Li Xiaole, Wang Zishuo, Wang Siyi, Chen Wensu, Li Chengzong, Zhang Yinyang, Sun Aiyun, Xie Lixiang, Hu Chunfeng
Department of Radiology, The Affiliated Hospital of Xuzhou Medical University, Xuzhou, China.
Department of Cardiology, The Affiliated Hospital of Xuzhou Medical University, Xuzhou, China.
Quant Imaging Med Surg. 2024 Dec 5;14(12):9306-9322. doi: 10.21037/qims-24-1393. Epub 2024 Nov 29.
Radiofrequency catheter ablation (RFCA) represents an important treatment option for atrial fibrillation (AF); however, the recurrence rate following surgery is relatively high. This study aimed to predict the recurrence of AF after RFCA using interpretable machine learning models that combined the triglyceride-glucose (TyG) index and the quantification of left atrial epicardial and pericoronary adipose tissue.
This retrospective study included 325 patients with AF who underwent their first successful RFCA, among whom 79 had confirmed recurrence. The preoperative clinical data of patients were collected, the TyG index was calculated, and computed tomography (CT) image features were quantitatively measured. Multivariate Cox regression analysis was used to identify the independent risk factors for RFCA recurrence, and adjustments being made for various confounding factors. subgroup analysis was conducted to evaluate the predictive value of the TyG index for recurrence in different patient subgroups. Prediction models based on six machine learning algorithms were constructed. The optimal model's features were evaluated using Shapley additive explanations (SHAP).
After adjustment were made for various confounding factors such as comorbidities of AF, Cox regression showed that the volume of left atrial epicardial adipose tissue (LA-EAT), LA-EAT attenuation, left circumflex coronary artery fat attenuation index (LCX-FAI), and the TyG index were independent risk factors for recurrence after RFCA (P<0.001). The support vector machine (SVM) model based on these combined indicators had the best predictive performance, with an area under the curve of 0.793 [95% confidence interval (CI): 0.782-0.805] in the validation set, while its accuracy and positive predictive value were 0.804 and 0.710, respectively. The predictive efficiency of the TyG index appeared to be independent of type 2 diabetes mellitus (T2DM) status (P=0.660).
The SVM model that integrated the TyG index and quantitative CT imaging variables demonstrated good predictive ability for post-RFCA recurrence in patients with AF. Furthermore, the TyG index appeared capable of predicting recurrence independently of T2DM status.
射频导管消融术(RFCA)是治疗心房颤动(AF)的重要选择;然而,术后复发率相对较高。本研究旨在使用结合甘油三酯-葡萄糖(TyG)指数以及左心耳心外膜和冠状动脉周围脂肪组织定量分析的可解释机器学习模型预测RFCA术后AF的复发情况。
本项回顾性研究纳入325例首次成功接受RFCA的AF患者,其中79例确诊复发。收集患者术前临床数据,计算TyG指数,并定量测量计算机断层扫描(CT)图像特征。采用多因素Cox回归分析确定RFCA复发的独立危险因素,并对各种混杂因素进行校正。进行亚组分析以评估TyG指数在不同患者亚组中对复发的预测价值。构建基于六种机器学习算法的预测模型。使用Shapley加性解释(SHAP)评估最佳模型的特征。
校正AF合并症等各种混杂因素后,Cox回归显示左心耳心外膜脂肪组织(LA-EAT)体积、LA-EAT衰减、左旋支冠状动脉脂肪衰减指数(LCX-FAI)和TyG指数是RFCA术后复发的独立危险因素(P<0.001)。基于这些综合指标的支持向量机(SVM)模型具有最佳预测性能,在验证集中曲线下面积为0.793 [95%置信区间(CI):0.782-0.805],而其准确率和阳性预测值分别为0.804和0.710。TyG指数的预测效率似乎独立于2型糖尿病(T2DM)状态(P = 0.660)。
整合TyG指数和定量CT成像变量的SVM模型对AF患者RFCA术后复发具有良好的预测能力。此外,TyG指数似乎能够独立于T2DM状态预测复发情况。