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Multiscale Bayesian state-space model for Granger causality analysis of brain signal

机译:MultiScale Bayesian状态空间模型,用于脑信号的格兰杰因果区分析

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Modelling time-varying and frequency-specific relationships between two brain signals is becoming an essential methodological tool to answer theoretical questions in experimental neuroscience. In this article, we propose to estimate a frequency Granger causality statistic that may vary in time in order to evaluate the functional connections between two brain regions during a task. We use for that purpose an adaptive Kalman filter type of estimator of a linear Gaussian vector autoregressive model with coefficients evolving over time. The estimation procedure is achieved through variational Bayesian approximation and is extended for multiple trials. This Bayesian State Space (BSS) model provides a dynamical Granger-causality statistic that is quite natural. We propose to extend the BSS model to include the a trous Haar decomposition. This wavelet-based forecasting method is based on a multiscale resolution decomposition of the signal using the redundant a trous wavelet transform and allows us to capture short- and long-range dependencies between signals. Equally importantly it allows us to derive the desired dynamical and frequency-specific Granger-causality statistic. The application of these models to intracranial local field potential data recorded during a psychological experimental task shows the complex frequency-based cross-talk between amygdala and medial orbito-frontal cortex.
机译:两个脑信号之间的建模时变和频率特定关系正在成为一种在实验神经科学中回答理论问题的基本方法工具。在本文中,我们建议估计可能随时间变化的频率格子因果关系统计,以便在任务期间评估两个大脑区域之间的功能连接。我们用于此目的是一种带有系数随时间发展的线性高斯向量自回归模型的估计器的自适应卡尔曼滤波器类型。通过变分贝叶斯近似来实现估计程序,并且延长多次试验。这种贝叶斯状态空间(BSS)模型提供了一种相当自然的动态格兰杰 - 因果统计。我们建议将BSS模型扩展到包括HAAR分解。基于小波的预测方法基于使用冗余的HRET小波变换的信号的多尺度分辨率分解,并允许我们捕获信号之间的短路和远程依赖性。同样重要的是,它允许我们推导出所需的动态和频率特定的格兰杰 - 因果统计。这些模型在心理实验任务期间记录的颅内局部场势数据的应用显示了杏仁塔和内侧玻璃额颅内皮质之间的复杂频率的串扰。

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