Zhang Qian, Zheng Peng, Pan Yang, Li Luo, Yang Changqing, Wu Hengfang, Bian Zhiping, Zhao Sheng, Chen Xiangjian
Department of Cardiology, The First Affiliated Hospital with Nanjing Medical University, 300 Guangzhou Road, Nanjing, Jiangsu, 210029, China.
Department of Cardiology, Affiliated Nanjing Brain Hospital of Nanjing Medical University, 215 Guangzhou Road, Nanjing, Jiangsu, 210029, China.
J Cardiothorac Surg. 2025 Aug 28;20(1):347. doi: 10.1186/s13019-025-03571-y.
Intra-aortic balloon pump (IABP) implantation in the perioperative period of cardiac surgery is an auxiliary treatment for cardiogenic shock. However, there is a lack of effective prediction models for preoperative IABP implantation.
This study was designed to build machine learning algorithm-based models for early predicting risk factors of preoperative IABP implantation in patients who underwent coronary artery bypass grafting (CABG) surgery.
Patients undergoing CABG were retrospectively enrolled from the hospital between January 2015 and March 2024 and divided into the preoperative and non-preoperative (including intraoperative and postoperative) IABP implantation groups. After feature selection by the cross-validation least absolute shrinkage and selection operator (LassoCV) algorithm, machine learning models were developed. The final model was considered according to its discrimination, including area under the receiver operating characteristic curve (AUC) and kolmogorov-smirnov (KS) plot.
The preoperative IABP group enrolled 95 (40.3%) patients. The Gaussian Naïve Bayes (GNB) model achieved the most excellent prediction ability based on its highest AUC of 0.76 (0.69-0.82) in the training set, 0.72 (0.49-0.94) in the validation set, and good KS plot and identified the top six features. The SHapley Additive exPlanations force analysis further illustrated visualized individualized prediction of preoperative IABP implantation.
Our study suggests that the GNB model achieved superior performance compared to others in predicting preoperative IABP implantation in patients undergoing CABG surgery. This may contribute to risk-prediction and decision-making in clinical practice.
心脏手术围术期植入主动脉内球囊反搏(IABP)是治疗心源性休克的一种辅助手段。然而,目前缺乏有效的术前IABP植入预测模型。
本研究旨在构建基于机器学习算法的模型,用于早期预测接受冠状动脉旁路移植术(CABG)患者术前IABP植入的危险因素。
回顾性纳入2015年1月至2024年3月在我院接受CABG的患者,并分为术前IABP植入组和非术前IABP植入组(包括术中及术后)。通过交叉验证最小绝对收缩和选择算子(LassoCV)算法进行特征选择后,建立机器学习模型。根据其判别能力,包括受试者操作特征曲线下面积(AUC)和Kolmogorov-Smirnov(KS)图来考虑最终模型。
术前IABP组纳入95例(40.3%)患者。高斯朴素贝叶斯(GNB)模型表现出最出色的预测能力,其在训练集中的AUC最高,为0.76(0.69 - 0.82),在验证集中为0.72(0.49 - 0.94),KS图良好,并识别出前六个特征。SHapley加法解释力分析进一步说明了术前IABP植入的可视化个体化预测。
我们的研究表明,在预测接受CABG手术患者的术前IABP植入方面,GNB模型比其他模型表现更优。这可能有助于临床实践中的风险预测和决策。