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Automated Detection of Peripheral Arteries in CTA Datasets

机译:在CTA数据集中自动检测周围动脉

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Peripheral artery disease is a chronic disease that manifests in insufficient blood supply to the legs due to narrowing of the arteries. Fully automated detection, segmentation and measurement of stenosis of peripheral vessels from CTA datasets would be highly desirable but has yet to be realized. A key component of this procedure is the development of an automated and accurate method for the segmentation of the peripheral vessel, which would be a major step towards the automated detection of stenosis. We propose a Computer Aided Detection (CAD) algorithm, with which to detect and segment the peripheral vessels directly from 3D data. In order to create a good delineation of arteries in the image, and as to improve the sensitivity for detection and measurement of stenosis, a differential geometry-based approach is employed. This approach serves as an enhancement filter and, further, provides information about the geometry of the structures in the image: the tubular objects representing the interest (arteries). Having enhanced the arteries, a 3D region growing method is employed, utilizing voxel-based geometrical features. With this proposed region growing method the initial seed point is represented by the common iliac arteries junction, and it is thus automatically selected. The method has been successfully implemented on 15 datasets and the evaluation was carried out by the visual judgment of 2 experienced radiologists.
机译:周围动脉疾病是一种慢性疾病,表现为由于动脉狭窄而导致腿部血液供应不足。从CTA数据集中全自动检测,分割和测量外周血管狭窄将是非常需要的,但尚未实现。该程序的关键部分是开发一种自动准确的方法来对外周血管进行分割,这将是对狭窄的自动检测迈出的重要一步。我们提出了一种计算机辅助检测(CAD)算法,该算法可直接从3D数据中检测和分割外围血管。为了在图像中创建良好的动脉轮廓,并提高狭窄的检测和测量敏感性,采用了基于差分几何的方法。该方法用作增强过滤器,并且进一步提供有关图像中结构几何形状的信息:代表兴趣(动脉)的管状对象。利用增强的动脉,利用基于体素的几何特征的3D区域生长方法。使用这种建议的区域生长方法,初始种子点由common总动脉连接处表示,因此可以自动选择。该方法已在15个数据集上成功实施,并通过2位经验丰富的放射科医生的目视判断进行了评估。

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