Quinn Andrew J, Vidaurre Diego, Abeysuriya Romesh, Becker Robert, Nobre Anna C, Woolrich Mark W
Oxford Centre for Human Brain Activity, University of Oxford, Oxford, United Kingdom.
Wellcome Centre for Integrative Neuroimaging, University of Oxford, Oxford, United Kingdom.
Front Neurosci. 2018 Aug 28;12:603. doi: 10.3389/fnins.2018.00603. eCollection 2018.
Complex thought and behavior arise through dynamic recruitment of large-scale brain networks. The signatures of this process may be observable in electrophysiological data; yet robust modeling of rapidly changing functional network structure on rapid cognitive timescales remains a considerable challenge. Here, we present one potential solution using Hidden Markov Models (HMMs), which are able to identify brain states characterized by engaging distinct functional networks that reoccur over time. We show how the HMM can be inferred on continuous, parcellated source-space Magnetoencephalography (MEG) task data in an unsupervised manner, without any knowledge of the task timings. We apply this to a freely available MEG dataset in which participants completed a face perception task, and reveal task-dependent HMM states that represent whole-brain dynamic networks transiently bursting at millisecond time scales as cognition unfolds. The analysis pipeline demonstrates a general way in which the HMM can be used to do a statistically valid whole-brain, group-level task analysis on MEG task data, which could be readily adapted to a wide range of task-based studies.
复杂的思维和行为是通过大规模脑网络的动态募集产生的。这一过程的特征可能在电生理数据中得以观察;然而,在快速认知时间尺度上对快速变化的功能网络结构进行稳健建模仍然是一项巨大挑战。在此,我们提出一种使用隐马尔可夫模型(HMM)的潜在解决方案,该模型能够识别以参与随时间反复出现的不同功能网络为特征的脑状态。我们展示了如何以无监督的方式在连续的、经分割的源空间脑磁图(MEG)任务数据上推断HMM,而无需任何关于任务时间安排的知识。我们将此应用于一个可免费获取的MEG数据集,其中参与者完成了一项面部感知任务,并揭示了与任务相关的HMM状态,这些状态代表了随着认知展开在毫秒时间尺度上瞬间爆发的全脑动态网络。该分析流程展示了一种通用方法,通过这种方法HMM可用于对MEG任务数据进行具有统计有效性的全脑、组水平任务分析,并且可以很容易地应用于广泛的基于任务的研究。