Mammogram Segmentation Methods: A Brief Review

S. Padhi, Suvendu Rup, Sanjay Saxena, Figlu Mohanty
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引用次数: 4

Abstract

Being the prime reason, after skin cancer, of high mortality rate among women in present day, breast cancer requires correct diagnosis and precise treatment at its earliest stage. From the time of the advent of diagnosis tools, medical practitioners have left no stone unturned in their efforts of delivering timely medication to the patients; but often human error has resulted in either death due to dosage of medicines resulting from wrongly detected malignancies or due to negligence arising from not detecting the tumors at the right time. Hence, computer-aided diagnosis (CADx) has come into light as a key tool in statistically analyzing medical images obtained from various imaging machines and classifying the specimens into the categories of normal, benign, and malignant. A major step involved in it is the segmentation of the medical image into various regions and determining the required region-of-interest (ROI) from them. Automated image segmentation is quintessential today in order to extract the correct suspicious regions for diagnosis, instead of relying on erroneous human eye judgment. The following study aims to compare and analyze the effectiveness of some existing segmentation methods used to extract the ROIs for analysis of digital mammograms for breast cancer detection.
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乳房x光片分割方法综述
乳腺癌是当今妇女死亡率仅次于皮肤癌的主要原因,需要在早期进行正确诊断和精确治疗。自从诊断工具出现以来,医生就不遗余力地为病人提供及时的药物治疗;但是,人为错误常常导致死亡,或者是由于错误发现恶性肿瘤而导致的药物剂量,或者是由于没有及时发现肿瘤而引起的疏忽。因此,计算机辅助诊断(CADx)作为统计分析从各种成像机器获得的医学图像并将标本分类为正常、良性和恶性的关键工具而出现。其中的一个主要步骤是将医学图像分割成不同的区域,并从中确定所需的兴趣区域(ROI)。为了提取正确的可疑区域进行诊断,而不是依赖错误的人眼判断,自动图像分割是当今最重要的。下面的研究旨在比较和分析现有的一些分割方法提取roi的有效性,用于分析用于乳腺癌检测的数字乳房x线照片。
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