论文标题

VOX2Cortex:通过3D MRI扫描与几何深神经网络从3D MRI扫描中快速显式重建皮质表面

Vox2Cortex: Fast Explicit Reconstruction of Cortical Surfaces from 3D MRI Scans with Geometric Deep Neural Networks

论文作者

Bongratz, Fabian, Rickmann, Anne-Marie, Pölsterl, Sebastian, Wachinger, Christian

论文摘要

从脑磁共振成像(MRI)扫描中重建皮质表面的重建对于对皮质厚度和硫磺形态的定量分析至关重要。尽管为此目的存在传统和深度基于学习的算法管道,但它们有两个主要缺点:多个小时(传统)或复杂的后处理,例如网状提取和拓扑校正(基于深度学习)。在这项工作中,我们解决了这两个问题,并提出了Vox2Cortex,这是一种基于深度学习的算法,它直接产生了皮质边界的拓扑正确的三维网格。 Vox2Cortex利用卷积和图形卷积神经网络将初始模板变形为由输入MRI扫描表示的皮质的密集折叠几何形状。我们在三个大脑MRI数据集的广泛实验中显示,我们的网格与通过现场最新方法重建的网格一样准确,而无需进行时间和资源密集的后处理。为了准确地重建紧密折叠的皮质,我们使用测试时间包含约168,000个顶点的网格工作,将深度显式重建方法扩展到新的水平。

The reconstruction of cortical surfaces from brain magnetic resonance imaging (MRI) scans is essential for quantitative analyses of cortical thickness and sulcal morphology. Although traditional and deep learning-based algorithmic pipelines exist for this purpose, they have two major drawbacks: lengthy runtimes of multiple hours (traditional) or intricate post-processing, such as mesh extraction and topology correction (deep learning-based). In this work, we address both of these issues and propose Vox2Cortex, a deep learning-based algorithm that directly yields topologically correct, three-dimensional meshes of the boundaries of the cortex. Vox2Cortex leverages convolutional and graph convolutional neural networks to deform an initial template to the densely folded geometry of the cortex represented by an input MRI scan. We show in extensive experiments on three brain MRI datasets that our meshes are as accurate as the ones reconstructed by state-of-the-art methods in the field, without the need for time- and resource-intensive post-processing. To accurately reconstruct the tightly folded cortex, we work with meshes containing about 168,000 vertices at test time, scaling deep explicit reconstruction methods to a new level.

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