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A multi-layer network approach to MEG connectivity analysis

机译:多层网络方法进行MEG连接分析

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摘要

Recent years have shown the critical importance of inter-regional neural network connectivity in supporting healthy brain function. Such connectivity is measurable using neuroimaging techniques such as MEG, however the richness of the electrophysiological signal makes gaining a complete picture challenging. Specifically, connectivity can be calculated as statistical interdependencies between neural oscillations within a large range of different frequency bands. Further, connectivity can be computed between frequency bands. This pan-spectral network hierarchy likely helps to mediate simultaneous formation of multiple brain networks, which support ongoing task demand. However, to date it has been largely overlooked, with many electrophysiological functional connectivity studies treating individual frequency bands in isolation. Here, we combine oscillatory envelope based functional connectivity metrics with a multi-layer network framework in order to derive a more complete picture of connectivity within and between frequencies. We test this methodology using MEG data recorded during a visuomotor task, highlighting simultaneous and transient formation of motor networks in the beta band, visual networks in the gamma band and a beta to gamma interaction. Having tested our method, we use it to demonstrate differences in occipital alpha band connectivity in patients with schizophrenia compared to healthy controls. We further show that these connectivity differences are predictive of the severity of persistent symptoms of the disease, highlighting their clinical relevance. Our findings demonstrate the unique potential of MEG to characterise neural network formation and dissolution. Further, we add weight to the argument that dysconnectivity is a core feature of the neuropathology underlying schizophrenia.
机译:近年来,显示了区域间神经网络连接对支持健康的大脑功能的至关重要。使用诸如MEG之类的神经影像技术可以测量这种连通性,但是电生理信号的丰富性使得获得完整的图像具有挑战性。具体而言,可以将连通性计算为不同频带的大范围内的神经振荡之间的统计相互依赖性。此外,可以计算频带之间的连接性。这种全谱网络层次结构可能有助于介导同时支持多个任务网络的多个大脑网络的形成。然而,迄今为止,它被很大程度上忽略了,许多电生理功能连接性研究孤立地处理了各个频带。在这里,我们将基于振荡包络的功能连通性指标与多层网络框架相结合,以得出频率内和频率之间连通性的更完整描述。我们使用在视觉运动任务期间记录的MEG数据测试此方法,突出显示了在β波段中运动网络的同时和瞬时形成,在γ波段中的视觉网络以及从β到γ的相互作用。测试了我们的方法后,我们用它来证明精神分裂症患者的枕骨α带连接性与健康对照相比有所不同。我们进一步表明,这些连通性差异可预测疾病持续症状的严重性,从而突出其临床相关性。我们的发现证明了MEG在表征神经网络形成和溶解方面的独特潜力。此外,我们加重了以下观点的论点,即连接不全是精神分裂症的神经病理学的核心特征。

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