Department of Cardiology, Beijing Anzhen Hospital, Capital Medical University, Beijing, 100029, PR China.
Department of Thoracic Surgery, Beijing Anzhen Hospital, Capital Medical University, Beijing, 100029, PR China.
Eur J Radiol. 2024 Nov;180:111688. doi: 10.1016/j.ejrad.2024.111688. Epub 2024 Aug 22.
As a non-invasive coronary functional examination, coronary computed tomography angiography (CCTA)-derived fractional flow reserve (CT-FFR) showed predictive value in several non-cardiac surgeries. This study aimed to evaluate the predictive value of CT-FFR in lung cancer surgery.
We retrospectively collected 227 patients from January 2017 to June 2022 and used machine learning-based CT-FFR to evaluate the stable coronary artery disease (CAD) patients undergoing lung cancer surgery. The major adverse cardiac event (MACE) was defined as perioperative myocardial injury (PMI), myocardial infarction, heart failure, atrial and ventricular arrhythmia with hemodynamic disorder, cardiogenic shock and cardiac death. The multivariate logistic regression analysis was performed to identify risk factors for MACE and PMI. The discriminative capacity, goodness-of-fit, and reclassification improvement of prediction model were determined before and after the addition of CT-FFR≤0.8.
The incidence of MACE was 20.7 % and PMI was 15.9 %. CT-FFR significantly outperformed CCTA in terms of accuracy for predicting MACE (0.737 vs 0.524). In the multivariate regression analysis, CT-FFR≤0.8 was an independent risk factor for both MACE [OR=10.77 (4.637, 25.016), P<0.001] and PMI [OR=8.255 (3.372, 20.207), P<0.001]. Additionally, we found that the performance of prediction model for both MACE and PMI improved after the addition of CT-FFR.
CT-FFR can be used to assess the risk of perioperative MACE and PMI in patients with stable CAD undergoing lung cancer surgery. It adds prognostic information in the cardiac evaluation of patients undergoing lung cancer surgery.
作为一种非侵入性的冠状动脉功能检查,冠状动脉计算机断层血管造影(CCTA)衍生的血流储备分数(CT-FFR)在几种非心脏手术中具有预测价值。本研究旨在评估 CT-FFR 在肺癌手术中的预测价值。
我们回顾性地收集了 2017 年 1 月至 2022 年 6 月期间的 227 名患者,并使用基于机器学习的 CT-FFR 评估了接受肺癌手术的稳定型冠心病(CAD)患者。主要不良心脏事件(MACE)定义为围手术期心肌损伤(PMI)、心肌梗死、心力衰竭、伴有血流动力学障碍的心房和心室心律失常、心源性休克和心脏性死亡。进行多变量逻辑回归分析以确定 MACE 和 PMI 的危险因素。在添加 CT-FFR≤0.8 前后,确定预测模型的区分能力、拟合优度和重新分类改善。
MACE 的发生率为 20.7%,PMI 的发生率为 15.9%。与 CCTA 相比,CT-FFR 在预测 MACE(0.737 对 0.524)方面具有更高的准确性。在多变量回归分析中,CT-FFR≤0.8 是 MACE [OR=10.77(4.637,25.016),P<0.001]和 PMI [OR=8.255(3.372,20.207),P<0.001]的独立危险因素。此外,我们发现,在添加 CT-FFR 后,预测模型对 MACE 和 PMI 的性能均得到改善。
CT-FFR 可用于评估接受肺癌手术的稳定型 CAD 患者围手术期 MACE 和 PMI 的风险。它为接受肺癌手术的患者的心脏评估增加了预后信息。