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Markov Model-Based Method to Analyse Time-Varying Networks in EEG Task-Related Data

机译:基于Markov模型的EEG任务相关数据时变网络分析方法

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摘要

The dynamic nature of functional brain networks is being increasingly recognized in cognitive neuroscience, and methods to analyse such time-varying networks in EEG/MEG data are required. In this work, we propose a pipeline to characterize time-varying networks in single-subject EEG task-related data and further, evaluate its validity on both simulated and experimental datasets. Pre-processing is done to remove channel-wise and trial-wise differences in activity. Functional networks are estimated from short non-overlapping time windows within each “trial,” using a sparse-MVAR (Multi-Variate Auto-Regressive) model. Functional “states” are then identified by partitioning the entire space of functional networks into a small number of groups/symbols via k-means clustering.The multi-trial sequence of symbols is then described by a Markov Model (MM). We show validity of this pipeline on realistic electrode-level simulated EEG data, by demonstrating its ability to discriminate “trials” from two experimental conditions in a range of scenarios. We then apply it to experimental data from two individuals using a Brain-Computer Interface (BCI) via a P300 oddball task. Using just the Markov Model parameters, we obtain statistically significant discrimination between target and non-target trials. The functional networks characterizing each ‘state’ were also highly similar between the two individuals. This work marks the first application of the Markov Model framework to infer time-varying networks from EEG/MEG data. Due to the pre-processing, results from the pipeline are orthogonal to those from conventional ERP averaging or a typical EEG microstate analysis. The results provide powerful proof-of-concept for a Markov model-based approach to analyzing the data, paving the way for its use to track rapid changes in interaction patterns as a task is being performed. MATLAB code for the entire pipeline has been made available.
机译:认知神经科学越来越认识到功能性大脑网络的动态性质,因此需要在EEG / MEG数据中分析此类时变网络的方法。在这项工作中,我们提出了一个管道来表征单主题脑电任务相关数据中的时变网络,并进一步评估其在模拟和实验数据集上的有效性。进行了预处理,以消除活动方面的渠道和试验方面的差异。使用稀疏MVAR(多变量自回归)模型,根据每个“试验”中较短的非重叠时间窗口来估算功能网络。然后,通过k均值聚类将功能网络的整个空间划分为少量的组/符号,从而识别功能的“状态”。然后,用马尔可夫模型(MM)描述符号的多重尝试序列。我们通过展示其区分一系列场景中两种实验条件下的“试验”的能力,在实际的电极级模拟EEG数据上显示了该管道的有效性。然后,我们通过P300奇数任务使用脑机接口(BCI)将其应用于两个人的实验数据。仅使用马尔可夫模型参数,我们就可以在目标试验和非目标试验之间获得统计学上的显着差异。两个人之间表征每个“状态”的功能网络也高度相似。这项工作标志着马尔可夫模型框架在从EEG / MEG数据推断时变网络方面的首次应用。由于进行了预处理,流水线的结果与常规ERP平均或典型的EEG微状态分析的结果正交。结果为基于马尔可夫模型的数据分析方法提供了有力的概念证明,为跟踪任务执行时交互模式的快速变化铺平了道路。整个管道的MATLAB代码已可用。

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