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From Unilateral to Bilateral Learning: Detecting Mammogram Masses with Contrasted Bilateral Network

机译:从单边学习到双边学习:通过对比双边网络检测乳房X线照片肿块

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The comparison of bilateral mammogram images is important for finding masses especially in dense breasts. However, most existing mammogram mass detection algorithms only considered unilateral image. In this paper, we propose a deep model called contrasted bilateral network (CBN) to take bilateral information into consideration. In CBN, Mask R-CNN is used as a basic framework, upon which two major modules are developed to exploit the bilateral information: distortion insensitive comparison module and logic guided bilateral module. The former one is designed to be robust to nonrigid distortion of bilateral registration, while the latter one integrates the bilateral domain knowledge of radiologist. Experimental results on DDSM dataset demonstrate that the proposed algorithm achieves the state-of-the-art performance.
机译:两侧乳房X线照片的比较对于发现肿块尤其是在密集乳房中非常重要。但是,大多数现有的乳房X光照片质量检测算法仅考虑单边图像。在本文中,我们提出了一个名为“对比双边网络”(CBN)的深度模型来考虑双边信息。在CBN中,将Mask R-CNN作为基本框架,在此框架上开发了两个主要模块来利用双边信息:失真不敏感比较模块和逻辑引导的双边模块。前者旨在对双边注册的非刚性失真具有鲁棒性,而后者则整合了放射科医生的双边领域知识。在DDSM数据集上的实验结果表明,该算法达到了最新的性能。

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