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Supervised method for blood vessel segmentation from coronary angiogram images using 7-D feature vector

机译:使用7维特征向量从冠状动脉血管造影图像中分割血管的有监督方法

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摘要

With the recent advancement in medical image processing field and sophisticated simulation tools it has been possible to acquire useful information from raw images for different parts of the body. Coronary artery segmentation is the fundamental component which extract significant features from angiogram images. Cardiac catheterization is an invasive diagnostic procedure that provides important information about the structure and function of heart. The procedure usually involves X-ray images of heart, arteries using coronary angiography. The resultant images (coronary angiogram) are considered as best of way to diagnose cardiac heart disease. The main focus of coronary angiography is to find the blockage in major blood vessels, however if the blockage is not found in large blood vessels and patient persists to have pain (angina) then it is concluded that the patient is having micro vascular disease (MVD). MVD is caused by blockage or narrowing of small blood vessels in heart, unfortunately there is no specific test to diagnose MVD but it is common in people having diabetes and blood pressure. This paper proposes an automated method of vessel segmentation from coronary angiogram images using radial basis function and moment invariant-based features to extract the small blood vessel for diagnosis of MVD. Experimental results show that the proposed method is capable of extracting small blood vessels from coronary artery and can be a basis to identify key characteristics for MVD. The dataset of angiogram images have been provided by ISRA University Hospital and MATLAB is used for implementing the proposed method.
机译:随着医学图像处理领域的最新发展和复杂的仿真工具,从原始图像中获取人体不同部位的有用信息成为可能。冠状动脉分割是从血管造影图像中提取重要特征的基本组成部分。心脏导管插入术是一种侵入性诊断程序,可提供有关心脏结构和功能的重要信息。该过程通常涉及使用冠状动脉造影的心脏,动脉的X射线图像。所得到的图像(冠状动脉造影)被认为是诊断心脏病的最佳方法。冠状动脉造影的主要重点是发现大血管中的阻塞,但是,如果在大血管中未发现阻塞,并且患者持续感到疼痛(心绞痛),那么可以得出结论,该患者患有微血管疾病(MVD) )。 MVD是由心脏中的小血管阻塞或狭窄引起的,不幸的是,尚无诊断MVD的特定方法,但在患有糖尿病和血压的人中很常见。本文提出了一种使用径向基函数和基于矩不变性的特征从冠状动脉血管造影图像中进行血管分割的自动方法,以提取小血管以诊断MVD。实验结果表明,该方法能够从冠状动脉中提取小血管,为鉴别MVD的关键特征提供依据。血管造影图像的数据集由ISRA大学医院提供,MATLAB用于实现该方法。

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