A feature extraction and segmentation algorithm for cardiovascular calcification medical images

Caizeng Ye, Jiong Zhang, Xiucui Wang, Jilin Qin
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Abstract

Cardiovascular disease (CVD) is a common disease related to the heart and blood vessels. Due to the lack of research on the characteristics and effect of cardiovascular calcification on hemodialysis patients in China, it is almost impossible to accurately extract, segment, and measure the cardiovascular calcified regions from the cardiovascular calcification image. This article proposed an algorithm to extract and segment the calcified regions based on image characteristics. Firstly, the dome method was used to obtain the approximate region of calcification and the basic extraction and segmentation algorithm was used to preprocess the calcified region. Then, the region of calcification was enhanced using the image enhancement method before being further processed by the basic algorithm. After that, the preprocessed segmented image was compared back to the original image and only the initial grey value of the common area was kept in the original image. Finally, the basic segmentation algorithm was utilized again to process the original image before the threshold division and binarization being performed to obtain the final segmentation results. The results indicated that our method can segment the calcified region more accurately and thus more accurate distinguishment of the calcified regions from the non-calcified regions can be achieved.
心血管钙化医学图像的特征提取与分割算法
心血管疾病(CVD)是一种与心脏和血管有关的常见疾病。由于国内缺乏对血液透析患者心血管钙化特征及影响的研究,从心血管钙化图像中准确提取、分割和测量心血管钙化区域几乎是不可能的。本文提出了一种基于图像特征的钙化区域提取和分割算法。首先,采用圆顶法得到钙化的近似区域,并采用基本提取分割算法对钙化区域进行预处理;然后用图像增强方法对钙化区域进行增强,再用基本算法对钙化区域进行进一步处理。之后,将预处理后的分割图像与原始图像进行对比,原始图像中只保留公共区域的初始灰度值。最后,再次利用基本分割算法对原始图像进行处理,然后进行阈值分割和二值化处理,得到最终的分割结果。结果表明,该方法可以更准确地分割钙化区域,从而更准确地区分钙化区域和非钙化区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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