Heart Failure Center, State Key Laboratory of Cardiovascular Disease, Fuwai Hospital, National Center for Cardiovascular Disease, Chinese Academy of Medical Science, Peking Union Medical College Beijing China.
Key Laboratory of Clinical Research for Cardiovascular Medications, National Health Committee Beijing China.
J Am Heart Assoc. 2023 Jun 20;12(12):e029124. doi: 10.1161/JAHA.122.029124. Epub 2023 Jun 10.
Background Machine-learning-based prediction models (MLBPMs) have shown satisfactory performance in predicting clinical outcomes in patients with heart failure with reduced and preserved ejection fraction. However, their usefulness has yet to be fully elucidated in patients with heart failure with mildly reduced ejection fraction. This pilot study aims to evaluate the prediction performance of MLBPMs in a heart failure with mildly reduced ejection fraction cohort with long-term follow-up data. Methods and Results A total of 424 patients with heart failure with mildly reduced ejection fraction were enrolled in our study. The primary outcome was all-cause mortality. Two feature selection strategies were introduced for MLBPM development. The "All-in" (67 features) strategy was based on feature correlation, multicollinearity, and clinical significance. The other strategy was the CoxBoost algorithm with 10-fold cross-validation (17 features), which was based on the selection result of the "All-in" strategy. Six MLBPMs with 5-fold cross-validation based on the "All-in" and the CoxBoost algorithm with 10-fold cross-validation strategy were developed by the eXtreme Gradient Boosting, random forest, and support vector machine algorithms. The logistic regression model with 14 benchmark predictors was used as a reference model. During a median follow-up of 1008 (750, 1937) days, 121 patients met the primary outcome. Overall, MLBPMs outperformed the logistic model. The "All-in" eXtreme Gradient Boosting model had the best performance, with an accuracy of 85.4% and a precision of 70.3%. The area under the receiver-operating characteristic curve was 0.916 (95% CI, 0.887-0.945). The Brier score was 0.12. Conclusions The MLBPMs could significantly improve outcome prediction in patients with heart failure with mildly reduced ejection fraction, which would further optimize the management of these patients.
基于机器学习的预测模型(MLBPM)在预测射血分数降低和保留的心力衰竭患者的临床结局方面表现出令人满意的性能。然而,它们在射血分数轻度降低的心力衰竭患者中的实用性尚未得到充分阐明。这项初步研究旨在评估具有长期随访数据的射血分数轻度降低的心力衰竭患者中 MLBPM 的预测性能。
我们的研究纳入了 424 例射血分数轻度降低的心力衰竭患者。主要结局是全因死亡率。为了开发 MLBPM,我们引入了两种特征选择策略。“全选”(67 个特征)策略基于特征相关性、多重共线性和临床意义。另一种策略是基于“全选”策略选择结果的 CoxBoost 算法(10 折交叉验证,17 个特征)。基于“全选”和 CoxBoost 算法(10 折交叉验证)策略的 5 折交叉验证,使用极端梯度提升、随机森林和支持向量机算法开发了 6 个 MLBPM。逻辑回归模型(14 个基准预测因子)作为参考模型。在中位数为 1008(750,1937)天的随访期间,121 例患者达到了主要结局。总体而言,MLBPM 优于逻辑模型。“全选”极端梯度提升模型表现最佳,准确率为 85.4%,精密度为 70.3%。接收者操作特征曲线下的面积为 0.916(95%CI,0.887-0.945)。Brier 评分 0.12。
MLBPM 可显著改善射血分数轻度降低的心力衰竭患者的结局预测,从而进一步优化这些患者的管理。