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Recurrent generative adversarial network for learning imbalanced medical image semantic segmentation

机译:用于学习不平衡医学图像语义分割的经常性生成对抗网络

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摘要

We propose a new recurrent generative adversarial architecture named RNN-GAN to mitigate imbalance data problem in medical image semantic segmentation where the number of pixels belongs to the desired object are significantly lower than those belonging to the background. 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 recall. To mitigate imbalanced training data impact, we train RNN-GAN with proposed complementary segmentation mask, in addition, ordinary segmentation masks. The RNN-GAN consists of two components: a generator and a discriminator. The generator is trained on the sequence of medical images to learn corresponding segmentation label map plus proposed complementary label both at a pixel level, while the discriminator is trained to distinguish a segmentation image coming from the ground truth or from the generator network. Both generator and discriminator substituted with bidirectional LSTM units to enhance temporal consistency and get inter and intra-slice representation of the features. We show evidence that the proposed framework is applicable to different types of medical images of varied sizes. In our experiments on ACDC-2017, HVSMR-2016, and LiTS-2017 benchmarks we find consistently improved results, demonstrating the efficacy of our approach.
机译:我们提出了一种名为RNN-GaN的新的经常性发生的对抗性体系结构,以减轻医学图像语义分割中的不平衡数据问题,其中像素数属于所需对象的数量明显低于属于背景的物体。具有不平衡数据训练的模型倾向于偏向于在临床应用中不需要的健康数据,并且这些网络的预测输出具有高精度和低召回。为了减轻不平衡的培训数据影响,我们用提出的互补分割面具训练RNN-GaN,此外,普通分割面具。 RNN-GaN由两个组件组成:发电机和鉴别器。发电机训练在医学图像的序列上,以学习相应的分割标签地图加上像素电平,同时训练鉴别器以区分来自地面真理或来自发电机网络的分段图像。两个发电机和鉴别器用双向LSTM单元代替,以提高时间一致性并获得特征的间切片表示。我们展示了证据表明,拟议的框架适用于不同类型的不同尺寸的医学图像。在我们对ACDC-2017的实验中,HVSMR-2016和LITS-2017基准测试我们发现一直改进的结果,展示了我们的方法的功效。

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