论文标题
粗分辨分辨率 - 最佳网络(COSF-NET):4D-MRI的统一端到端神经网络,同时进行运动估计和超分辨率
Coarse-Super-Resolution-Fine Network (CoSF-Net): A Unified End-to-End Neural Network for 4D-MRI with Simultaneous Motion Estimation and Super-Resolution
论文作者
论文摘要
四维磁共振成像(4D-MRI)是图像引导放射治疗(IGRT)中肿瘤运动管理的新兴技术。然而,由于较长的收购时间和患者的呼吸差异,目前的4D-MRI遭受了低空间分辨率和强大的运动伪影。这些限制(如果无法正确管理)可能会对IGRT的治疗计划和交付产生不利影响。在本文中,我们开发了一个新颖的深度学习框架,称为“粗分辨率 - 五个网络”(COSF-NET),以实现统一模型中的同时运动估计和超分辨率。我们通过完全挖掘4D-MRI的固有属性来设计COSF-NET,并考虑到有限和不完美匹配的训练数据集。我们在多个实际患者数据集上进行了广泛的实验,以验证开发网络的可行性和鲁棒性。 Compared with existing networks and three state-of-the-art conventional algorithms, CoSF-Net not only accurately estimated the deformable vector fields between the respiratory phases of 4D-MRI but also simultaneously improved the spatial resolution of 4D-MRI with enhanced anatomic features, yielding 4D-MR images with high spatiotemporal resolution.
Four-dimensional magnetic resonance imaging (4D-MRI) is an emerging technique for tumor motion management in image-guided radiation therapy (IGRT). However, current 4D-MRI suffers from low spatial resolution and strong motion artifacts owing to the long acquisition time and patients' respiratory variations; these limitations, if not managed properly, can adversely affect treatment planning and delivery in IGRT. Herein, we developed a novel deep learning framework called the coarse-super-resolution-fine network (CoSF-Net) to achieve simultaneous motion estimation and super-resolution in a unified model. We designed CoSF-Net by fully excavating the inherent properties of 4D-MRI, with consideration of limited and imperfectly matched training datasets. We conducted extensive experiments on multiple real patient datasets to verify the feasibility and robustness of the developed network. Compared with existing networks and three state-of-the-art conventional algorithms, CoSF-Net not only accurately estimated the deformable vector fields between the respiratory phases of 4D-MRI but also simultaneously improved the spatial resolution of 4D-MRI with enhanced anatomic features, yielding 4D-MR images with high spatiotemporal resolution.