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Using diffusion MRI to discriminate areas of cortical grey matter

机译:使用扩散MRI识别皮质灰质区域

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摘要

Cortical area parcellation is a challenging problem that is often approached by combining structural imaging (e.g., quantitative T1, diffusion-based connectivity) with functional imaging (e.g., task activations, topological mapping, resting state correlations). Diffusion MRI (dMRI) has been widely adopted to analyse white matter microstructure, but scarcely used to distinguish grey matter regions because of the reduced anisotropy there. Nevertheless, differences in the texture of the cortical 'fabric' have long been mapped by histologists to distinguish cortical areas. Reliable area-specific contrast in the dMRI signal has previously been demonstrated in selected occipital and sensorimotor areas. We expand upon these findings by testing several diffusion-based feature sets in a series of classification tasks. Using Human Connectome Project (HCP) 3T datasets and a supervised learning approach, we demonstrate that diffusion MRI is sensitive to architectonic differences between a large number of different cortical areas defined in the HCP parcellation. By employing a surface-based cortical imaging pipeline, which defines diffusion features relative to local cortical surface orientation, we show that we can differentiate areas from their neighbours with higher accuracy than when using only fractional anisotropy or mean diffusivity. The results suggest that grey matter diffusion may provide a new, independent source of information for dividing up the cortex.
机译:皮质区域分裂是一个具有挑战性的问题,通常通过将结构成像(例如,定量T1,基于扩散的连通性)与功能成像(例如,任务激活,拓扑映射,静止状态相关性)相结合来解决。扩散MRI(dMRI)已被广泛用于分析白质微观结构,但由于其各向异性降低,因此很少用于区分灰质区域。尽管如此,组织学家早已绘制出皮质“织物”质地的差异以区分皮质区域。先前已在选定的枕骨和感觉运动区域证明了dMRI信号中可靠的区域特定对比度。我们通过在一系列分类任务中测试几个基于扩散的功能集来扩展这些发现。使用人类Connectome Project(HCP)3T数据集和有监督的学习方法,我们证明了弥散MRI对HCP分割中定义的大量不同皮质区域之间的构造差异敏感。通过采用基于表面的皮质成像管线,该管线定义了相对于局部皮质表面取向的扩散特征,我们显示出与仅使用分数各向异性或平均扩散率相比,我们可以以更高的精度区分区域与相邻区域。结果表明,灰质扩散可能会提供一个新的,独立的信息来源,用于划分皮层。

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