Song Xuewu, Tong Yitong, Luo Yi, Chang Huan, Gao Guangjie, Dong Ziyi, Wu Xingwei, Tong Rongsheng
Department of Pharmacy, Sichuan Provincial People's Hospital, University of Electronic Science and Technology of China, Chengdu, China.
Chinese Academy of Sciences Sichuan Translational Medicine Research Hospital, Chengdu, China.
Front Cardiovasc Med. 2023 Aug 8;10:1190038. doi: 10.3389/fcvm.2023.1190038. eCollection 2023.
Short-term unplanned readmission is always neglected, especially for elderly patients with coronary heart disease (CHD). However, tools to predict unplanned readmission are lacking. This study aimed to establish the most effective predictive model for the unplanned 7-day readmission in elderly CHD patients using machine learning (ML) algorithms.
The detailed clinical data of elderly CHD patients were collected retrospectively. Five ML algorithms, including extreme gradient boosting (XGB), random forest, multilayer perceptron, categorical boosting, and logistic regression, were used to establish predictive models. We used the area under the receiver operating characteristic curve (AUC), accuracy, precision, recall, the F1 value, the Brier score, the area under the precision-recall curve (AUPRC), and the calibration curve to evaluate the performance of ML models. The SHapley Additive exPlanations (SHAP) value was used to interpret the best model.
The final study included 834 elderly CHD patients, whose average age was 73.5 ± 8.4 years, among whom 426 (51.08%) were men and 139 had 7-day unplanned readmissions. The XGB model had the best performance, exhibiting the highest AUC (0.9729), accuracy (0.9173), F1 value (0.9134), and AUPRC (0.9766). The Brier score of the XGB model was 0.08. The calibration curve of the XGB model showed good performance. The SHAP method showed that fracture, hypertension, length of stay, aspirin, and D-dimer were the most important indicators for the risk of 7-day unplanned readmissions. The top 10 variables were used to build a compact XGB, which also showed good predictive performance.
In this study, five ML algorithms were used to predict 7-day unplanned readmissions in elderly patients with CHD. The XGB model had the best predictive performance and potential clinical application perspective.
短期非计划再入院一直被忽视,尤其是对于老年冠心病(CHD)患者。然而,缺乏预测非计划再入院的工具。本研究旨在使用机器学习(ML)算法建立老年冠心病患者7天非计划再入院的最有效预测模型。
回顾性收集老年冠心病患者的详细临床数据。使用包括极端梯度提升(XGB)、随机森林、多层感知器、分类提升和逻辑回归在内的五种ML算法建立预测模型。我们使用受试者操作特征曲线下面积(AUC)、准确率、精确率、召回率、F1值、布里尔评分、精确率-召回率曲线下面积(AUPRC)和校准曲线来评估ML模型的性能。使用夏普利值加法解释(SHAP)值来解释最佳模型。
最终研究纳入834例老年冠心病患者,平均年龄为73.5±8.4岁,其中426例(51.08%)为男性,139例有7天非计划再入院。XGB模型表现最佳,AUC最高(0.9729)、准确率(0.9173)、F1值(0.9134)和AUPRC(0.9766)。XGB模型布里尔评分为0.08。XGB模型的校准曲线表现良好。SHAP方法显示骨折、高血压、住院时间、阿司匹林和D-二聚体是7天非计划再入院风险的最重要指标。使用前10个变量构建了一个精简的XGB,其也显示出良好的预测性能。
在本研究中,使用五种ML算法预测老年冠心病患者7天非计划再入院。XGB模型具有最佳的预测性能和潜在的临床应用前景。