GSDNet: An Anti-interference Cochlea Segmentation Model Based on GAN

Zhengxin Li, Sikai Tao, Ruixun Zhang, Hongpeng Wang
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Abstract

Medical segmentation of cochlear images aims to identify the area of the cochlea in a set of CT slices. The shape of cochlea will vary a quite in different CT slicing levels, and the relevant dataset has a higher labeling cost. This will lead to segmentation results with edge discontinuity when we implement supervised algorithm under few samples. In order to solve the problem of a small number of labeled images, this paper proposes a semi-supervised model called GSDNet which is based on GAN, which captures the features of the cochlear image without labels, so as to achieve high performance for processing fewer sampled data. To further improve the generalization of the model, we adopt a training method that allows the model to gradually distinguish between real images and fake images. In addition, in order to solve the problem of local noise interference and discontinuous segmentation results, we introduce a label discrimination network to force the distribution of generated results from segmentation network to align with the true label distribution, so that the edges of the segmentation results are continuous and the shape is more accurate. Finally, we conduct a segmentation experiment of the cochlear region containing 30 slices about cochlea data, and compare different cutting-edge methods. The method proposed in this paper achieves higher performance on the dice index.
GSDNet:一种基于GAN的抗干扰耳蜗分割模型
耳蜗图像医学分割的目的是在一组CT切片中识别耳蜗的区域。在不同的CT切片水平下,耳蜗的形状会有很大的变化,相应的数据集有较高的标注成本。当我们在少量样本下实现监督算法时,这将导致分割结果边缘不连续。为了解决标记图像数量少的问题,本文提出了一种基于GAN的半监督模型GSDNet,该模型在没有标记的情况下捕获耳蜗图像的特征,从而在处理较少采样数据的情况下达到高性能。为了进一步提高模型的泛化性,我们采用了一种训练方法,让模型逐渐区分真实图像和虚假图像。此外,为了解决局部噪声干扰和分割结果不连续的问题,我们引入了标签判别网络,强制分割网络生成的结果分布与真实的标签分布对齐,从而使分割结果的边缘连续,形状更加准确。最后,我们对包含30个耳蜗数据切片的耳蜗区域进行了分割实验,并比较了不同的前沿方法。本文提出的方法在骰子索引上取得了较高的性能。
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