Zhu Xuetao, Li Jun, Jiang Yi, Wang Tianqi, Hu Zeping
Department of Cardiology, The First Affiliated Hospital of Anhui Medical University, No. 218 Jixi Road, Hefei, Anhui, 230022, P.R. China.
BMC Cardiovasc Disord. 2025 Mar 27;25(1):224. doi: 10.1186/s12872-025-04581-3.
Systemic embolic events due to exfoliation of intracardiac thrombus (ICT) are one of the catastrophic complications of dilated cardiomyopathy (DCM). This study intended to develop a prediction model to predict the risk of ICT in patients with DCM.
Data from 632 patients with DCM from a hospital was collected. ICT was identified based on the results of transthoracic echocardiography. Basic information, vital signs, comorbidities, and biochemical data were measured and collected from each patient. The least absolute shrinkage and selection operator (LASSO) regression was used for the final model variable screening. Four classifiers including Logistic Regression, support vector machine (SVM), Random Forest, and eXtreme Gradient Boosting (XGBoost) were used for model construction respectively. The area under of the curve (AUC) with 95% confidence interval (CI), sensitivity, specificity, and accuracy of the models were calculated to assess the predictive ability of the models.
Of these 632 DCM patients, 88 (13.92%) had ICT and 544 (86.08%) did not. Eleven clinical variables were selected for the construction of predictive models. The AUC of the Logistic Regression model to predict ICT probability was 0.854 (95%CI: 0.811-0.896), the SVM model was 0.769 (95%CI: 0.715-0.824), the Random Forest model was 0.917 (95%CI: 0.887-0.947), and the XGBoost model was 0.947 (95%CI: 0.924-0.969). The Delong test demonstrated that the XGBoost model had the highest AUC for predicting the ICT probability compared to other models (P < 0.05). Moreover, D-dimer, age, and atrial fibrillation contributed the most to the XGBoost model among these 11 variables.
The XGBoost model has a good predictive ability in predicting ICT risk in patients with DCM and may assist clinicians in identifying ICT risk.
心腔内血栓(ICT)脱落导致的全身性栓塞事件是扩张型心肌病(DCM)的灾难性并发症之一。本研究旨在建立一个预测模型来预测DCM患者发生ICT的风险。
收集了一家医院632例DCM患者的数据。根据经胸超声心动图结果确定ICT。测量并收集每位患者的基本信息、生命体征、合并症和生化数据。使用最小绝对收缩和选择算子(LASSO)回归进行最终模型变量筛选。分别使用逻辑回归、支持向量机(SVM)、随机森林和极端梯度提升(XGBoost)这四种分类器进行模型构建。计算模型的曲线下面积(AUC)及其95%置信区间(CI)、敏感性、特异性和准确性,以评估模型的预测能力。
在这632例DCM患者中,88例(13.92%)发生ICT,544例(86.08%)未发生。选择了11个临床变量用于构建预测模型。逻辑回归模型预测ICT概率的AUC为0.854(95%CI:0.811 - 0.896),SVM模型为0.769(95%CI:0.715 - 0.824),随机森林模型为0.917(95%CI:0.887 - 0.947),XGBoost模型为0.947(95%CI:0.924 - 0.969)。德龙检验表明,与其他模型相比,XGBoost模型预测ICT概率的AUC最高(P < 0.05)。此外,在这11个变量中,D - 二聚体、年龄和心房颤动对XGBoost模型的贡献最大。
XGBoost模型在预测DCM患者ICT风险方面具有良好的预测能力,可能有助于临床医生识别ICT风险。