大脑网络中的非线性因果关系:应用于运动想象与执行

Sipan Aslan, Hernando Ombao
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摘要

神经科学数据驱动分析的一个基本挑战是建立因果交互模型和探索大脑网络中节点的连通性。目前正在开发各种统计方法,依靠不同的视角和采用不同的数据模式来检查和理解大脑动态内在的基本因果结构。本研究介绍了一种新型统计方法 TAR4C,用于剖析多通道脑电图记录中的因果交互作用。TAR4C 使用阈值自回归模型来描述脑网络中节点或节点集群之间的因果交互作用。这一视角涉及测试一个节点(可能代表一个脑区)是否能控制另一个节点的动态。对另一个节点具有这种影响的节点被称为阈值变量,可以归类为因果关系,因为其功能是作为瞬时切换机制运行的主导源,可以调节另一个节点的时变自回归结构。这一统计概念通常被称为阈值非线性。一旦验证了一对节点之间的阈值非线性,TAR 模型的下一个重要方面就是评估因果节点对另一节点当前活动的预测能力,并用自回归项来表示因果互动。这种预测能力是格兰杰因果关系的基础。TAR4C 方法可以发现非线性和随时间变化的因果互动关系,而不损害格兰杰因果关系的观点。通过分析运动/意象实验过程中记录的脑电信号,证明了所提出方法的有效性。通过分析多个受试者的脑电图记录,展示了特定运动的执行和想象过程中因果相互作用的异同。
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Nonlinear Causality in Brain Networks: With Application to Motor Imagery vs Execution
One fundamental challenge of data-driven analysis in neuroscience is modeling causal interactions and exploring the connectivity of nodes in a brain network. Various statistical methods, relying on various perspectives and employing different data modalities, are being developed to examine and comprehend the underlying causal structures inherent to brain dynamics. This study introduces a novel statistical approach, TAR4C, to dissect causal interactions in multichannel EEG recordings. TAR4C uses the threshold autoregressive model to describe the causal interaction between nodes or clusters of nodes in a brain network. The perspective involves testing whether one node, which may represent a brain region, can control the dynamics of the other. The node that has such an impact on the other is called a threshold variable and can be classified as a causative because its functionality is the leading source operating as an instantaneous switching mechanism that regulates the time-varying autoregressive structure of the other. This statistical concept is commonly referred to as threshold non-linearity. Once threshold non-linearity has been verified between a pair of nodes, the subsequent essential facet of TAR modeling is to assess the predictive ability of the causal node for the current activity on the other and represent causal interactions in autoregressive terms. This predictive ability is what underlies Granger causality. The TAR4C approach can discover non-linear and time-dependent causal interactions without negating the G-causality perspective. The efficacy of the proposed approach is exemplified by analyzing the EEG signals recorded during the motor movement/imagery experiment. The similarities and differences between the causal interactions manifesting during the execution and the imagery of a given motor movement are demonstrated by analyzing EEG recordings from multiple subjects.
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