通过匹配功能连接的层次模式对人类皮层的空间对齐

Hongming Li, Yong Fan
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引用次数: 3

摘要

提出了一种新的皮质表面配准方法,通过最大化从fMRI数据中提取的局部功能连接层次模式的相似性,对受试者间皮质表面进行空间对齐。fMRI数据的皮质表面在多个空间尺度上具有层次结构,其特征是表面的每个顶点与其皮质薄片上的空间邻居的功能连接信息。在给定的尺度下,每个顶点的功能连通性信息被表示为顶点及其邻居的功能信号之间的功能连通性度量的概率分布,从而使功能连通性信息与顶点的空间位置无关。通过匹配不同皮质表面的功能连通性信息,在球形魔鬼框架下实现皮质表面配准。对不同受试者的任务和静息状态fMRI数据进行配准的实验结果表明,该算法可以提高不同受试者皮层表面的功能一致性,与目前最先进的皮层表面配准技术相比具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial alignment of human cortex by matching hierarchical patterns of functional connectivity
A novel cortical surface registration method is proposed to spatially align inter-subject cortical surfaces by maximizing the similarity of their hierarchical patterns of local functional connectivity extracted from fMRI data. The cortical surface with fMRI data is characterized by functional connectivity information for each vertex of the surface to its spatial neighbors on the cortex sheet at multiple spatial scales with a hierarchical structure. Each vertex's functional connectivity information at a given scale is represented as a probability distribution of functional connectivity measures between functional signals of the vertex and its neighbors so that the functional connectivity information is independent on the vertices' spatial locations. The cortical surface registration is implemented under the spherical demons framework by matching different cortical surfaces' functional connectivity information. The experimental results for the registration of both task and resting-state fMRI data across different subjects have demonstrated that the proposed algorithm could improve the functional consistency of cortical surfaces of different subjects, and compared favorably with state-of-the-art cortical surface registration techniques.
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