require general anesthesia is key to enhancing health outcomes.

Objective: Here, we aim to discover how machine learning can support resource allocation management and decision-making resulting from the length of stay prediction.

Methods: A retrospective cohort study was conducted from January 2018 to October 2020. A total cohort of 240,000 patients' medical records was collected. The data were collected exclusively for preoperative variables to accurately analyze the predictive factors impacting the postoperative length of stay. The main outcome of this study is an analysis of the length of stay (in days) after surgery until discharge. The prediction was performed with ridge regression, random forest, XGBoost, and multi-layer perceptron neural network models.

Results: The XGBoost resulted in the best performance with an average error within 3 days. Moreover, we explain each feature's contribution over the XGBoost model and further display distinct predictors affecting the overall prediction outcome at the patient level. The risk factors that most importantly contributed to the stay after surgery were as follows: a direct bilirubin laboratory test, department change, calcium chloride medication, gender, and diagnosis with the removal of other organs. Our results suggest that healthcare providers take into account the risk factors such as the laboratory blood test, distributing patients, and the medication prescribed prior to the surgery.

Conclusion: We successfully predicted the length of stay after surgery and provide explainable models with supporting analyses. In summary, we demonstrate the interpretation with the XGBoost model presenting insights on preoperative features and defining higher risk predictors to the length of stay outcome. Our development in explainable models supports the current in-depth knowledge for the future length of stay prediction on electronic medical records that aids the decision-making and facilitation of the operation department.

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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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