DisAsymNet:利用自我对抗学习解除双侧乳房x光片上不对称异常的纠缠

Xin Wang, T. Tan, Yuan Gao, Luyi Han, Tianyu Zhang, Chun-Fang Lu, R. Beets-Tan, Ruisheng Su, R. Mann
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引用次数: 0

摘要

当异常发展时,不对称是双侧乳房x光检查(Bi-MG)的一个重要特征。它被放射科医生广泛用于诊断。在乳房x光检查算法的发展中,“当不对称的异常被去除后,对称的Bi-MG会是什么样子?”这个问题还没有得到强烈的关注。解决这个问题可以为乳房x线摄影解剖学提供有价值的见解,并有助于诊断解释。因此,我们提出了一个新的框架,DisAsymNet,它利用不对称异常变压器引导的自对抗学习来解除异常和对称Bi-MG的纠缠。同时,我们提出的方法在一定程度上受到随机合成异常的引导。我们在三个公开数据集和一个内部数据集上进行了实验,并证明我们的方法在异常分类、分割和定位任务上优于现有方法。此外,重建的正常乳房x线照片可以为临床诊断提供更好的可解释的视觉线索。该代码将对公众开放。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DisAsymNet: Disentanglement of Asymmetrical Abnormality on Bilateral Mammograms using Self-adversarial Learning
Asymmetry is a crucial characteristic of bilateral mammograms (Bi-MG) when abnormalities are developing. It is widely utilized by radiologists for diagnosis. The question of 'what the symmetrical Bi-MG would look like when the asymmetrical abnormalities have been removed ?' has not yet received strong attention in the development of algorithms on mammograms. Addressing this question could provide valuable insights into mammographic anatomy and aid in diagnostic interpretation. Hence, we propose a novel framework, DisAsymNet, which utilizes asymmetrical abnormality transformer guided self-adversarial learning for disentangling abnormalities and symmetric Bi-MG. At the same time, our proposed method is partially guided by randomly synthesized abnormalities. We conduct experiments on three public and one in-house dataset, and demonstrate that our method outperforms existing methods in abnormality classification, segmentation, and localization tasks. Additionally, reconstructed normal mammograms can provide insights toward better interpretable visual cues for clinical diagnosis. The code will be accessible to the public.
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