Department of Radiology, Sir Run Run Shaw Hospital, Zhejiang University School of Medicine, 3 East Qingchun Road, Hangzhou, Zhejiang, 310010, China.
Siemens Healthineers China, No.278, Road Zhouzhu, Shanghai, 201314, China.
Eur J Radiol. 2021 Jul;140:109769. doi: 10.1016/j.ejrad.2021.109769. Epub 2021 May 9.
This study aimed to investigate the diagnostic performance of radiomics features derived from coronary computed tomography angiography (CCTA) in the identification of ischemic coronary stenosis plaque using invasive fractional flow reserve (FFR) as the reference standard.
174 plaques of 149 patients (age: 62.21 ± 8.47 years, 96 males) with at least one lesion stenosis degree between 30 % and 90 % were retrospectively included. Stenosis degree and plaque characteristics were recorded, and a conventional multivariate logistic model was established. Over 1000 radiomics features of the plaque were derived from CCTA images. The plaques were randomly divided into training set (n = 139) and validation set (n = 35). A random forest model was built. The area under the curve (AUC) of the models was compared.
Fifty-eight radiomics features were correlated with functionally significant stenosis (p < 0.05), wherein 56 features had an AUC of >0.6. NCP volume, NRS, remodeling index, and spotty calcification were included in the conventional model. Ultimately, 14 features were integrated to build the radiomics model. The AUC showed an improvement: 0.71 vs 0.82 for the training set and 0.70 vs 0.77 for the validation set (conventional model and radiomics model, respectively); however, it was not statistically significant (p = 0.58).
The radiomics analysis of plaques showed improvement compared with conventional plaques assessment in identifying hemodynamically significant coronary stenosis. The statistical advancement of machine learning for plaques to predict hemodynamic stenosis with a noninvasive approach still needs further studies on a large-scale dataset.
本研究旨在通过以有创性血流储备分数(FFR)作为参考标准,探讨基于冠状动脉 CT 血管造影(CCTA)的影像组学特征对缺血性冠状动脉狭窄斑块的诊断性能。
回顾性纳入了 149 例患者的 174 个斑块,患者年龄为(62.21±8.47)岁,其中男性 96 例,至少有一个病变狭窄程度在 30%至 90%之间。记录狭窄程度和斑块特征,并建立传统的多变量逻辑模型。从 CCTA 图像中提取了超过 1000 个斑块的影像组学特征。将斑块随机分为训练集(n=139)和验证集(n=35)。建立随机森林模型。比较模型的曲线下面积(AUC)。
58 个影像组学特征与功能意义上的狭窄相关(p<0.05),其中 56 个特征的 AUC>0.6。NCP 体积、NRS、重构指数和斑点状钙化纳入了传统模型。最终,整合了 14 个特征构建了影像组学模型。AUC 有所提高:训练集为 0.71 对 0.82,验证集为 0.70 对 0.77(分别为传统模型和影像组学模型);但无统计学意义(p=0.58)。
与传统斑块评估相比,斑块的影像组学分析在识别血流动力学意义上的冠状动脉狭窄方面有所提高。使用非侵入性方法,机器学习对斑块进行统计学上的进展,以预测血流动力学狭窄,仍需要在更大规模的数据集上进行进一步研究。