论文标题
DEEPCSR:一种3D深度学习方法,用于皮质表面重建
DeepCSR: A 3D Deep Learning Approach for Cortical Surface Reconstruction
论文作者
论文摘要
神经退行性疾病的研究依赖于磁共振成像(MRI)对脑皮质的重建和分析。该任务的传统框架(例如FreeSurfer需求漫长的运行时间),而其加速变体的快速效果仍然依赖于Voxel-wise Sementation,其分辨率受到限制,该分段限制了将狭窄的连续物体捕获为皮质表面。考虑到这些局限性,我们提出了DEEPCSR,这是MRI的3D深度学习框架。为此,我们训练具有超柱特征的神经网络模型,以预测脑模板空间中点的隐式表面表示。训练后,通过评估特定坐标处的表面表示,并随后应用拓扑校正算法和等音表面提取方法来获得所需细节的皮质表面。由于这种方法的连续性及其超柱特征方案的功效,DEEPCSR有效地以高分辨率的高分辨率重建皮质表面,可在皮质折叠中捕获细节。此外,与广泛使用的FreeSurfer工具箱及其深度学习动力的快速冲浪器相比,DEEPCSR的准确,更精确,更快,可以从MRI重建皮质表面,这应该促进大型医学研究和新的医疗保健应用。
The study of neurodegenerative diseases relies on the reconstruction and analysis of the brain cortex from magnetic resonance imaging (MRI). Traditional frameworks for this task like FreeSurfer demand lengthy runtimes, while its accelerated variant FastSurfer still relies on a voxel-wise segmentation which is limited by its resolution to capture narrow continuous objects as cortical surfaces. Having these limitations in mind, we propose DeepCSR, a 3D deep learning framework for cortical surface reconstruction from MRI. Towards this end, we train a neural network model with hypercolumn features to predict implicit surface representations for points in a brain template space. After training, the cortical surface at a desired level of detail is obtained by evaluating surface representations at specific coordinates, and subsequently applying a topology correction algorithm and an isosurface extraction method. Thanks to the continuous nature of this approach and the efficacy of its hypercolumn features scheme, DeepCSR efficiently reconstructs cortical surfaces at high resolution capturing fine details in the cortical folding. Moreover, DeepCSR is as accurate, more precise, and faster than the widely used FreeSurfer toolbox and its deep learning powered variant FastSurfer on reconstructing cortical surfaces from MRI which should facilitate large-scale medical studies and new healthcare applications.