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Multimodal Cortical Parcellation Based on Anatomical and Functional Brain Connectivity

机译:基于解剖学和功能性大脑连通性的多峰皮质区分开

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Reliable cortical parcellation is a crucial step in human brain network analysis since incorrect definition of nodes may invalidate the inferences drawn from the network. Cortical parcellation is typically cast as an unsupervised clustering problem on functional magnetic resonance imaging (fMRI) data, which is particularly challenging given the pronounced noise in fMRI acquisitions. This challenge manifests itself in rather inconsistent parcellation maps generated by different methods. To address the need for robust methodologies to parcellate the brain, we propose a multimodal cortical parcellation framework based on fused diffusion MRI (dMRI) and fMRI data analysis. We argue that incorporating anatomical connectivity information into parcellation is beneficial in suppressing spurious correlations commonly observed in fMRI analyses. Our approach adaptively determines the weighting of anatomical and functional connectivity information in a data-driven manner, and incorporates a neighborhood-informed affnity matrix that was recently shown to provide robustness against noise. To validate, we compare par-cellations obtained via normalized cuts on unimodal vs. multimodal data from the Human Connectome Project. Results demonstrate that our proposed method better delineates spatially contiguous parcels with higher test-retest reliability and improves inter-subject consistency.
机译:可靠的皮层剥离是人脑网络分析中的关键步骤,因为节点的错误定义可能会使从网络中得出的推论无效。在功能磁共振成像(fMRI)数据上,皮层剥离通常被视为无监督的聚类问题,考虑到fMRI采集中的明显噪声,这尤其具有挑战性。这种挑战体现在由不同方法生成的不一致的碎片图上。为了满足需要强大的方法来分割大脑的需求,我们提出了一种基于融合扩散MRI(dMRI)和fMRI数据分析的多峰皮质分割框架。我们认为,将解剖学连通性信息整合到细胞碎片中有助于抑制功能磁共振成像分析中通常观察到的虚假相关性。我们的方法以数据驱动的方式自适应地确定解剖结构和功能连接性信息的权重,并结合了最近被证明可提供抗噪声鲁棒性的邻域信息相似度矩阵。为了验证,我们比较了通过人类连接组项目的单峰和多峰数据的归一化割获得的零碎细胞。结果表明,我们提出的方法可以更好地描绘空间连续的宗地,具有更高的重测信度,并改善了对象间的一致性。

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