论文标题
CBCT引导的自适应放射疗法的合成MRI ADED头颈器官 - 风险自动限制
Synthetic MRI-aided Head-and-Neck Organs-at-Risk Auto-Delineation for CBCT-guided Adaptive Radiotherapy
论文作者
论文摘要
目的:有机风险(OAR)描述是基于锥形束CT(CBCT)的自适应放射疗法计划的关键步骤,这可能是耗时,劳动密集型和主题到可定性过程的关键步骤。我们旨在开发一种由合成MRI辅助的全自动方法,以快速,准确的CBCT多器官轮廓在头颈(HN)癌症患者中。 MRI具有极好的软组织对比,而CBCT则提供了骨结构对比。使用MRI和CBCT提供的互补信息,预计可以在HN癌症患者中进行准确的多器官分割。在我们提出的方法中,首先使用给定CBCT的预先训练的周期符合生成的对抗网络合成MR图像。然后,使用双金字塔网络提取CBCT和合成MRI的特征,以最终描述器官。 CBCT图像及其相应的手动轮廓用作训练和测试所提出的模型的对。使用包括骰子相似系数(DSC)在内的定量指标来评估所提出的方法。对65例HN癌症患者的队列评估了该方法。从接受质子治疗的患者中收集了CBCT图像。总体而言,DSC值为0.87、0.79/0.79、0.89、0.90、0.75/0.77、0.86、0.66、0.66、0.78/0.78/0.77、0.96、0.96、0.89/0.89/0.89、0.89、0.832和0.84用于治疗计划的常用o,包括大脑词干,左/右/右/左/左/左/左/左/左/左/lary,左/分别达到了CHIASM,左/右视神经,口腔,左/右腮腺,咽部和脊髓。在这项研究中,我们开发了一种基于深度学习的合成MRI ADED HN CBCT自动分割方法。它提供了快速准确的桨自动限制方法,可用于自适应辐射疗法。
Purpose: Organ-at-risk (OAR) delineation is a key step for cone-beam CT (CBCT) based adaptive radiotherapy planning that can be a time-consuming, labor-intensive, and subject-to-variability process. We aim to develop a fully automated approach aided by synthetic MRI for rapid and accurate CBCT multi-organ contouring in head-and-neck (HN) cancer patients. MRI has superb soft-tissue contrasts, while CBCT offers bony-structure contrasts. Using the complementary information provided by MRI and CBCT is expected to enable accurate multi-organ segmentation in HN cancer patients. In our proposed method, MR images are firstly synthesized using a pre-trained cycle-consistent generative adversarial network given CBCT. The features of CBCT and synthetic MRI are then extracted using dual pyramid networks for final delineation of organs. CBCT images and their corresponding manual contours were used as pairs to train and test the proposed model. Quantitative metrics including Dice similarity coefficient (DSC) were used to evaluate the proposed method. The proposed method was evaluated on a cohort of 65 HN cancer patients. CBCT images were collected from those patients who received proton therapy. Overall, DSC values of 0.87, 0.79/0.79, 0.89/0.89, 0.90, 0.75/0.77, 0.86, 0.66, 0.78/0.77, 0.96, 0.89/0.89, 0.832, and 0.84 for commonly used OARs for treatment planning including brain stem, left/right cochlea, left/right eye, larynx, left/right lens, mandible, optic chiasm, left/right optic nerve, oral cavity, left/right parotid, pharynx, and spinal cord, respectively, were achieved. In this study, we developed a synthetic MRI-aided HN CBCT auto-segmentation method based on deep learning. It provides a rapid and accurate OAR auto-delineation approach, which can be used for adaptive radiation therapy.