Comparative Analysis of Mammography Image Segmentation Strategies

Areej Rebat Abed, Karim Hussein
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引用次数: 1

Abstract

Breast cancer is a serious medical problem that affects women all over the world, and it is one of the most well-known tumors that kill women. The specialists of Breast cancer Prefer to use imaging methods such as a mammography to speed up recovery and reduce the risk of breast cancer. An ROI describe the tumor will be retrieved from the image that is entered to detect a malignant tumor. One of the basic techniques used to classify breast cancer is segmentation. Segmentation may be difficult in the presence of noise, blurring or low contrast. Pre-processing aids in the removal of extraneous data from a picture or the enhancement of image contrast in the early stages. Classification is greatly influenced by segmentation. Recent research have presented automatic and semi-automated segmentation algorithms for extracting the region of interest (ROI), lesions, and masses to check for breast cancer. In this study provides high-level overview of approaches of segmentation, with a focus on mammography images from current research. The datasets that were available were discussed as well as the problems encountered during the segmentation operation for the identification of breast cancer.
乳腺x线图像分割策略的比较分析
乳腺癌是一个严重的医学问题,影响着全世界的女性,它是最著名的致女性死亡的肿瘤之一。乳腺癌专家更倾向于使用成像方法,如乳房x光检查,以加快恢复和降低患乳腺癌的风险。将从输入的图像中检索描述肿瘤的ROI,以检测恶性肿瘤。用于对乳腺癌进行分类的基本技术之一是分割。在存在噪声、模糊或低对比度的情况下,分割可能会很困难。预处理有助于在早期阶段从图像中去除无关数据或增强图像对比度。分类很大程度上受分割的影响。最近的研究提出了自动和半自动的分割算法,用于提取感兴趣区域(ROI),病变和肿块来检查乳腺癌。在这项研究中,提供了分割方法的高层次概述,重点是乳房x线摄影图像从目前的研究。讨论了可用的数据集以及在识别乳腺癌的分割操作中遇到的问题。
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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