使用无监督域翻译和对抗网络的精确3d肾脏分割

Wankang Zeng, Wenkang Fan, Rongzhen Chen, Zhuohui Zheng, Song Zheng, Jianhui Chen, Rong Liu, Q. Zeng, Zengqin Liu, Yinran Chen, Xióngbiao Luó
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引用次数: 3

摘要

计算机断层尿路成像是评估肾脏的常规方法。肾脏三维分割和重建尿路图像为医生提供了一种直观的可视化方法来准确诊断和治疗肾脏疾病,特别是用于肾脏手术前后的手术计划和结果分析。虽然3D全卷积网络在医学图像分割方面取得了巨大的成功,但它们被困在临床看不见的数据中,不能通过一个训练程序适应不同的模式。本研究提出一种基于二维网络的无监督域自适应或翻译方法,对尿路图像进行深度学习,实现肾脏的准确分割。我们用临床尿路造影数据检验了我们提出的方法。实验结果表明,该方法可以很好地解决肾脏分割的域移位问题,并取得与基于监督学习的分割方法相当或更好的分割效果。
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Accurate 3d Kidney Segmentation Using Unsupervised Domain Translation And Adversarial Networks
Computed tomography urography imaging is routinely performed to evaluate the kidneys. Kidney 3D segmentation and reconstruction from urographic images provides physicians with an intuitive visualization way to accurately diagnose and treat kidney diseases, particularly used in surgical planning and outcome analysis before and after kidney surgery. While 3D fully convolution networks have achieved a big success in medical image segmentation, they get trapped in clinical unseen data and cannot be adapted in deferent modalities with one training procedure. This study proposes an unsupervised domain adaptation or translation method with 2D networks to deeply learn urographic images for accurate kidney segmentation. We tested our proposed method on clinical urography data. The experimental results demonstrate our proposed method can resolve the domain shift problem of kidney segmentation and achieve the comparable or better results than supervised learning based segmentation methods.
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