Brain Tumor Segmentation Using Discriminator Loss

Joydeep Das, Rashmin Patel, Vinod Pankajakshan
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引用次数: 4

Abstract

The emerging field of Computer Vision has found enormous applications in our day-to-day lives and Medical Image Processing is one of the most prominent fields among them. Brain Tumor Segmentation is an important and challenging task because of the variety in shapes, sizes and texture content of the various types of brain tumors. Specifically, MICCAI BraTS organizes Brain Tumor Segmentation challenge every year. Since the evolution of CNNs it has obtained state-of-the-art results in the majority of computer vision related tasks. On BraTS Challenge 2017, an assemble average of various CNN models (EMMA) holds the state-of-the-art performance. In this paper, we have proposed a model inspired by the classic Generative Adversarial Network (GAN). The proposed network has two models namely, Generator or Segmentor which generates label map of the input image and a Discriminator which helps the Generator model for an optimum solution by taking into account both short as well as long-distance spatial correlations between pixels with the help of a novel multi-scale loss function. The proposed architecture has three GANs in a cascaded fashion, each for Whole Tumor, Tumor Core and Enhancing Tumor, where the former network helps in effective reduction of false positives for the later networks. Our method also employs a multi-scale loss function derived from intermediate layers of Discriminator rather than depending just on a final layer cross-entropy loss. A mutli-scale loss function also reduces unnecessary smoothing on contours. The proposed method performed comparatively better than the state-of-the-art techniques, having Dice scores of 0.820, 0.874 and 0.783 for Enhancing Tumor, Whole Tumor and Tumor Core respectively.
基于鉴别器损失的脑肿瘤分割
计算机视觉这一新兴领域在我们的日常生活中有着巨大的应用,医学图像处理是其中最突出的领域之一。由于不同类型的脑肿瘤在形状、大小和纹理含量方面存在差异,因此脑肿瘤分割是一项重要而具有挑战性的任务。具体来说,MICCAI BraTS每年都会组织脑肿瘤分割挑战赛。自cnn发展以来,它在大多数计算机视觉相关任务中获得了最先进的结果。在2017年BraTS挑战赛上,各种CNN模型(EMMA)的集合平均值具有最先进的性能。在本文中,我们提出了一个受经典生成对抗网络(GAN)启发的模型。所提出的网络有两个模型,即生成器或分割器,它生成输入图像的标签映射,以及鉴别器,它通过考虑像素之间的短距离和长距离空间相关性,帮助生成器模型在新的多尺度损失函数的帮助下获得最佳解决方案。所提出的体系结构以级联的方式具有三个gan,分别用于整个肿瘤、肿瘤核心和增强肿瘤,其中前一个网络有助于有效减少后一个网络的误报。我们的方法还采用了从鉴别器的中间层派生的多尺度损失函数,而不仅仅依赖于最后一层的交叉熵损失。多尺度损失函数还减少了轮廓上不必要的平滑。该方法在增强肿瘤、整体肿瘤和肿瘤核心方面的Dice得分分别为0.820、0.874和0.783,相对于目前的技术效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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