SurfNN: Joint Reconstruction of Multiple Cortical Surfaces from Magnetic Resonance Images.

Hao Zheng, Hongming Li, Yong Fan
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Abstract

To achieve fast, robust, and accurate reconstruction of the human cortical surfaces from 3D magnetic resonance images (MRIs), we develop a novel deep learning-based framework, referred to as SurfNN, to reconstruct simultaneously both inner (between white matter and gray matter) and outer (pial) surfaces from MRIs. Different from existing deep learning-based cortical surface reconstruction methods that either reconstruct the cortical surfaces separately or neglect the interdependence between the inner and outer surfaces, SurfNN reconstructs both the inner and outer cortical surfaces jointly by training a single network to predict a midthickness surface that lies at the center of the inner and outer cortical surfaces. The input of SurfNN consists of a 3D MRI and an initialization of the midthickness surface that is represented both implicitly as a 3D distance map and explicitly as a triangular mesh with spherical topology, and its output includes both the inner and outer cortical surfaces, as well as the midthickness surface. The method has been evaluated on a large-scale MRI dataset and demonstrated competitive cortical surface reconstruction performance.

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SurfNN:从磁共振图像中联合重建多个皮层表面。
为了从3D磁共振图像(MRI)中快速、稳健和准确地重建人类皮层表面,我们开发了一种新的基于深度学习的框架,称为SurfNN,以从MRI中同时重建内部(白质和灰质之间)和外部(pial)表面。与现有的基于深度学习的皮层表面重建方法不同,该方法要么单独重建皮层表面,SurfNN通过训练单个网络来预测位于皮层内外表面中心的中厚表面,从而联合重建皮层内外表面。SurfNN的输入包括3D MRI和中厚表面的初始化,该表面隐式表示为3D距离图,显式表示为具有球形拓扑结构的三角形网格,其输出包括皮层内表面和皮层外表面以及中厚表面。该方法已在大规模MRI数据集上进行了评估,并证明了具有竞争力的皮层表面重建性能。
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