Smart Detection of Blockage in Coronary Artery in Angiography

M. Ramamoorthy, N. Ayyanathan, M. PadmaUsha
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Abstract

In computer aided diagnosis of artery motion analysis coronary angiogram segmentation is of crucial importance. With vascular structures along with considerable variation in intensities and noise it is challenging to develop an automated and accurate vessel segmentation algorithm. The proposed approach is an unsupervised approach with coronary angiography as the source and is used to extract the vascular centerlines and segment the vessels and detect the blockages in the coronary artery. Initially a preprocessing step is applied to enhance and remove the low frequency noise in the image based on a contrast limited adaptive histogram equalization and morphological filters. The vascular structure is extracted by using Morphological hessian based approach and region based Otsu thresholding. Two different scales are used to extract the wide and thin vessels. Then the vessel centerline is extracted. A branch detection algorithm is employed to find the bifurcation. The blockages are detected by considering the diameter along the cross sectional area of the vessel. The proposed system has been analyzed and the experimental results conducted on several images prove the efficiency of the proposed method producing an accu-
血管造影中冠状动脉阻塞的智能检测
在计算机辅助诊断动脉运动分析中,冠状动脉造影分割是至关重要的。由于血管结构在强度和噪声方面变化很大,因此开发一种自动化、准确的血管分割算法是一项挑战。该方法是一种以冠状动脉造影为源的无监督方法,用于提取血管中心线,分割血管,检测冠状动脉阻塞。首先,采用基于对比度有限的自适应直方图均衡化和形态学滤波器的预处理步骤来增强和去除图像中的低频噪声。采用基于形态学hessian的方法和基于区域的Otsu阈值提取血管结构。两种不同的天平用于提取宽血管和细血管。然后提取血管中心线。采用分支检测算法寻找分支。通过考虑沿血管横截面积的直径来检测阻塞。对所提出的系统进行了分析,并在多幅图像上进行了实验,结果证明了所提出的方法产生accu-的效率
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