Nunes Ronaldo V, Reyes Marcelo B, de Camargo Raphael Y
Center for Mathematics, Computing and Cognition, Universidade Federal do ABC, São Bernardo do Campo, SP, Brazil.
Biol Cybern. 2019 Jun;113(3):309-320. doi: 10.1007/s00422-019-00796-8. Epub 2019 Feb 19.
The flow of information between different regions of the cortex is fundamental for brain function. Researchers use causality detection techniques, such as Granger causality, to infer connectivity among brain areas from time series. Generalized partial directed coherence (GPDC) is a frequency domain linear method based on vector autoregressive model, which has been applied in electroencephalography, local field potential, and blood oxygenation level-dependent signals. Despite its widespread usage, previous attempts to validate GPDC use oversimplified simulated data, which do not reflect the nonlinearities and network couplings present in biological signals. In this work, we evaluated the GPDC performance when applied to simulated LFP signals, i.e., generated from networks of spiking neuronal models. We created three models, each containing five interacting networks, and evaluated whether the GPDC method could accurately detect network couplings. When using a stronger coupling, we showed that GPDC correctly detects all existing connections from simulated LFP signals in the three models, without false positives. Varying the coupling strength between networks, by changing the number of connections or synaptic strengths, and adding noise in the times series, altered the receiver operating characteristic (ROC) curve, ranging from perfect to chance level retrieval. We also showed that GPDC values correlated with coupling strength, indicating that GPDC values can provide useful information regarding coupling strength. These results reinforce that GPDC can be used to detect causality relationships over neural signals.
大脑皮层不同区域之间的信息流是脑功能的基础。研究人员使用因果关系检测技术,如格兰杰因果关系,从时间序列推断脑区之间的连接性。广义部分定向相干性(GPDC)是一种基于向量自回归模型的频域线性方法,已应用于脑电图、局部场电位和血氧水平依赖信号。尽管其应用广泛,但先前验证GPDC的尝试使用的是过于简化的模拟数据,这些数据无法反映生物信号中存在的非线性和网络耦合。在这项工作中,我们评估了GPDC应用于模拟局部场电位(LFP)信号时的性能,即由发放神经元模型网络生成的信号。我们创建了三个模型,每个模型包含五个相互作用的网络,并评估GPDC方法是否能准确检测网络耦合。当使用更强的耦合时,我们表明GPDC能正确检测出三个模型中模拟LFP信号的所有现有连接,且无假阳性。通过改变连接数量或突触强度来改变网络之间的耦合强度,并在时间序列中添加噪声,会改变接收者操作特征(ROC)曲线,范围从完美检索到随机水平检索。我们还表明GPDC值与耦合强度相关,这表明GPDC值可以提供有关耦合强度的有用信息。这些结果强化了GPDC可用于检测神经信号之间的因果关系。