English

Inferring Information Flow in Spike-train Data Sets using a Trial-Shuffle Method

Neurons and Cognition 2019-03-06 v2

Abstract

Understanding information processing in the brain requires the ability to determine the functional connectivity between the different regions of the brain. We present a method using transfer entropy to extract this flow of information between brain regions from spike-train data commonly obtained in neurological experiments. Transfer entropy is a statistical measure based in information theory that attempts to quantify the information flow from one process to another, and has been applied to find connectivity in simulated spike-train data. Due to statistical error in the estimator, inferring functional connectivity requires a method for determining significance in the transfer entropy values. We discuss the issues with numerical estimation of transfer entropy and resulting challenges in determining significance before presenting the trial-shuffle method as a viable option. The trial-shuffle method, for spike-train data that is split into multiple trials, determines significant transfer entropy values independently for each individual pair of neurons by comparing to a created baseline distribution using a rigorous statistical test. This is in contrast to either globally comparing all neuron transfer entropy values or comparing pairwise values to a single baseline value. In establishing the viability of this method by comparison to several alternative approaches in the literature, we find evidence that preserving the inter-spike-interval timing is important. We then use the trial-shuffle method to investigate information flow within a model network as we vary model parameters. This includes investigating the global flow of information within a connectivity network divided into two well-connected subnetworks, going beyond local transfer of information between pairs of neurons.

Keywords

Cite

@article{arxiv.1802.06164,
  title  = {Inferring Information Flow in Spike-train Data Sets using a Trial-Shuffle Method},
  author = {Benjamin Walker and Katherine Newhall},
  journal= {arXiv preprint arXiv:1802.06164},
  year   = {2019}
}

Comments

24 pages, 6 figures

R2 v1 2026-06-23T00:25:09.404Z