乳房x光片中胸肌切除及肿瘤区域自动裁剪的新算法

M. Hanmandlu, A. Khan, A. Saha
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引用次数: 8

摘要

胸肌的存在一直是乳房x光检查中肿瘤检测的障碍。乳房内外侧斜位(MLO) x线显示胸肌的存在。由于胸肌、肿块和钙化团簇的强度范围几乎相同,因此切除胸肌是实现对实际感兴趣区域(ROI)即肿瘤区域进行正确分割的重要或必要步骤。本文提出了一种新的自动检测和去除胸肌的算法,以及乳房边界检测和数字乳房x线照片中存在的几种伪影的去除。将自动裁剪算法与胸肌切除步骤相结合,得到一个精确的RoI,有助于提高计算机辅助检测(CAD)系统的病变检测精度。这种复合方法已被实施并应用于mini-MIAS,这是最具挑战性的数字数据库之一,由322张MLO视图乳房x线照片组成。该算法在298张乳房x光照片上的准确率约为83.89%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel algorithm for pectoral muscle removal and auto-cropping of neoplasmic area from mammograms
Presence of pectoral muscle has always been a hindrance in neoplasm detection in screening mammography. Mediolateral-oblique (MLO) x-ray view of the breast taken while screening mammography shows the presence of pectoral muscle. The intensity range shared by pectoral muscle, masses and calcification clusters being almost the same makes pectoral muscle removal a vital or necessary step to attain proper segmentation of actual region of interest (ROI) i.e. the neoplasmic region. This paper provides a novel algorithm for automatic detection and removal of pectoral muscle along with breast boundary detection and several artefacts removal present in digital mammograms. A concatenation of an auto-cropping algorithm to pectoral removal step gives a précise RoI which helps in stepping up the lesion detection accuracy of the Computer-Aided Detection (CAD) system. This composite method has been has been implemented and applied to mini-MIAS which is one of the most challenging digital database consisting 322 MLO view mammograms. The algorithm shows an accuracy of around 83.89% on a set of 298 mammogram images.
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