Kang Dongwoo, Dey Damini, Slomka Piotr J, Arsanjani Reza, Nakazato Ryo, Ko Hyunsuk, Berman Daniel S, Li Debiao, Kuo C-C Jay
University of Southern California , Department of Electrical Engineering, Los Angeles, California 90089, United States.
Cedars-Sinai Medical Center , Biomedical Imaging Research Institute, Department of Biomedical Sciences, Los Angeles, California 90048, United States.
J Med Imaging (Bellingham). 2015 Jan;2(1):014003. doi: 10.1117/1.JMI.2.1.014003. Epub 2015 Mar 6.
Visual identification of coronary arterial lesion from three-dimensional coronary computed tomography angiography (CTA) remains challenging. We aimed to develop a robust automated algorithm for computer detection of coronary artery lesions by machine learning techniques. A structured learning technique is proposed to detect all coronary arterial lesions with stenosis [Formula: see text]. Our algorithm consists of two stages: (1) two independent base decisions indicating the existence of lesions in each arterial segment and (b) the final decision made by combining the base decisions. One of the base decisions is the support vector machine (SVM) based learning algorithm, which divides each artery into small volume patches and integrates several quantitative geometric and shape features for arterial lesions in each small volume patch by SVM algorithm. The other base decision is the formula-based analytic method. The final decision in the first stage applies SVM-based decision fusion to combine the two base decisions in the second stage. The proposed algorithm was applied to 42 CTA patient datasets, acquired with dual-source CT, where 21 datasets had 45 lesions with stenosis [Formula: see text]. Visual identification of lesions with stenosis [Formula: see text] by three expert readers, using consensus reading, was considered as a reference standard. Our method performed with high sensitivity (93%), specificity (95%), and accuracy (94%), with receiver operator characteristic area under the curve of 0.94. The proposed algorithm shows promising results in the automated detection of obstructive and nonobstructive lesions from CTA.
从三维冠状动脉计算机断层扫描血管造影(CTA)中通过视觉识别冠状动脉病变仍然具有挑战性。我们旨在开发一种强大的自动化算法,通过机器学习技术对冠状动脉病变进行计算机检测。提出了一种结构化学习技术来检测所有狭窄程度≥[公式:见原文]的冠状动脉病变。我们的算法包括两个阶段:(1)两个独立的基本决策,表明每个动脉段中病变的存在;(2)通过组合基本决策做出最终决策。其中一个基本决策是基于支持向量机(SVM)的学习算法,该算法将每条动脉划分为小体积斑块,并通过SVM算法为每个小体积斑块中的动脉病变整合多个定量几何和形状特征。另一个基本决策是基于公式的分析方法。第一阶段的最终决策应用基于SVM的决策融合来组合第二阶段的两个基本决策。将所提出的算法应用于42个使用双源CT采集的CTA患者数据集,其中21个数据集有45个狭窄程度≥[公式:见原文]的病变。由三位专家读者采用共识阅读法对狭窄程度≥[公式:见原文]的病变进行视觉识别被视为参考标准。我们的方法具有高灵敏度(93%)、特异性(95%)和准确率(94%),受试者工作特征曲线下面积为0.94。所提出的算法在从CTA自动检测阻塞性和非阻塞性病变方面显示出有前景的结果。