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Mammographic CAD: Correlation of regions in ipsilateral views - a pilot study

机译:乳腺钼靶CAD:同侧视图区域的相关性-一项初步研究

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Background: Radiologists analyse both standard mammographic views of a breast to confirm the presence of abnormalities and reduce false-positives. However, at present no computer-aided diagnosis system uses ipsilateral mammograms to confirm the presence of suspicious features. Aim: The aim of this study was to develop image-processing algorithms that can be used to match a suspicious feature from one mammographic view to the same feature in another mammographic view of the same breast. This algorithm can be incorporated into a computer-aided diagnosis package to confirm the presence of suspicious features.Method: The algorithms were applied to 68 matched pairs of cranio-caudal and mediolateral-oblique mammograms. The results of this pilot study take the form of maps of similarity. A novel method of evaluating the similarity maps is presented, using the area under the receiver operating characteristic curve (AUC) and the contrast (C) between the area of the matched region and the background of the similarity map. Results and Conclusions: The first matching algorithm (using texture measures extracted from a grey-level co-occurrence matrix (GLCM) and a Euclidean distance similarity metric) achieved an average AUC=0.80±0.17 with an average C=0.46±0.26. The second algorithm (using GLCMs and a mutual information similarity metric) achieved an average AUC=0.77±0.25 with an average C=0.50±0.42. The latter algorithm also performed remarkably well with the matching of malignant masses and achieved an average AUC=0.96±0.05 with an average C=0.90±0.21.
机译:背景:放射科医生分析乳房的两种标准乳房X线照片,以确认异常的存在并减少假阳性。但是,目前没有计算机辅助诊断系统使用同侧乳房X线照片来确认可疑特征的存在。目的:本研究的目的是开发图像处理算法,该算法可用于将可疑特征从一个乳房X线照片视图匹配到同一乳房另一乳房X线照片视图中的同一特征。该算法可以结合到计算机辅助诊断包中,以确认是否存在可疑特征。方法:将该算法应用于68对匹配的颅尾和X线对侧乳房X线照片。这项初步研究的结果采用相似图的形式。提出了一种使用接收器工作特性曲线(AUC)下的面积以及匹配区域的面积与相似图背景之间的对比度(C)评估相似图的新颖方法。结果与结论:第一个匹配算法(使用从灰度共生矩阵(GLCM)和欧几里得距离相似性度量中提取的纹理度量)实现了平均AUC = 0.80±0.17和平均C = 0.46±0.26。第二种算法(使用GLCM和互信息相似性度量)获得了平均AUC = 0.77±0.25,平均C = 0.50±0.42。后一种算法在匹配恶性肿块方面也表现出色,并实现了平均AUC = 0.96±0.05和平均C = 0.90±0.21。

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