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基于机器学习的老年重症监护病房患者术后谵妄预测模型的开发:一项回顾性研究。

Development of a Machine Learning-Based Predictive Model for Postoperative Delirium in Older Adult Intensive Care Unit Patients: Retrospective Study.

作者信息

Li Houfeng, Zang Qinglai, Li Qi, Lin Yanchen, Duan Jintao, Huang Jing, Hu Huixiu, Zhang Ying, Xia Dengyun, Zhou Miao

机构信息

Graduate School, Hebei North University, Zhangjiakou, China.

School of Anesthesiology, Naval Medical University, Shanghai, China.

出版信息

J Med Internet Res. 2025 Jun 19;27:e67258. doi: 10.2196/67258.

DOI:10.2196/67258
PMID:40537091
Abstract

BACKGROUND

Delirium is a prevalent phenomenon among patients admitted to the geriatric intensive care unit (ICU) and can adversely impact prognosis and augment the risk of complications.

OBJECTIVE

We aimed to construct and validate a predictive model for postoperative delirium state in older ICU patients, providing timely and effective early identification of high-risk individuals and assisting clinicians in decision-making.

METHODS

The data from patients admitted to the ICU for over 24 hours were extracted from the Medical Information Marketplace for Intensive Care IV (MIMIC-IV) database and the eICU Collaborative Research Database (eICU-CRD). The MIMIC-IV data were split (7:3) into training and internal validation sets, while the eICU-CRD data served as an external validation set. Delirium predictions were conducted for the subsequent prediction windows (12 h, 24 h, 48 h, and whole stay time) using data from the first 24 hours post admission. The corresponding feature variables were subjected to Boruta feature selection, and the prediction models were constructed using logistic regression, support vector classifier, random forest classifier, and extreme gradient boosting (XGB). Subsequently, model performance was evaluated using areas under the receiver operating characteristic curves (AUCs), Brier scores, and decision curve analysis, and external validation.

RESULTS

The MIMIC-IV and eICU-CRD datasets comprised 6129 and 709 patients, respectively, who were included in the analysis. Fifty-four features were selected to construct the predictive model. Regarding internal validation, the XGB model demonstrated the most effective prediction of delirium across different prediction windows. The AUCs for the 4 prediction windows (12 h, 24 h, 48 h, and whole stay time) were 0.848 (95% CI 0.826-0.869), 0.852 (95% CI 0.831-0.872), 0.851 (95% CI 0.831-0.871), and 0.844 (95% CI 0.823-0.863), respectively, and those of the external validation set were 0.777 (95% CI 0.726-0.825), 0.761 (95% CI 0.710-0.808), 0.753 (95% CI 0.704-0.798), and 0.737 (95% CI 0.695-0.777), respectively. Furthermore, the XGB model demonstrated the most accurate calibration across all prediction windows, with values of 0.129, 0.136, 0.144, and 0.148, respectively. Additionally, decision curve analysis revealed that the XGB model outperformed the other models in terms of net gain for the majority of threshold probability values. The 6 most significant predictive features identified were the first day's delirium assessment results, type of first care unit, minimum Glasgow Coma Scale (GCS) score, Acute Physiology Score III, acetaminophen, and nonsteroidal anti-inflammatory drugs.

CONCLUSIONS

The high-performance XGB model for predicting postoperative delirium state in older adult ICU patients has been successfully developed and validated. The model predicts the delirium state at 12 h, 24 h, 48 h, and whole stay time after the first day of hospitalization within the ICU. This enables physicians to identify high-risk patients early, thus facilitating the optimization of personalized management strategies and care plans.

摘要

背景

谵妄在老年重症监护病房(ICU)患者中普遍存在,会对预后产生不利影响,并增加并发症风险。

目的

我们旨在构建并验证老年ICU患者术后谵妄状态的预测模型,以便及时有效地早期识别高危个体,并协助临床医生进行决策。

方法

从重症监护医学信息市场IV(MIMIC-IV)数据库和电子ICU协作研究数据库(eICU-CRD)中提取入住ICU超过24小时患者的数据。MIMIC-IV数据按7:3比例分为训练集和内部验证集,而eICU-CRD数据用作外部验证集。使用入院后前24小时的数据对后续预测窗口(12小时、24小时、48小时和整个住院时间)进行谵妄预测。对相应的特征变量进行Boruta特征选择,并使用逻辑回归、支持向量分类器、随机森林分类器和极端梯度提升(XGB)构建预测模型。随后,使用受试者操作特征曲线下面积(AUC)、Brier评分和决策曲线分析以及外部验证来评估模型性能。

结果

MIMIC-IV和eICU-CRD数据集分别包含6129例和709例患者,纳入分析。选择了54个特征来构建预测模型。关于内部验证,XGB模型在不同预测窗口对谵妄的预测效果最佳。4个预测窗口(12小时、24小时、48小时和整个住院时间)的AUC分别为0.848(95%CI 0.826 - 0.869)、0.852(95%CI 0.831 - 0.872)、0.851(95%CI 0.831 - 0.871)和0.844(95%CI 0.823 - 0.863),外部验证集的AUC分别为0.777(95%CI 0.726 - 0.825)、0.761(95%CI 0.710 - 0.808)、0.753(95%CI 0.704 - 0.798)和0.737(95%CI 0.695 - 0.777)。此外,XGB模型在所有预测窗口的校准最为准确,值分别为0.129、0.136、0.144和0.148。此外,决策曲线分析表明,在大多数阈值概率值方面,XGB模型在净收益方面优于其他模型。确定的6个最显著预测特征为第一天的谵妄评估结果、首个护理单元类型、最低格拉斯哥昏迷量表(GCS)评分、急性生理学评分III、对乙酰氨基酚和非甾体抗炎药。

结论

已成功开发并验证了用于预测老年ICU患者术后谵妄状态的高性能XGB模型。该模型可预测ICU住院第一天后12小时、24小时、48小时和整个住院时间内的谵妄状态。这使医生能够早期识别高危患者,从而有助于优化个性化管理策略和护理计划。

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