一个完全自动化的乳房x光片完整分割方案

Stylianos D. Tzikopoulos, H. Georgiou, M. Mavroforakis, N. Dimitropoulos, S. Theodoridis
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引用次数: 13

摘要

本文提出了一种乳房x线摄影图像的全自动完整分割方法。首先将图像预处理技术应用于乳房x线照片去噪,然后实现乳房边界提取算法,将乳房组织与背景区分开来。接下来,对现有的胸肌方案进行改进,并应用了一种新的乳头分割技术,当乳头处于轮廓中时检测乳头。这提高了估计的乳房边界,是进一步处理图像的关键点。这种复合方法已在miniMIAS(最著名的乳房x线摄影数据库之一)中实现并应用。该数据库由322个通过数字化程序获得的中外侧斜位(MLO)视图乳房x线照片组成。结果由放射科专家评估,非常有希望。因此,当应用于高质量的数字乳房x光检查时,预计该程序可以产生更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fully automated complete segmentation scheme for mammograms
This paper presents a fully automated complete segmentation method for mammographic images. Image preprocessing techniques are first applied to mammograms to remove the noise and then a breast boundary extraction algorithm is implemented, in order to distinguish breast tissue from the background. Next, an improved version of an existing pectoral muscle scheme is performed and a new nipple segmentation technique is applied, detecting the nipple when it is in profile. This improves the estimated breast boundary and serves as a key-point for further processing of the image. This composite method has been implemented and applied to miniMIAS, one of the most well-known mammographic databases. This database consists of 322 mediolateral oblique (MLO) view mammograms, obtained via a digitization procedure. The results are evaluated by an expert radiologist and are very promising. Accordingly, it is expected that this procedure can produce improved results, when applied to high-quality digital mammograms.
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