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Measuring Information-Transfer Delays

机译:测量信息传输延迟

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摘要

In complex networks such as gene networks, traffic systems or brain circuits it is important to understand how long it takes for the different parts of the network to effectively influence one another. In the brain, for example, axonal delays between brain areas can amount to several tens of milliseconds, adding an intrinsic component to any timing-based processing of information. Inferring neural interaction delays is thus needed to interpret the information transfer revealed by any analysis of directed interactions across brain structures. However, a robust estimation of interaction delays from neural activity faces several challenges if modeling assumptions on interaction mechanisms are wrong or cannot be made. Here, we propose a robust estimator for neuronal interaction delays rooted in an information-theoretic framework, which allows a model-free exploration of interactions. In particular, we extend transfer entropy to account for delayed source-target interactions, while crucially retaining the conditioning on the embedded target state at the immediately previous time step. We prove that this particular extension is indeed guaranteed to identify interaction delays between two coupled systems and is the only relevant option in keeping with Wiener’s principle of causality. We demonstrate the performance of our approach in detecting interaction delays on finite data by numerical simulations of stochastic and deterministic processes, as well as on local field potential recordings. We also show the ability of the extended transfer entropy to detect the presence of multiple delays, as well as feedback loops. While evaluated on neuroscience data, we expect the estimator to be useful in other fields dealing with network dynamics.
机译:在复杂的网络中,例如基因网络,交通系统或大脑回路,重要的是要了解网络的不同部分有效相互影响需要多长时间。例如,在大脑中,大脑区域之间的轴突延迟可能长达数十毫秒,从而为任何基于时间的信息处理增加了内在成分。因此,需要推断神经相互作用的延迟来解释通过跨大脑结构的定向相互作用的任何分析所揭示的信息传递。然而,如果关于相互作用机制的建模假设是错误的或无法做出,则从神经活动对相互作用延迟的鲁棒估计将面临若干挑战。在这里,我们提出了一个鲁棒的估计器,用于基于信息理论框架的神经元交互延迟,该模型允许对交互进行无模型探索。特别是,我们扩展了传输熵以解决延迟的源-目标交互,同时至关重要地在紧接的前一个时间步长上保持对嵌入目标状态的条件。我们证明确实可以保证此扩展名能够确定两个耦合系统之间的交互延迟,并且是符合维纳因果关系原理的唯一相关选择。我们通过随机和确定性过程的数值模拟以及局部场电势记录,证明了我们的方法在有限数据上检测相互作用延迟的性能。我们还展示了扩展传递熵检测多个延迟以及反馈回路的能力。在对神经科学数据进行评估时,我们希望估算器在处理网络动力学的其他领域中会很有用。

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