Conditional Generative Adversarial Refinement Networks for Unbalanced Medical Image Semantic Segmentation

Mina Rezaei, Haojin Yang, Konstantin Harmuth, C. Meinel
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引用次数: 20

Abstract

We propose a new generative adversarial architecture to mitigate imbalance data problem in medical image semantic segmentation where the majority of pixels belongs to a healthy region and few belong to lesion or non-health region. A model trained with imbalanced data tends to bias towards healthy data which is not desired in clinical applications and predicted outputs by these networks have high precision and low sensitivity. We propose a new conditional generative refinement network with three components: a generative, a discriminative, and a refinement networks to mitigate imbalanced data problem through ensemble learning. The generative network learns to the segment at the pixel level by getting feedback from the discriminative network according to the true positive and true negative maps. On the other hand, the refinement network learns to predict the false positive and the false negative masks produced by the generative network that has significant value, especially in medical application. The final semantic segmentation masks are then composed by the output of the three networks. The proposed architecture shows state-of-the-art results on LiTS-2017 for simultaneous liver and lesion segmentation, and MDA231 for microscopic cell segmentation. We have achieved competitive results on BraTS-2017 for brain tumor segmentation.
不平衡医学图像语义分割的条件生成对抗优化网络
针对医学图像语义分割中健康区域像素多、病变或非健康区域像素少的数据不平衡问题,提出了一种新的生成对抗结构。使用不平衡数据训练的模型往往偏向于临床应用中不需要的健康数据,并且这些网络的预测输出精度高,灵敏度低。我们提出了一种新的条件生成优化网络,它由三个组成部分组成:生成网络、判别网络和优化网络,通过集成学习来缓解数据不平衡问题。生成网络根据真正映射和真负映射得到判别网络的反馈,在像素级学习分段。另一方面,细化网络学习预测生成网络产生的假阳性和假阴性掩模,具有重要的价值,特别是在医学应用中。最后的语义分割掩码由三个网络的输出组成。所提出的架构显示了LiTS-2017用于肝脏和病变同时分割,MDA231用于微观细胞分割的最新结果。我们在BraTS-2017脑肿瘤分割方面取得了具有竞争力的成果。
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