首页> 外文期刊>Frontiers in Systems Neuroscience >A Critical Assessment of Directed Connectivity Estimates with Artificially Imposed Causality in the Supramammillary-Septo-Hippocampal Circuit
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A Critical Assessment of Directed Connectivity Estimates with Artificially Imposed Causality in the Supramammillary-Septo-Hippocampal Circuit

机译:人工评估因果关系的上颌-隔膜-海马回路的定向连通性估计的关键评估。

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Algorithms for estimating directed connectivity have become indispensable to further understand the neurodynamics between functionally coupled brain areas. The evaluation of directed connectivity on the propagation of brain activity has largely been based on simulated data or toy models, where various hidden properties of neurophysiological data may not be fully recapitulated. In this study, directionality was unequivocally manipulated in the freely moving rat in a unique dataset, where normal oscillatory interactions between the supramammillary nucleus (SuM) and hippocampus (HPC) were attenuated by temporary medial septal (MS) inactivation, and replaced by electrical stimulation of the fornix to evaluate the performance of several directed connectivity assessment methods. The directed transfer function, partial directed coherence, directed coherence, pair-wise Geweke-Granger causality, phase slope index, and phase transfer entropy, all found SuM to HPC theta propagation when the MS is inactivated, and HPC activity was driven by peaks of simultaneously recorded SuM theta. As expected from theoretical expectations and simulated data, signal features including coupling strength, signal-to-noise ratio, and stationarity all weakly affected directed connectivity measures. We conclude that all the examined directed connectivity estimates correctly identify artificially imposed uni-directionality of brain oscillations in freely moving animals. Non-auto-regressive modeling based methods appear to be the most robust, and are least affected by inherent features in data such as signal-to-noise ratio and stationarity.
机译:为了进一步了解功能耦合的大脑区域之间的神经动力学,估计定向连通性的算法已变得不可或缺。对大脑活动传播的定向连通性的评估很大程度上是基于模拟数据或玩具模型,其中神经生理学数据的各种隐藏属性可能无法完全概括。在这项研究中,在唯一移动的大鼠中明确地操纵了方向性,在该数据集中,上中隔核(SuM)和海马(HPC)之间的正常振荡相互作用被暂时性中隔(MS)失活所削弱,并被电刺激所替代fornix评估几种定向连接评估方法的性能。定向传递函数,部分定向相干性,定向相干性,成对的Geweke-Granger因果关系,相斜率指数和相转移熵,都发现当MS失活时SuM到HPC theta的传播,并且HPC活性由同时记录SuM theta。正如理论预期和模拟数据所预期的那样,包括耦合强度,信噪比和平稳性在内的信号特征对定向连接性的影响均很小。我们得出的结论是,所有检查过的定向连通性估计均正确识别了自由活动的动物中人为施加的大脑振荡的单向性。基于非自回归建模的方法似乎最健壮,并且受数据固有特征(如信噪比和平稳性)的影响最小。

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