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A new hierarchical brain parcellation method based on discrete morse theory for functional MRI data

机译:基于离散莫尔斯理论的功能性MRI数据分层脑分割新方法

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Parcellation of the brain into functionally meaningful regions is a crucial step in studies of brain connectivity using complex network analysis methods based on resting-state functional MRI (rs-fMRI). With the recent development of fast acquisition sequences at ultra-high-field (7T), high-spatial-resolution rs-fMRI can now be collected from the whole-brain with sufficient temporal resolution to capture the slow haemodynamic fluctuations underlying functional brain connectivity. A method for obtaining individual brain parcel-lations based on rs-fMRI has recently been proposed, which grows a set of stable seeds into an initial detailed parcellation that is further clustered using a hierarchical approach that enforces spatial contiguity of the parcels. Smoothing is performed to remove spurious features before the growing step, which precludes the exploration of the ultra-high spatial resolution of our data. In this paper, we propose an approach for brain parcellation that takes advantage of the topological structure present in the spatial organization exhibited by rs-fMRI data, using methods based on discrete Morse theory and persistent homology. This framework provides a region importance measure derived from local functional homogeneity and a topologically-informed simplification procedure that enables the analysis of high resolution rs-fMRI data at different levels of detail.
机译:使用基于静止状态功能MRI(rs-fMRI)的复杂网络分析方法,将大脑分割成功能有意义的区域是研究大脑连通性的关键步骤。随着超高场(7T)快速采集序列的最新发展,现在可以从全脑中收集具有足够时间分辨率的高空间分辨率rs-fMRI,以捕获功能性大脑连接性背后的缓慢血流动力学波动。最近已经提出了一种基于rs-fMRI的获取单个脑部包裹的方法,该方法将一组稳定的种子生长为初始的详细区域,然后使用强制性区域连续性的分层方法将其进一步聚类。在增长步骤之前执行平滑操作以去除虚假特征,这排除了探索我们数据的超高空间分辨率的可能性。在本文中,我们提出了一种利用基于离散莫尔斯理论和持久同源性的方法,利用rs-fMRI数据显示的空间组织中存在的拓扑结构进行脑分裂的方法。该框架提供了一种从区域功能同质性和拓扑信息简化程序中得出的区域重要性度量,该方法可以分析不同细节级别的高分辨率rs-fMRI数据。

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