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Identifying Corresponding Lesions from CC and MLO Views Via Correlative Feature Analysis

机译:通过相关特征分析从CC和MLO视图中识别相应的病变

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In this study, we present a computerized framework to identify the corresponding image pair of a lesion in CC and MLO views, a prerequisite for combining information from these views to improve the diagnostic ability of both radiologists and CAD systems. A database of 126 mass lesons was used, from which a corresponding dataset with 104 pairs and a non-corresponding dataset with95 pairs were constructed. For each FFDM image, the mass lesions were firstly automatically segmented via a dual-stage algorithm, in which a RGI-based segmentation and an active contour model are employed sequentially. Then, various features were automatically extracted from the lesion to characterize the spiculation, margin, size, texture and context of the lesion, as well as its distance to nipple. We developed a two-step strategy to select an effective subset of features, and combined it with a BANN to estimate the probability that the two images are of the same physical lesion. ROC analysis was used to evaluate the performance of the individual features and the selected feature subset for the task of distinguishing corresponding and non-corresponding pairs. With leave-one-out evaluation by lesion, the distance feature yielded an AUC of 0.78 and the feature subset, which includes distance, ROI-based energy and ROI-based homogeneity, yielded an AUC of 0.88. The improvement by using multiple features was statistically significant compared to single feature performance (p < 0.001).
机译:在这项研究中,我们提出了一种计算机化的框架,用于在CC和MLO视图中识别病变的相应图像对,这是从这些视图中组合信息以提高放射科医生和CAD系统的诊断能力的前提。使用了126个重性里昂的数据库,从中构建了104对的对应数据集和95对的非对应数据集。对于每个FFDM图像,首先通过双阶段算法自动分割肿块病变,在该算法中,依次采用基于RGI的分割和活动轮廓模型。然后,从病变中自动提取各种特征,以表征病变的结节,边缘,大小,纹理和背景以及距乳头的距离。我们开发了一种两步策略来选择有效的特征子集,并将其与BANN结合以估计两个图像具有相同物理病变的可能性。 ROC分析用于评估单个特征和所选特征子集的性能,以区分相应和不对应的对。通过按病灶一劳永逸地进行评估,距离特征的AUC为0.78,特征子集(包括距离,基于ROI的能量和基于ROI的均匀性)的AUC为0.88。与使用单个功能相比,使用多个功能的改进具有统计学意义(p <0.001)。

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