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Group-wise Consistent Cortical Parcellation Based on Connectional Profiles

机译:基于连接配置文件的分组方式一致皮层​​分割

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摘要

For decades, seeking common, consistent and corresponding anatomical/functional regions across individual brains via cortical parcellation has been a longstanding challenging problem. In our opinion, two major barriers to solve this problem are determining meaningful cortical boundaries that segregate homogeneous regions and establishing correspondences among parcellated regions of multiple brains. To establish a corresponding system across subjects, we recently developed the Dense Individualized and Common Connectivity-based Cortical Landmarks (DICCCOL) system which possesses group-wise consistent white matter fiber connection patterns across individuals and thus provides a dense map of corresponding cortical landmarks. Despite this useful property, however, the DICCCOL landmarks are still far from covering the whole cerebral cortex and do not provide clear structural/functional cortical boundaries. To address the above limitation while leveraging the advantage of DICCCOL, in this paper, we present a novel approach for group-wise consistent parcellation of the cerebral cortex via a hierarchical scheme. In each hierarchical level, DICCCOLs are used as corresponding samples to automatically determine the cluster number so that other cortical surface vertices are iteratively classified into corresponding clusters across subjects within a group-wise classification framework. Experimental results showed that this approach can achieve consistent fine-granularity cortical parcellation with intrinsically-established structural correspondences across individual brains. Besides, comparisons with resting-state and task-based fMRI datasets demonstrated that the group-wise parcellation boundaries segregate functionally homogeneous areas.
机译:数十年来,通过皮质细胞分裂在单个大脑中寻找共同的,一致的和相应的解剖/功能区域一直是一个长期的难题。我们认为,解决此问题的两个主要障碍是确定分隔同质区域的有意义的皮层边界,并在多个大脑的细小区域之间建立对应关系。为了建立跨学科的相应系统,我们最近开发了密集的基于个性化和通用连接性的皮质地标(DICCCOL)系统,该系统具有跨个体的逐组一致的白质纤维连接模式,从而提供了相应皮质地标的密集图。尽管具有这种有用的特性,但DICCCOL界标仍然远远不能覆盖整个大脑皮层,并且不能提供清晰的结构/功能皮质边界。为了解决上述限制,同时利用DICCCOL的优势,在本文中,我们提出了一种通过分层方案对大脑皮层进行逐组一致的分割的新方法。在每个层次级别中,将DICCCOL用作相应的样本,以自动确定簇数,以便将其他皮质表面顶点迭代地按组分类框架内的主题反复分类为相应的簇。实验结果表明,这种方法可以实现一致的细颗粒皮质小细胞分裂,并在各个大脑中固有地建立结构对应关系。此外,与静止状态和基于任务的功能磁共振成像数据集的比较表明,按组划分的边界将功能上均一的区域隔离开来。

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