Organ at Risk (OAR) segmentation from CT scans is a key component of the radiotherapy treatment workflow. In recent years, deep learning techniques have shown remarkable potential in automating this process. In this paper, we investigate the performance of Generative Adversarial Networks (GANs) compared to supervised learning approaches for segmenting OARs from CT images. We propose three GAN-based models with identical generator architectures but different discriminator networks. These models are compared with well-established CNN models, such as SE-ResUnet and DeepLabV3, using the StructSeg dataset, which consists of 50 annotated CT scans containing contours of six OARs. Our work aims to provide insight into the advantages and disadvantages of adversarial training in the context of OAR segmentation. The results are very promising and show that the proposed GAN-based approaches are similar or superior to their CNN-based counterparts, particularly when segmenting more challenging target organs.
翻译:器官风险(OAR)在CT扫描中的分割是放射治疗流程的关键组成部分。近年来,深度学习技术在自动化这一过程方面展现出了巨大的潜力。本文研究了对抗生成网络(GAN)和监督学习方法在从CT图像中分割OAR方面的性能。我们提出了三种基于GAN的模型,这些模型具有相同的生成器架构,但有不同的鉴别器网络。我们使用StructSeg数据集对这些模型进行了比较,该数据集包含50个带有六个OAR轮廓的注释CT扫描。我们的工作旨在为从对抗训练的上下文中分析OAR分割的优缺点提供见解。结果非常有前途,表明所提出的基于GAN的方法与基于CNN的方法相似或优于其对应的方法,特别是在分割更具挑战性的目标器官时。