Yan Liyuan, Zhang Jinlong, Chen Le, Zhu Zongcheng, Sheng Xiaodong, Zheng Guanqun, Yuan Jiamin
Department of Cardiology, Affiliated Changshu Hospital of Nantong University, Changshu, Jiangsu, China.
Department of Cardiology, The First People's Hospital of Yancheng, Fourth Affiliated Hospital of Nantong University, Yancheng, Jiangsu, China.
Clin Cardiol. 2025 Jan;48(1):e70071. doi: 10.1002/clc.70071.
The efficiency of machine learning (ML) based predictive models in predicting in-hospital mortality for heart failure (HF) patients is a topic of debate. In this context, this study's objective is to conduct a meta-analysis to compare and assess existing prognostic models designed for predicting in-hospital mortality in HF patients.
A systematic search of databases was conducted, including PubMed, Embase, Web of Science, and Cochrane Library up to January 2023. To ensure comprehensiveness, we performed an additional search in June 2023. The Prediction Model Risk of Bias Assessment Tool was employed to assess the validity and reliability of ML models.
Our analysis incorporated 28 studies involving a total of 106 predictive models based on 14 different ML techniques. In the training data set, these models showed a combined C-index of 0.781, sensitivity of 0.56, and specificity of 0.94. In the validation data set, the models exhibited a combined C-index of 0.758, sensitivity of 0.57, and specificity of 0.84. Logistic regression (LR) was the most frequently used ML algorithm. LR models in the training set had a combined C-index of 0.795, sensitivity of 0.63, and specificity of 0.85, and these measures for LR models in the validation set were 0.751, 0.66, and 0.79, respectively.
Our study indicates that although ML is increasingly being leveraged to predict in-hospital mortality for HF patients, the predictive performance remains suboptimal. Although these models have relatively high C-index and specificity, their ability to predict positive events is limited, as indicated by their low sensitivity.
基于机器学习(ML)的预测模型在预测心力衰竭(HF)患者院内死亡率方面的效率是一个存在争议的话题。在此背景下,本研究的目的是进行一项荟萃分析,以比较和评估为预测HF患者院内死亡率而设计的现有预后模型。
对数据库进行了系统检索,包括截至2023年1月的PubMed、Embase、Web of Science和Cochrane图书馆。为确保全面性,我们在2023年6月进行了额外检索。采用预测模型偏倚风险评估工具来评估ML模型的有效性和可靠性。
我们的分析纳入了28项研究,涉及基于14种不同ML技术的总共106个预测模型。在训练数据集中,这些模型的综合C指数为0.781,敏感性为0.56,特异性为0.94。在验证数据集中,模型的综合C指数为0.758,敏感性为0.57,特异性为0.84。逻辑回归(LR)是最常用的ML算法。训练集中LR模型的综合C指数为0.795,敏感性为0.63,特异性为0.85,验证集中LR模型的这些指标分别为0.751、0.66和0.79。
我们的研究表明,尽管ML越来越多地被用于预测HF患者的院内死亡率,但其预测性能仍不理想。尽管这些模型具有相对较高的C指数和特异性,但正如其低敏感性所示,它们预测阳性事件的能力有限。