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一种用于多试验脑信号差异连通性的分层贝叶斯模型。

A Hierarchical Bayesian Model for Differential Connectivity in Multi-trial Brain Signals.

作者信息

Hu Lechuan, Guindani Michele, Fortin Norbert J, Ombao Hernando

机构信息

Department of Statistics, University of California, Irvine, USA.

Department of Neurobiology and Behavior, University of California, Irvine, USA.

出版信息

Econom Stat. 2020 Jul;15:117-135. doi: 10.1016/j.ecosta.2020.03.009. Epub 2020 May 20.

Abstract

There is a strong interest in the neuroscience community to measure brain connectivity and develop methods that can differentiate connectivity across patient groups and across different experimental stimuli. The development of such statistical tools is critical to understand the dynamics of functional relationships among brain structures supporting memory encoding and retrieval. However, the challenge comes from the need to incorporate within-condition similarity with between-conditions heterogeneity in modeling connectivity, as well as how to provide a natural way to conduct trial- and condition-level inference on effective connectivity. A Bayesian hierarchical vector autoregressive (BH-VAR) model is proposed to characterize brain connectivity and infer differences in connectivity across conditions. Within-condition connectivity similarity and between-conditions connectivity heterogeneity are accounted for by the priors on trial-specific models. In addition to the fully Bayesian framework, an alternative two-stage computation approach is also proposed which still allows straightforward uncertainty quantification of between-trial conditions via MCMC posterior sampling, but provides a fast approximate procedure for the estimation of trial-specific VAR parameters. A novel aspect of the approach is the use of a frequency-specific measure, partial directed coherence (PDC), to characterize effective connectivity under the Bayesian framework. More specifically, PDC allows inferring directionality and explaining the extent to which the present oscillatory activity at a certain frequency in a sender channel influences the future oscillatory activity in a specific receiver channel relative to all possible receivers in the brain network. The proposed model is applied to a large electrophysiological dataset collected as rats performed a complex sequence memory task. This unique dataset includes local field potentials (LFPs) activity recorded from an array of electrodes across hippocampal region CA1 while animals were presented with multiple trials from two main conditions. The proposed modeling approach provided novel insights into hippocampal connectivity during memory performance. Specifically, it separated CA1 into two functional units, a lateral and a medial segment, each showing stronger functional connectivity to itself than to the other. This approach also revealed that information primarily flowed in a lateral-to-medial direction across trials (within-condition), and suggested this effect was stronger on one trial condition than the other (between-conditions effect). Collectively, these results indicate that the proposed model is a promising approach to quantify the variation of functional connectivity, both within- and between-conditions, and thus should have broad applications in neuroscience research.

摘要

神经科学界对测量大脑连通性以及开发能够区分不同患者群体和不同实验刺激下连通性的方法有着浓厚兴趣。开发此类统计工具对于理解支持记忆编码和检索的大脑结构之间功能关系的动态变化至关重要。然而,挑战在于需要在建模连通性时纳入条件内相似性与条件间异质性,以及如何提供一种自然的方式来对有效连通性进行试验级和条件级推断。本文提出了一种贝叶斯分层向量自回归(BH-VAR)模型来表征大脑连通性并推断不同条件下连通性的差异。试验特定模型的先验分布考虑了条件内连通性相似性和条件间连通性异质性。除了完全贝叶斯框架外,还提出了一种替代的两阶段计算方法,该方法仍然允许通过MCMC后验采样对试验间条件进行直接的不确定性量化,但为试验特定VAR参数的估计提供了一种快速近似程序。该方法的一个新颖之处在于使用频率特定度量——偏定向相干(PDC),在贝叶斯框架下表征有效连通性。更具体地说,PDC允许推断方向性,并解释发送者通道中特定频率下当前振荡活动相对于大脑网络中所有可能接收者对特定接收者通道中未来振荡活动的影响程度。所提出的模型应用于大鼠执行复杂序列记忆任务时收集的大型电生理数据集。这个独特的数据集包括在动物经历来自两个主要条件的多次试验时,从海马体CA1区域的一系列电极记录的局部场电位(LFP)活动。所提出的建模方法为记忆表现期间的海马体连通性提供了新的见解。具体而言,它将CA1分为两个功能单元,一个外侧段和一个内侧段,每个单元与自身的功能连通性都强于与另一个单元的连通性。该方法还揭示了信息在试验(条件内)中主要沿外侧到内侧的方向流动,并表明这种效应在一种试验条件下比另一种条件下更强(条件间效应)。总体而言,这些结果表明所提出的模型是一种很有前途的方法,可用于量化条件内和条件间功能连通性的变化,因此在神经科学研究中应具有广泛的应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0b67/7643916/5eeeaa831939/nihms-1635230-f0002.jpg

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