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A state-space model of cross-region dynamic connectivity in MEG/EEG

机译:MEG / EEG跨区域动态连接的状态模型

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Cross-region dynamic connectivity, which describes the spatio-temporal dependence of neural activity among multiple brain regions of interest (ROIs), can provide important information for understanding cognition. For estimating such connectivity, magnetoencephalography (MEG) and electroencephalography (EEG) are well-suited tools because of their millisecond temporal resolution. However, localizing source activity in the brain requires solving an under-determined linear problem. In typical two-step approaches, researchers first solve the linear problem with generic priors assuming independence across ROIs, and secondly quantify cross-region connectivity. In this work, we propose a one-step state-space model to improve estimation of dynamic connectivity. The model treats the mean activity in individual ROIs as the state variable and describes non-stationary dynamic dependence across ROIs using time-varying auto-regression. Compared with a two-step method, which first obtains the commonly used minimum-norm estimates of source activity, and then fits the auto-regressive model, our state-space model yielded smaller estimation errors on simulated data where the model assumptions held. When applied on empirical MEG data from one participant in a scene-processing experiment, our state-space model also demonstrated intriguing preliminary results, indicating leading and lagged linear dependence between the early visual cortex and a higher-level scene-sensitive region, which could reflect feedforward and feedback information flow within the visual cortex during scene processing.
机译:跨区域动态连接,描述了对感兴趣的多脑区域(ROI)之间神经活动的时空依赖性,可以提供理解认知的重要信息。为了估计这种连通性,磁性脑图(MEG)和脑电图(EEG)是由于其毫秒的时间分辨率而良好的工具。但是,大脑中的本地化源活动需要解决不确定的线性问题。在典型的两步方法中,研究人员首先通过跨ROI独立的泛型前导者解决线性问题,并对跨区域连接进行了量化。在这项工作中,我们提出了一步的状态空间模型,以提高动态连接的估计。该模型将单个ROI中的平均活动视为状态变量,并使用时变自动回归描述ROI跨ROI的非稳定性动态依赖性。与两步方法相比,首先获得源活动的常用最小规范估计,然后符合自动回归模型,我们的状态空间模型在模型假设所保持的模拟数据上产生较小的估计误差。当从一个参与者从一个参与者应用在场景处理实验上时,我们的状态模型也表现出有趣的初步结果,表明早期视觉皮层和更高级别的场景敏感区域之间的领先和滞后的线性依赖性在场景处理期间反映Visual Cortex内的前馈和反馈信息流。

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