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Functional magnetic resonance imaging progressive deformable registration based on a cascaded convolutional neural network

机译:基于级联卷积神经网络的功能磁共振成像逐行变形登记

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Background: Intersubject registration of functional magnetic resonance imaging (fMRI) is necessary for group analysis. Accurate image registration can significantly improve the results of statistical analysis. Traditional methods are achieved by using high-resolution structural images or manually extracting functional information. However, structural alignment does not necessarily lead to functional alignment, and manually extracting functional features is complicated and time-consuming. Recent studies have shown that deep learning-based methods can be used for deformable image registration. Methods: We proposed a deep learning framework with a three-cascaded multi-resolution network (MR-Net) to achieve deformable image registration. MR-Net separately extracts the features of moving and fixed images via a two-stream path, predicts a sub-deformation field, and is cascaded three times. The moving and fixed images’ deformation field is composed of all sub-deformation fields predicted by the MR-Net. We imposed large smoothness constraints on all sub-deformation fields to ensure their smoothness. Our proposed architecture can complete the progressive registration process to ensure the topology of the deformation field. Results: We implemented our method on the 1000 Functional Connectomes Project (FCP) and Eyes Open Eyes Closed fMRI datasets. Our method increased the peak t values in six brain functional networks to 19.8, 17.8, 15.0, 16.4, 17.0, and 13.2. Compared with traditional methods [i.e., FMRIB Software Library (FSL) and Statistical Parametric Mapping (SPM)] and deep learning networks [i.e., VoxelMorph (VM) and Volume Tweening Network (VTN)], our method improved 47.58%, 11.88%, 18.60%, and 15.16%, respectively. Conclusions: Our three-cascaded MR-Net can achieve statistically significant improvement in functional consistency across subjects.
机译:背景:函数磁共振成像(FMRI)的运动器注册是组分析所必需的。准确的图像配准可以显着提高统计分析的结果。通过使用高分辨率结构图像或手动提取功能信息来实现传统方法。然而,结构对准不一定导致功能对准,并且手动提取功能特征是复杂且耗时的。最近的研究表明,基于深度的学习方法可用于可变形图像配准。方法:我们提出了一个与三级级联的多分辨率网络(MR-Net)的深度学习框架,以实现可变形的图像配准。 MR-Net分别通过双流路径分别提取移动和固定图像的特征,预测子变形字段,并级联三次。移动和固定图像的变形字段由MR-Net预测的所有子变形字段组成。我们对所有子变形领域的平滑度限制施加了大量的平滑度,以确保它们的光滑度。我们所提出的架构可以完成逐步注册过程,以确保变形字段的拓扑。结果:我们在1000功能Connectomes项目(FCP)上实施了我们的方法,眼睛睁开眼睛关闭了FMRI数据集。我们的方法将六个脑功能网络中的峰值T值增加到19.8,17.8,15.0,16.4,17.0和13.2。与传统方法相比[即FMRIB软件库(FSL)和统计参数映射(SPM)]和深度学习网络[IE,VoxelMorph(VM)和卷吐温网络(VTN)],我们的方法改善了47.58%,11.88%, 18.60%和15.16%。结论:我们的三级级联MR-Net可以实现跨对象的功能一致性的统计上显着改善。

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