Department of Radiology, The Second Affiliated Hospital of Nantong University, Nantong, China.
Department of Biomedical Engineering, The Hong Kong Polytechnical University, Hong Kong, China.
Med Phys. 2024 Nov;51(11):8348-8361. doi: 10.1002/mp.17324. Epub 2024 Jul 23.
The evolution of coronary atherosclerotic heart disease (CAD) is intricately linked to alterations in the pericoronary adipose tissue (PCAT). In recent epochs, characteristics of the PCAT have progressively ascended as focal points of research in CAD risk stratification and individualized clinical decision-making. Harnessing radiomic methodologies allows for the meticulous extraction of imaging features from these adipose deposits. Coupled with machine learning paradigms, we endeavor to establish predictive models for the onset of major adverse cardiovascular events (MACE).
To appraise the predictive utility of radiomic features of PCAT derived from coronary computed tomography angiography (CCTA) in forecasting MACE.
We retrospectively incorporated data from 314 suspected or confirmed CAD patients admitted to our institution from June 2019 to December 2022. An additional cohort of 242 patients from two external institutions was encompassed for external validation. The endpoint under consideration was the occurrence of MACE after a 1-year follow-up. MACE was delineated as cardiovascular mortality, newly diagnosed myocardial infarction, hospitalization (or re-hospitalization) for heart failure, and coronary target vessel revascularization occurring more than 30 days post-CCTA examination. All enrolled patients underwent CCTA scanning. Radiomic features were meticulously extracted from the optimal diastolic phase axial slices of CCTA images. Feature reduction was achieved through a composite feature selection algorithm, laying the groundwork for the radiomic signature model. Both univariate and multivariate analyses were employed to assess clinical variables. A multifaceted logistic regression analysis facilitated the crafting of a clinical-radiological-radiomic combined model (or nomogram). Receiver operating characteristic (ROC) curves, calibration, and decision curve analyses (DCA) were delineated, with the area under the ROC curve (AUCs) computed to gauge the predictive prowess of the clinical model, radiomic model, and the synthesized ensemble.
A total of 12 radiomic features closely associated with MACE were identified to establish the radiomic model. Multivariate logistic regression results demonstrated that smoking, age, hypertension, and dyslipidemia were significantly correlated with MACE. In the integrated nomogram, which amalgamated clinical, imaging, and radiomic parameters, the diagnostic performance was as follows: 0.970 AUC, 0.949 accuracy (ACC), 0.833 sensitivity (SEN), 0.981 specificity (SPE), 0.926 positive predictive value (PPV), and 0.955 negative predictive value (NPV). The calibration curve indicated a commendable concordance of the nomogram, and the decision curve analysis underscored its superior clinical utility.
The integration of radiomic signatures from PCAT based on CCTA, clinical indices, and imaging parameters into a nomogram stands as a promising instrument for prognosticating MACE events.
冠状动脉粥样硬化性心脏病(CAD)的演变与冠状脂肪组织(PCAT)的变化密切相关。在最近的时期,PCAT 的特征逐渐成为 CAD 风险分层和个体化临床决策的研究焦点。利用放射组学方法可以从这些脂肪沉积物中精细地提取成像特征。结合机器学习范式,我们努力建立用于预测主要不良心血管事件(MACE)的预测模型。
评估源自冠状动脉计算机断层扫描血管造影术(CCTA)的 PCAT 的放射组学特征对预测 MACE 的预测能力。
我们回顾性纳入了 2019 年 6 月至 2022 年 12 月期间我院收治的 314 例疑似或确诊 CAD 患者的数据。还纳入了来自两个外部机构的 242 例额外患者进行外部验证。考虑的终点是在 1 年随访后发生 MACE。MACE 定义为心血管死亡、新发心肌梗死、心力衰竭住院(或再住院)和 CCTA 检查后 30 天以上发生的冠状动脉靶血管血运重建。所有入组患者均接受 CCTA 扫描。从 CCTA 图像的最佳舒张期轴向切片中精细提取放射组学特征。通过复合特征选择算法实现特征减少,为放射组学特征模型奠定基础。使用单变量和多变量分析评估临床变量。使用多因素逻辑回归分析构建临床放射学放射组学联合模型(或列线图)。描绘了接受者操作特征(ROC)曲线、校准和决策曲线分析(DCA),计算 ROC 曲线下面积(AUC)以评估临床模型、放射组学模型和综合模型的预测能力。
确定了与 MACE 密切相关的 12 个放射组学特征,以建立放射组学模型。多变量逻辑回归结果表明,吸烟、年龄、高血压和血脂异常与 MACE 显著相关。在综合列线图中,整合了临床、影像和放射组学参数,诊断性能如下:0.970 AUC、0.949 准确性(ACC)、0.833 敏感性(SEN)、0.981 特异性(SPE)、0.926 阳性预测值(PPV)和 0.955 阴性预测值(NPV)。校准曲线表明列线图具有良好的一致性,决策曲线分析强调了其优越的临床实用性。
将基于 CCTA 的 PCAT 的放射组学特征、临床指标和影像参数整合到列线图中,是一种有前途的预测 MACE 事件的工具。