School of Computer Science, Sichuan University, China.
Department of Radiation Oncology, Cancer Center West China Hospital, Sichuan University, China.
Med Image Anal. 2022 Apr;77:102339. doi: 10.1016/j.media.2021.102339. Epub 2021 Dec 24.
Radiation therapy (RT) is regarded as the primary treatment for cancer in the clinic, aiming to deliver an accurate dose to the planning target volume (PTV) while protecting the surrounding organs at risk (OARs). To improve the effectiveness of the treatment planning, deep learning methods are widely adopted to predict dose distribution maps for clinical treatment planning. In this paper, we present a novel multi-constraint dose prediction model based on generative adversarial network, named Mc-GAN, to automatically predict the dose distribution map from the computer tomography (CT) images and the masks of PTV and OARs. Specifically, the generator is an embedded UNet-like structure with dilated convolution to capture both the global and local information. During the feature extraction, a dual attention module (DAM) is embedded to force the generator to take more heed of internal semantic relevance. To improve the prediction accuracy, two additional losses, i.e., the locality-constrained loss (LCL) and the self-supervised perceptual loss (SPL), are introduced besides the conventional global pixel-level loss and adversarial loss. Concretely, the LCL tries to focus on the predictions of locally important areas while the SPL aims to prevent the predicted dose maps from the possible distortion at the feature level. Evaluated on two in-house datasets, our proposed Mc-GAN has been demonstrated to outperform other state-of-the-art methods in almost all PTV and OARs criteria.
放射治疗(RT)被认为是癌症临床治疗的主要手段,旨在向计划靶区(PTV)提供准确的剂量,同时保护周围的危及器官(OARs)。为了提高治疗计划的有效性,深度学习方法被广泛用于预测临床治疗计划的剂量分布图。在本文中,我们提出了一种基于生成对抗网络的新型多约束剂量预测模型,称为 Mc-GAN,用于从计算机断层扫描(CT)图像以及 PTV 和 OARs 的掩模自动预测剂量分布图。具体来说,生成器是一个具有扩张卷积的嵌入式 UNet 结构,用于捕获全局和局部信息。在特征提取过程中,嵌入了双注意力模块(DAM),以迫使生成器更多地关注内部语义相关性。为了提高预测精度,除了传统的全局像素级损失和对抗损失外,还引入了两个附加损失,即局部约束损失(LCL)和自监督感知损失(SPL)。具体来说,LCL 试图关注局部重要区域的预测,而 SPL 旨在防止特征级别上预测的剂量图可能发生扭曲。在两个内部数据集上进行评估,我们的方法在几乎所有的 PTV 和 OARs 标准上都优于其他最先进的方法。