From the MTA-SE Cardiovascular Imaging Research Group, Heart and Vascular Center, Semmelweis University, 68 Varosmajor St, 1122 Budapest, Hungary (M.K., J.K., B.M., P.M.H.); Department of Radiology, Massachusetts General Hospital, Harvard Medical School, Boston, Mass (J.K., Y.K., A.I., M.T.L., B.F., H.J.A., U.H.); Center for Cause of Death Investigation, Faculty of Medicine, Hokkaido University, Hokkaido, Japan (Y.K.); Department for Diagnostic and Interventional Radiology, Medical Center-University of Freiburg, Freiburg, Germany (C.L.S.); and Department of Radiation Oncology, Dana-Farber Cancer Institute, Brigham and Women's Hospital, Harvard Medical School, Boston, Mass (H.J.A.).
Radiology. 2019 Oct;293(1):89-96. doi: 10.1148/radiol.2019190407. Epub 2019 Aug 6.
Background Visual and histogram-based assessments of coronary CT angiography have limited accuracy in the identification of advanced lesions. Radiomics-based machine learning (ML) could provide a more accurate tool. Purpose To compare the diagnostic performance of radiomics-based ML with that of visual and histogram-based assessment of ex vivo coronary CT angiography cross sections to identify advanced atherosclerotic lesions defined with histologic examination. Materials and Methods In this prospective study, 21 coronary arteries from seven hearts obtained from male donors (mean age, 52.3 years ± 5.3) were imaged ex vivo with coronary CT angiography between February 23, 2009, and July 31, 2010. From 95 coronary plaques, 611 histologic cross sections were coregistered with coronary CT cross sections. Lesions were considered advanced if early fibroatheroma, late fibroatheroma, or thin-cap atheroma was present. CT cross sections were classified as showing homogeneous, heterogeneous, or napkin-ring sign plaques on the basis of visual assessment. The area of low attenuation (<30 HU) and the average Hounsfield unit were quantified. Radiomic parameters were extracted and used as inputs to ML algorithms. Eight radiomics-based ML models were trained on randomly selected cross sections (training set, 75% of the cross sections) to identify advanced lesions. Visual assessment, histogram-based assessment, and the best ML model were compared on the remaining 25% of the data (validation set) by using the area under the receiver operating characteristic curve (AUC) to identify advanced lesions. Results After excluding sections with no visible plaque ( = 134) and with heavy calcium ( = 32), 445 cross sections were analyzed. Of those 445 cross sections, 134 (30.1%) were advanced lesions. Visual assessment of the 445 cross sections indicated that 207 (46.5%) were homogeneous, 200 (44.9%) were heterogeneous, and 38 (8.5%) demonstrated the napkin-ring sign. A radiomics-based ML model incorporating 13 parameters outperformed visual assessment (AUC = 0.73 with 95% confidence interval [CI] of 0.63, 0.84 vs 0.65 with 95% CI of 0.56, 0.73, respectively; = .04), area of low attenuation (AUC = 0.55 with 95% CI of 0.42, 0.68; = .01), and average Hounsfield unit (AUC = 0.53 with 95% CI of 0.42, 0.65; = .004) in the identification of advanced atheromatous lesions. Conclusion Radiomics-based machine learning analysis improves the discriminatory power of coronary CT angiography in the identification of advanced atherosclerotic lesions. Published under a CC BY 4.0 license.
背景 冠状动脉 CT 血管造影的视觉和基于直方图的评估在识别高级病变方面准确性有限。基于放射组学的机器学习(ML)可能提供更准确的工具。
目的 比较基于放射组学的 ML 与基于视觉和基于直方图的冠状动脉 CT 血管造影横截面评估,以识别通过组织学检查定义的高级动脉粥样硬化病变的诊断性能。
材料与方法 本前瞻性研究共纳入 7 名男性供体(平均年龄 52.3 岁±5.3 岁)的 21 个冠状动脉,于 2009 年 2 月 23 日至 2010 年 7 月 31 日进行冠状动脉 CT 血管造影术的离体成像。从 95 个冠状动脉斑块中,对 611 个组织学横截面进行了核心配准。如果存在早期纤维粥样瘤、晚期纤维粥样瘤或薄帽粥样瘤,则认为病变为高级病变。基于视觉评估,CT 横截面被分类为显示均匀、不均匀或餐巾环样斑块。量化低衰减区(<30 HU)的面积和平均亨氏单位。提取放射组学参数并用作 ML 算法的输入。基于随机选择的横截面(训练集,横截面的 75%)训练了 8 个基于放射组学的 ML 模型,以识别高级病变。使用受试者工作特征曲线下面积(AUC)比较其余 25%的横截面(验证集)上的视觉评估、基于直方图的评估和最佳 ML 模型,以识别高级病变。
结果 在排除了无可见斑块( = 134)和重度钙( = 32)的节段后,共分析了 445 个横截面。在这 445 个横截面上,有 134 个(30.1%)为高级病变。对 445 个横截面的视觉评估表明,207 个(46.5%)为均匀,200 个(44.9%)为不均匀,38 个(8.5%)表现为餐巾环样。纳入 13 个参数的基于放射组学的 ML 模型优于视觉评估(AUC = 0.73,95%置信区间 [CI]为 0.63,0.84 与 0.65,95%CI 为 0.56,0.73,分别为 0.04)、低衰减区面积(AUC = 0.55,95%CI 为 0.42,0.68, =.01)和平均亨氏单位(AUC = 0.53,95%CI 为 0.42,0.65, =.004),用于识别高级粥样硬化病变。
结论 基于放射组学的机器学习分析提高了冠状动脉 CT 血管造影术在识别高级动脉粥样硬化病变方面的鉴别能力。根据知识共享署名 4.0 国际许可协议发布。