| Literature DB >> 32180666 |
Fenqiang Zhao1,2, Shunren Xia1, Zhengwang Wu2, Dingna Duan1,2, Li Wang2, Weili Lin2, John H Gilmore3, Dinggang Shen2, Gang Li2.
Abstract
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.Entities:
Keywords: Convolutional Neural Network; Cortical Surface; Parcellation; Prediction; Spherical U-Net
Year: 2019 PMID: 32180666 PMCID: PMC7074928 DOI: 10.1007/978-3-030-20351-1_67
Source DB: PubMed Journal: Inf Process Med Imaging ISSN: 1011-2499