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Cortical surface based identification of brain networks using high spatial resolution resting state FMRI data

机译:使用高空间分辨率静止状态FMRI数据的基于皮质表面的大脑网络识别

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Resting state fMRI (rsfMRI) has been demonstrated to be an effective modality by which to explore the functional networks of the human brain, as the low-frequency oscillations in rsfMRI time courses between spatially distant brain regions show the evidence of correlated activity patterns in the brain. This paper proposes a novel surface-based data-driven framework to explore these networks through the use of high resolution rsfMRI data. Guided by DTI defined fiber pathways and constrained by the gray matter, we map the rsfMRI BOLD signals onto the cortical surface generated by DTI-based tissue segmentation. We then use a data-driven affinity propagation clustering algorithm to identify these functional networks. Our experimental results demonstrate that the framework has high reproducibility and that several networks are detected reliably among individual subjects. Furthermore, our results exhibit that functional networks are highly correlated with structural connections. Finally, our framework is able to reveal visual sub-networks, indicating its potential role in sub-network exploration.
机译:静止状态功能磁共振成像(rsfMRI)已被证明是探索人脑功能网络的一种有效方式,因为rsfMRI时空分布在距离较远的大脑区域之间的低频振荡显示出大脑中相关活动模式的证据。脑。本文提出了一种新颖的基于表面的数据驱动框架,以通过使用高分辨率rsfMRI数据来探索这些网络。在DTI定义的纤维途径的指导下,并受灰质的约束,我们将rsfMRI BOLD信号映射到基于DTI的组织分割产生的皮质表面上。然后,我们使用数据驱动的亲和力传播聚类算法来识别这些功能网络。我们的实验结果表明,该框架具有很高的可重复性,并且可以在各个主题之间可靠地检测到多个网络。此外,我们的结果表明功能网络与结构连接高度相关。最后,我们的框架能够揭示可视子网,表明其在子网探索中的潜在作用。

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