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Spherical U-Net on Cortical Surfaces: Methods and Applications

机译:皮质表面上的球形U-Net:方法和应用

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Convolutional Neural Networks (CNNs) have been providing the state-of-the-art performance for learning-related problems involving 2D/3D images in Euclidean space. However, unlike in the Euclidean space, the shapes of many structures in medical imaging have a spherical topology in a manifold space, e.g., brain cortical or subcortical surfaces represented by triangular meshes, with large inter-subject and intra-subject variations in vertex number and local connectivity. Hence, there is no consistent neighborhood definition and thus no straightforward convolution/transposed convolution operations for cortical/subcortical surface data. In this paper, by leveraging the regular and consistent geometric structure of the resampled cortical surface mapped onto the spherical space, we propose a novel convolution filter analogous to the standard convolution on the image grid. Accordingly, we develop corresponding operations for convolution, pooling, and transposed convolution for spherical surface data and thus construct spherical CNNs. Specifically, we propose the Spherical U-Net architecture by replacing all operations in the standard U-Net with their spherical operation counterparts. We then apply the Spherical U-Net to two challenging and neuroscientifically important tasks in infant brains: cortical surface parcellation and cortical attribute map development prediction. Both applications demonstrate the competitive performance in the accuracy, computational efficiency, and effectiveness of our proposed Spherical U-Net, in comparison with the state-of-the-art methods.
机译:卷积神经网络(CNN)一直为涉及欧几里德空间中2D / 3D图像的学习相关问题提供最先进的性能。但是,与欧几里得空间不同,医学成像中许多结构的形状在流形空间中具有球形拓扑,例如,以三角形网格表示的大脑皮层或皮层下表面,在对象间和对象内的顶点数变化较大和本地连接。因此,没有一致的邻域定义,因此没有针对皮层/皮层下表面数据的直接卷积/转置卷积操作。在本文中,通过利用映射到球面空间上的重采样皮质表面的规则和一致的几何结构,我们提出了一种类似于图像网格上标准卷积的新颖卷积滤波器。因此,我们针对球面数据开发了用于卷积,合并和转置卷积的相应运算,从而构造了球形CNN。具体而言,我们提出了球形U-Net体系结构,方法是将标准U-Net中的所有操作替换为其球形操作对应项。然后,我们将球形U网应用于婴儿大脑中两个具有挑战性和神经科学上重要的任务:皮层表面碎裂和皮层属性图发展预测。与最先进的方法相比,这两个应用都证明了我们提出的球形U-Net在准确性,计算效率和有效性方面的竞争优势。

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