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Fine granularity parcellation of gyrus via fiber shape and connectivity based features

机译:通过纤维形状和基于连通性的特征实现回旋的细粒度分割

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In vivo parcellation of the cerebral cortex via non-invasive neuroimaging techniques has been in active research for over a decade. A variety of model-driven or data-driven computational approaches have been proposed to parcellate the cortex. A fundamental issue in these parcellation methodologies is the features or attributes used to define boundaries between cortical regions. This paper proposes a novel DTI-derived fiber shape and connectivity based feature for the parcellation of cortical gyrus into fine granularity segments. The gyrus parcellation is formulated as a surface vertex clustering problem, in which both of feature similarity and vertex adjacency are used to define the distance between vertices. The affinity propagation algorithm is employed for the vertices clustering. This methodology is developed and evaluated using the precentral gyrus (primary motor cortex) as a test bed, and motor task-based fMRI is used to validate the parcellation results. The experimental results show that the precentral gyrus can be consistently parcellated into 3 broad segments on both hemispheres across different subjects using the proposed method, which is reasonable according to neuroscience knowledge and motor task-based fMRI activations.
机译:十多年来,通过非侵入性神经成像技术对大脑皮层进行的体内细胞分裂研究一直处于活跃状态。已经提出了各种模型驱动或数据驱动的计算方法来分割皮质。这些分割方法中的一个基本问题是用于定义皮层区域之间边界的特征或属性。本文提出了一种新的基于DTI的纤维形状和连通性特征,用于将皮层回旋细胞分成细小颗粒段。陀螺分割被表述为表面顶点聚类问题,其中特征相似度和顶点邻接都用于定义顶点之间的距离。相似性传播算法用于顶点聚类。这种方法是使用前中央回(初级运动皮层)作为测试床来开发和评估的,基于运动任务的功能磁共振成像用于验证细胞分裂结果。实验结果表明,采用神经网络方法和基于运动任务的功能性核磁共振成像激活是合理的,所提出的方法可以将中枢前回在不同受试者的两个半球上一分为三。

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