首页> 美国卫生研究院文献>Frontiers in Neuroscience >The Voxel-Wise Functional Connectome Can Be Efficiently Derived from Co-activations in a Sparse Spatio-Temporal Point-Process
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The Voxel-Wise Functional Connectome Can Be Efficiently Derived from Co-activations in a Sparse Spatio-Temporal Point-Process

机译:可以从稀疏的时空点过程中的共激活有效地获得Voxel-Wise功能连接套

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摘要

Large efforts are currently under way to systematically map functional connectivity between all pairs of millimeter-scale brain regions based on large neuroimaging databases. The exploratory unraveling of this “functional connectome” based on functional Magnetic Resonance Imaging (fMRI) can benefit from a better understanding of the contributors to resting state functional connectivity. In this work, we introduce a sparse representation of fMRI data in the form of a discrete point-process encoding high-amplitude events in the blood oxygenation level-dependent (BOLD) signal and we show it contains sufficient information for the estimation of functional connectivity between all pairs of voxels. We validate this method by replicating results obtained with standard whole-brain voxel-wise linear correlation matrices in two datasets. In the first one (n = 71), we study the changes in node strength (a measure of network centrality) during deep sleep. The second is a large database (n = 1147) of subjects in which we look at the age-related reorganization of the voxel-wise network of functional connections. In both cases it is shown that the proposed method compares well with standard techniques, despite requiring only data on the order of 1% of the original BOLD signal time series. Furthermore, we establish that the point-process approach does not reduce (and in one case increases) classification accuracy compared to standard linear correlations. Our results show how large fMRI datasets can be drastically simplified to include only the timings of large-amplitude events, while still allowing the recovery of all pair-wise interactions between voxels. The practical importance of this dimensionality reduction is manifest in the increasing number of collaborative efforts aiming to study large cohorts of healthy subjects as well as patients suffering from brain disease. Our method also suggests that the electrophysiological signals underlying the dynamics of fMRI time series consist of all-or-none temporally localized events, analogous to the avalanches of neural activity observed in recordings of local field potentials (LFP), an observation of potentially high neurobiological relevance.
机译:当前正在进行大量努力,以基于大型神经影像数据库系统地绘制所有成对的毫米级大脑区域对之间的功能连接。对基于功能磁共振成像(fMRI)的“功能连接体”的探索性探索可得益于对静止状态功能连接性贡献者的更好理解。在这项工作中,我们以离散点过程的形式介绍fMRI数据的稀疏表示,该点过程在血液氧合水平依赖性(BOLD)信号中编码高振幅事件,并且表明它包含足够的信息来估计功能连通性在所有成对的体素之间。我们通过在两个数据集中复制使用标准全脑体素方式线性相关矩阵获得的结果来验证该方法。在第一个(n = 71)中,我们研究了深度睡眠期间节点强度的变化(网络中心度的度量)。第二个是一个大型的主题数据库(n = 1147),在该数据库中,我们研究了功能连接体素网络的与年龄相关的重组。在这两种情况下,都表明,尽管仅要求原始BOLD信号时间序列的1%左右的数据,但所提出的方法与标准技术具有很好的比较。此外,我们确定,与标准线性相关性相比,点处理方法不会降低(在一种情况下会提高)分类精度。我们的结果表明,可以大大简化大型fMRI数据集,使其仅包含大振幅事件的时间,同时仍允许恢复体素之间的所有成对相互作用。这种降维的实际重要性体现在越来越多的旨在研究健康受试者以及患有脑疾病的患者的协作研究中。我们的方法还表明,功能磁共振成像时间序列动力学基础的电生理信号包括所有或全部暂时性的局部事件,类似于在局部场电位(LFP)记录中观察到的神经活动雪崩,这是对潜在的高神经生物学现象的观察关联。

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