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An automated confirmatory system for analysis of mammograms

机译:用于乳房X线照片分析的自动确认系统

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This paper presents an integrated system for the automatic analysis of mammograms to assist radiologists in confirming their diagnosis in mammography screening. The proposed automated confirmatory system (ACS) can process a digitalized mammogram online, and generates a high quality filtered segmentation of an image for biological interpretation and a texture-feature based diagnosis. We use a serial of image pre-processing and segmentation techniques, including 2D median filtering, seeded region growing (SRG) algorithm, image contrast enhancement, to remove noise, delete radiopaque artifacts and eliminate the projection of the pectoral muscle from a digitalized mammogram. We also develop an entire image texture-feature based classification method, by combining a Rough-set approach to extract five fundamental texture features from images, and then an Artificial Neural Network technique to classify a mammogram as: normal; indicating the presence of a benign lump; or representing a malignant tumor. Here, 222 random images from the Mammographic Image Analysis Society (MIAS) database are used for the offline ACS training. Once the system is tuned and trained, it is ready for the automated use for the analysis and diagnosis of new mammograms. To test the trained system, a separate set of 100 random images from the MIAS and another set of 100 random images from the independent BancoWeb database are selected. The proposed ACS is shown to be successful in confirming diagnosis of mammograms from the two independent databases. (C) 2015 Elsevier Ireland Ltd. All rights reserved.
机译:本文提出了一种用于自动分析乳房X线照片的集成系统,以帮助放射线医师确认他们在X射线摄影筛查中的诊断。所提出的自动确认系统(ACS)可以在线处理数字化的乳房X线照片,并生成图像的高质量滤波分割,以进行生物学解释和基于纹理特征的诊断。我们使用一系列图像预处理和分割技术,包括2D中值滤波,种子区域增长(SRG)算法,图像对比度增强,以去除噪声,删除不透射线的假象并从数字化的乳腺X线照片中消除胸肌的投影。我们还通过结合粗糙集方法从图像中提取五个基本纹理特征,然后结合人工神经网络技术将乳房X线照片分类为:正常;基于粗糙集的方法,开发了一种基于整个图像纹理特征的分类方法。表示存在良性肿块;或代表恶性肿瘤。在这里,来自乳房X线摄影图像分析协会(MIAS)数据库的222张随机图像用于离线ACS训练。系统经过调整和培训后,就可以自动用于新的乳房X线照片的分析和诊断。为了测试训练有素的系统,选择了来自MIAS的另一组100张随机图像和来自独立BancoWeb数据库的另一组100张随机图像。所提出的ACS被证明可以成功地从两个独立的数据库中确认乳房X线照片的诊断。 (C)2015 Elsevier Ireland Ltd.保留所有权利。

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