MeshDeform: Surface Reconstruction of Subcortical Structures in Human Brain MRI.

Junjie Zhao, Siyuan Liu, Sahar Ahmad, Yap Pew-Thian
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Abstract

Surface reconstruction of cortical and subcortical structures is crucial for brain morphological studies. Existing deep learning surface reconstruction methods, such as DeepCSR and Vox2Surf, learn an implicit field function for computing the isosurface, but do not consider mesh topology. In this paper, we propose a novel and efficient deep learning mesh deformation network, called MeshDeform, to reconstruct topologically correct surfaces of subcortical structures using brain MR images. MeshDeform combines features extracted from a U-Net encoder with mesh deformation blocks to predict surfaces of subcortical structures by deforming spherical mesh templates. MeshDeform is able to reconstruct in less than 10 seconds the surfaces of a left-right pair of subcortical structures with subvoxel accuracy. Reconstruction of all 17 subcortical structures takes less than one and a half minutes. By contrast, Vox2Surf takes about 20-30 minutes for all subcortical structures. Visual and quantitative evaluation on the Human Connectome Project (HCP) dataset demonstrate that MeshDeform generates accurate subcortical surfaces in limited time while preserving mesh topology.

网格变形:人脑MRI皮层下结构的表面重建。
皮层和皮层下结构的表面重建对大脑形态学研究至关重要。现有的深度学习表面重建方法,如DeepCSR和Vox2Surf,学习用于计算等值面的隐式场函数,但不考虑网格拓扑。在本文中,我们提出了一种新的高效深度学习网格变形网络,称为MeshDeform,用于使用大脑MR图像重建皮层下结构的拓扑正确表面。MeshDeform将从U-Net编码器提取的特征与网格变形块相结合,通过使球形网格模板变形来预测皮层下结构的表面。MeshDeform能够在不到10秒内以亚体素精度重建左右一对皮层下结构的表面。所有17个皮质下结构的重建需要不到一分半钟的时间。相比之下,所有皮层下结构的Vox2Surf大约需要20-30分钟。对人类连接体项目(HCP)数据集的视觉和定量评估表明,MeshDeform在有限的时间内生成准确的皮层下表面,同时保留网格拓扑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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