TL;DR
This paper introduces an information-theoretic, model-free framework for analyzing dynamic interactions between neural spike trains, accurately capturing both undirected and directed influences in continuous time, validated through simulations and real neuronal data.
Contribution
It develops a novel, continuous-time, non-parametric method to measure dynamic neural interactions, improving upon existing approaches that rely on discrete-time or parametric assumptions.
Findings
Accurate estimation of mutual information and transfer entropy in simulated spike trains.
Superiority of continuous-time estimators over discrete-time methods.
Demonstrated ability to track changes in neural network topology during culture maturation.
Abstract
Understanding the interaction patterns among simultaneous recordings of spike trains from multiple neuronal units is a key topic in neuroscience. However, an optimal approach of assessing these interactions has not been established, as existing methods either do not consider the inherent point process nature of spike trains or are based on parametric assumptions that may lead to wrong inferences if not met. This work presents a framework, grounded in the field of information dynamics, for the model-free, continuous-time estimation of both undirected (symmetric) and directed (causal) interactions between pairs of spike trains. The framework decomposes the overall information exchanged dynamically between two point processes X and Y as the sum of the dynamic mutual information (dMI) between the histories of X and Y, plus the transfer entropy (TE) along the directions X->Y and Y->X.…
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