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首页> 外文期刊>NeuroImage >Frequency-dependent functional connectivity within resting-state networks: An atlas-based MEG beamformer solution
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Frequency-dependent functional connectivity within resting-state networks: An atlas-based MEG beamformer solution

机译:静态网络中与频率相关的功能连接性:基于图集的MEG波束形成器解决方案

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摘要

The brain consists of functional units with more-or-less specific information processing capabilities, yet cognitive functions require the co-ordinated activity of these spatially separated units. Magnetoencephalography (MEG) has the temporal resolution to capture these frequency-dependent interactions, although, due to volume conduction and field spread, spurious estimates may be obtained when functional connectivity is estimated on the basis of the extra-cranial recordings directly. Connectivity estimates on the basis of reconstructed sources may similarly be affected by biases introduced by the source reconstruction approach.Here we propose an analysis framework to reliably determine functional connectivity that is based around two main ideas: (i) functional connectivity is computed for a set of atlas-based ROIs in anatomical space that covers almost the entire brain, aiding the interpretation of MEG functional connectivityetwork studies, as well as the comparison with other modalities; (ii) volume conduction and similar bias effects are removed by using a functional connectivity estimator that is insensitive to these effects, namely the Phase Lag Index (PLI).Our analysis approach was applied to eyes-closed resting-state MEG data for thirteen healthy participants. We first demonstrate that functional connectivity estimates based on phase coherence, even at the source-level, are biased due to the effects of volume conduction and field spread. In contrast, functional connectivity estimates based on PLI are not affected by these biases. We then looked at mean PLI, or weighted degree, over areas and subjects and found significant mean connectivity in three (alpha, beta, gamma) of the five (including theta and delta) classical frequency bands tested. These frequency-band dependent patterns of resting-state functional connectivity were distinctive; with the alpha and beta band connectivity confined to posterior and sensorimotor areas respectively, and with a generally more dispersed pattern for the gamma band. Generally, these patterns corresponded closely to patterns of relative source power, suggesting that the most active brain regions are also the ones that are most-densely connected.Our results reveal for the first time, using an analysis framework that enables the reliable characterisation of resting-state dynamics in the human brain, how resting-state networks of functionally connected regions vary in a frequency-dependent manner across the cortex.
机译:大脑由具有或多或少的特定信息处理能力的功能单元组成,但是认知功能需要这些空间上分离的单元的协调活动。磁脑电图(MEG)具有捕捉这些频率依赖性相互作用的时间分辨率,尽管由于体积传导和场扩散,当直接根据颅外记录估算功能连接性时,可能会得到虚假的估算。基于重构源的连通性估计可能同样受到源重构方法引入的偏差的影响。在此,我们提出一个分析框架来可靠地确定功能连通性,该框架基于两个主要思想:(i)为一组计算功能连通性在几乎覆盖整个大脑的解剖空间中基于图集的ROI,有助于MEG功能连接/网络研究的解释以及与其他方式的比较; (ii)使用对这些影响不敏感的功能连接估计器(即相位滞后指数(PLI))来消除体积传导和类似的偏见影响。我们的分析方法被应用于十三眼健康的闭眼静息MEG数据参与者。我们首先证明,即使在源级,基于相位相干性的功能连接性估计也会由于体积传导和场扩散的影响而产生偏差。相反,基于PLI的功能连接性估计不受这些偏差的影响。然后,我们查看了区域和对象的平均PLI或加权度,发现在五个测试的经典频带(包括theta和delta)中的三个(alpha,beta,gamma)具有显着的平均连通性。这些依赖于频带的静止状态功能连通性模式是独特的。 α和β谱带的连通性分别限制在后部和感觉运动区域,而γ谱带的分布通常较为分散。通常,这些模式与相对源功率的模式非常接近,这表明最活跃的大脑区域也是最紧密连接的区域。我们的结果首次使用了能够对静息进行可靠表征的分析框架来揭示人脑中的动态状态变化,功能连接区域的静止状态网络如何在整个皮质中以频率依赖的方式变化。

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