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Multi-image CAD employing features derived from ipsilateral mammographic views

机译:使用来自同侧乳房X线扫描视图的功能的多图像CAD

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On mammograms, certain kinds of features related to masses (e.g., location, texture, degree of spiculation, and integrated density difference) tend to be relatively invariant, or at last predictable, with respect to breast compression. Thus, ipsilateral pairs of mammograms may contain information not available from analyzing single views separately. To demonstrate the feasibility of incorporating multi-view features into CAD algorithm, `single-image' CAD was applied to each individual image in a set of 60 ipsilateral studies, after which all possible pairs of suspicious regions, consisting of one from each view, were formed. For these 402 pairs we defined and evaluated `multi-view' features such as: (1) relative position of centers of regions; (2) ratio of lengths of region projections parallel to nipple axis lines; (3) ratio of integrated contrast difference; (4) ratio of the sizes of the suspicious regions; and (5) measure of relative complexity of region boundaries. Each pair was identified as either a `true positive/true positive' (T) pair (i.e., two regions which are projections of the same actual mass), or as a falsely associated pair (F). Distributions for each feature were calculated. A Bayesian network was trained and tested to classify pairs of suspicious regions based exclusively on the multi-view features described above. Distributions for all features were significantly difference for T versus F pairs as indicated by likelihood ratios. Performance of the Bayesian network, which was measured by ROC analysis, indicates a significant ability to distinguish between T pairs and F pairs (A$-z$/ $EQ 0.82 $POM 0.03), using information that is attributed to the multi-view content. This study is the first demonstration that there is a significant amount of spatial information that can be derived from ipsilateral pairs of mammograms.
机译:在乳房X线照片上,与肿块相关的某些类型的特征(例如,纹理,刺激度和集成密度差异)往往是相对不变的,或者最后可预测到乳房压缩。因此,同侧对乳房X线照片可以包含不可以单独分析单视图的信息。为了证明将多视图特征的可行性加入CAD算法,将“单一图像”CAD应用于一组60个同侧研究中的每个单独图像,之后所有可能对可疑地区,形成了。对于这些402对,我们定义和评估了“多视图”功能,例如:(1)地区中心的相对位置; (2)平行于乳头轴线的区域突起长度的比例; (3)综合对比差的比例; (4)可疑地区尺寸的比例; (5)区域边界相对复杂度的衡量标准。将每对被识别为“真正的正/真正的”(t)对(即,两个区域,这是相同实际质量的突起),或作为错误相关的对(f)。计算每个功能的分布。培训并测试贝叶斯网络并专门对上述多视图特征进行分类的可疑区域对。所有特征的分布对于T与F对具有显着差异,如概率比例所示。通过ROC分析测量的贝叶斯网络的性能表明,使用归因于多视图的信息,差别区分T对和F对($-$ / $ eqy 0.82 $ 0.03)。内容。本研究是第一次演示,即存在源自同侧对乳房图谱的大量空间信息。

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