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Automated knowledge-based detection of nonobstructive and obstructive arterial lesions from coronary CT angiography

机译:基于知识的自动化冠状动脉CT血管造影术对非阻塞性和阻塞性动脉病变的检测

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Purpose: Visual analysis of three-dimensional (3D) coronary computed tomography angiography (CCTA) remains challenging due to large number of image slices and tortuous character of the vessels. The authors aimed to develop a robust, automated algorithm for unsupervised computer detection of coronary artery lesions. Methods: The authors' knowledge-based algorithm consists of centerline extraction, vessel classification, vessel linearization, lumen segmentation with scan-specific lumen attenuation ranges, and lesion location detection. Presence and location of lesions are identified using a multi-pass algorithm which considers expected or "normal" vessel tapering and luminal stenosis from the segmented vessel. Expected luminal diameter is derived from the scan by automated piecewise least squares line fitting over proximal and mid segments (67%) of the coronary artery considering the locations of the small branches attached to the main coronary arteries. Results: The authors applied this algorithm to 42 CCTA patient datasets, acquired with dual-source CT, where 21 datasets had 45 lesions with stenosis >25%. The reference standard was provided by visual and quantitative identification of lesions with any stenosis >25% by three expert readers using consensus reading. The authors algorithm identified 42 lesions (93%) confirmed by the expert readers. There were 46 additional lesions detected; 23 out of 39 (59%) of these were less-stenosed lesions. When the artery was divided into 15 coronary segments according to standard cardiology reporting guidelines, per-segment basis, sensitivity was 93% and per-segment specificity was 81% using 10-fold cross-validation. Conclusions: The authors' algorithm shows promising results in the detection of both obstructive and nonobstructive CCTA lesions.
机译:目的:由于大量的图像切片和血管的曲折特征,对三维(3D)冠状动脉计算机断层扫描血管造影(CCTA)进行视觉分析仍然具有挑战性。作者旨在开发一种强大的自动化算法,用于无监督的冠状动脉病变计算机检测。方法:作者基于知识的算法包括中心线提取,血管分类,血管线性化,具有扫描特定管腔衰减范围的管腔分割以及病变位置检测。病变的存在和位置是使用多程算法确定的,该算法考虑了预期的或“正常的”血管逐渐变细以及来自分割血管的腔狭窄。考虑到附着在主要冠状动脉上的小分支的位置,可通过自动分段分段最小二乘法拟合冠状动脉近端和中段(67%)来获得预期的管腔直径。结果:作者将该算法应用于通过双源CT采集的42个CCTA患者数据集,其中21个数据集具有45个病变且狭窄率> 25%的病变。由三位专家读者使用共识读数通过视觉和定量识别狭窄程度大于25%的病变提供参考标准。作者的算法确定了由专业读者确认的42个病变(93%)。还发现了另外46个病灶。其中39例中有23例(59%)是狭窄程度较轻的病变。根据标准心脏病学报告指南将动脉分为15个冠状动脉段时,使用10倍交叉验证,每段基础的敏感性为93%,每段特异性为81%。结论:作者的算法在阻塞性和非阻塞性CCTA病变的检测中均显示出令人鼓舞的结果。

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