Zhao Xueyan, Wang Junmei, Yang Jingang, Chen Tiange, Song Yanan, Li Xiang, Xie Guotong, Gao Xiaojin, Xu Haiyan, Gao Runlin, Yuan Jinqing, Yang Yuejin
National Clinical Research Center for Cardiovascular Diseases, State Key Laboratory of Cardiovascular Disease, Fu Wai Hospital, National Center for Cardiovascular Diseases, Chinese Academy of Medical Sciences & Peking Union Medical College, Beijing, China.
Ping An Healthcare and Technology, Beijing, China.
Ther Adv Chronic Dis. 2023 Mar 4;14:20406223231158561. doi: 10.1177/20406223231158561. eCollection 2023.
Prediction of bleeding is critical for acute myocardial infarction (AMI) patients after percutaneous coronary intervention (PCI). Machine learning methods can automatically select the combination of the important features and learn their underlying relationship with the outcome.
We aimed to evaluate the predictive value of machine learning methods to predict in-hospital bleeding for AMI patients.
We used data from the multicenter China Acute Myocardial Infarction (CAMI) registry. The cohort was randomly partitioned into derivation set (50%) and validation set (50%). We applied a state-of-art machine learning algorithm, eXtreme Gradient Boosting (XGBoost), to automatically select features from 98 candidate variables and developed a risk prediction model to predict in-hospital bleeding (Bleeding Academic Research Consortium [BARC] 3 or 5 definition).
A total of 16,736 AMI patients who underwent PCI were finally enrolled. 45 features were automatically selected and were used to construct the prediction model. The developed XGBoost model showed ideal prediction results. The area under the receiver-operating characteristic curve (AUROC) on the derivation data set was 0.941 (95% CI = 0.909-0.973, < 0.001); the AUROC on the validation set was 0.837 (95% CI = 0.772-0.903, < 0.001), which was better than the CRUSADE score (AUROC: 0.741; 95% CI = 0.654-0.828, < 0.001) and ACUITY-HORIZONS score (AUROC: 0.731; 95% CI = 0.641-0.820, < 0.001). We also developed an online calculator with 12 most important variables (http://101.89.95.81:8260/), and AUROC still reached 0.809 on the validation set.
For the first time, we developed the CAMI bleeding model using machine learning methods for AMI patients after PCI.
NCT01874691. Registered 11 Jun 2013.
对于接受经皮冠状动脉介入治疗(PCI)的急性心肌梗死(AMI)患者,出血预测至关重要。机器学习方法可以自动选择重要特征的组合,并了解它们与结局之间的潜在关系。
我们旨在评估机器学习方法对AMI患者院内出血的预测价值。
我们使用了多中心中国急性心肌梗死(CAMI)注册研究的数据。该队列被随机分为推导集(50%)和验证集(50%)。我们应用一种先进的机器学习算法,极端梯度提升(XGBoost),从98个候选变量中自动选择特征,并开发了一个风险预测模型来预测院内出血(采用出血学术研究联盟[BARC]3或5级定义)。
最终纳入了16736例接受PCI的AMI患者。自动选择了45个特征并用于构建预测模型。所开发的XGBoost模型显示出理想的预测结果。推导数据集上的受试者工作特征曲线下面积(AUROC)为0.941(95%CI = 0.909 - 0.973,P < 0.001);验证集上的AUROC为0.837(95%CI = 0.772 - 0.903,P < 0.001),优于CRUSADE评分(AUROC:0.741;95%CI = 0.654 - 0.828,P < 0.001)和ACUITY - HORIZONS评分(AUROC:0.731;95%CI = 0.641 - 0.820,P < 0.001)。我们还开发了一个包含12个最重要变量的在线计算器(http://101.89.95.81:8260/),验证集上的AUROC仍达到0.809。
我们首次使用机器学习方法为接受PCI后的AMI患者开发了CAMI出血模型。
NCT01874691。于2013年6月11日注册。