乳房x线照片的计算展开

M. Joshi, A. Bhale
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引用次数: 2

摘要

乳房x光检查在早期乳腺癌检测中的重要性是公认的事实。乳房x光片(无论是模拟x射线胶片还是数字软拷贝)都具有计算能力,可以提取重要信息。一些计算技术/算法处理乳房x光片以突出和显示其他未见的特征。因此,乳房x线摄影图像被计算展开,以获得可用于进一步分析的适当信息。乳房x光片的计算分析是一种重要的工具,被许多专家用于各种目的。本文对近年来文献报道的此类研究工作进行了综述。我们的重点是乳房x线照片的计算预处理。预处理包括乳房x线摄影图像的增强以及从图像中提取相关特征。我们对各种图像增强的研究方法进行了系统的分类。我们还根据提取和用于获得预期结果的特征类型对各种研究技术进行了分类。虽然乳房x光检查主要用于乳腺癌的检测,但研究并不局限于这方面。研究人员还探讨了乳房x线照片处理的其他几个领域,包括图像压缩、基于内容的图像检索(CBIR)等。本文还讨论和介绍了这些研究应用的多样性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational unfoldment of mammograms
The importance of mammograms in early breast cancer detection is an accepted fact. Mammograms (either an analog x-ray film or a digital softcopy) are computationally empowered to extract significant information. Several computational techniques/algorithms process mammograms to highlight and reveal otherwise unseen features. Thus mammographic images are computationally unfolded to obtain appropriate information that can be used for further analysis. Computational analysis of mammograms is an essential tool, which is used by numerous specialists for various purposes. In this paper we review such research work reported in the literature in recent years. Our focus is in particular on computational preprocessing of mammograms. Preprocessing involves enhancement of mammographic images as well as extraction of relevant features from images. We grouped various image enhancement research approaches systematically. We also categorized various research techniques based on the types of features that are extracted and used to obtain intended results. Although mammograms are used mostly for breast cancer detection, the research is not confined to this aspect only. Several other areas that deal with mammograms are also explored by researchers including image compression, Content based Image Retrieval (CBIR) etc. Variety in these research applications is also discussed and presented in this paper.
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