Correlation in Neuronal Calcium Spiking: Quantification based on Empirical Mutual Information Rate
Sathish Ande, Srinivas Avasarala, Ajith Karunarathne, Lopamudra Giri,, Soumya Jana

TL;DR
This paper introduces a rapid method for estimating mutual information rate in calcium spike trains, enabling better understanding of neuronal correlations and encoding in both normal and disease states.
Contribution
A novel, faster approach to quantify mutual information in calcium spike trains by leveraging their memory structures, outperforming existing methods.
Findings
Method shows superior performance on Markov processes
Effective in analyzing experimental spike trains
Potential to identify neuronal behavior signatures
Abstract
Quantification of neuronal correlations in neuron populations helps us to understand neural coding rules. Such quantification could also reveal how neurons encode information in normal and disease conditions like Alzheimer's and Parkinson's. While neurons communicate with each other by transmitting spikes, there would be a change in calcium concentration within the neurons inherently. Accordingly, there would be correlations in calcium spike trains and they could have heterogeneous memory structures. In this context, estimation of mutual information rate in calcium spike trains assumes primary significance. However, such estimation is difficult with available methods which would consider longer blocks for convergence without noticing that neuronal information changes in short time windows. Against this backdrop, we propose a faster method that exploits the memory structures in pair of…
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Taxonomy
TopicsNeural dynamics and brain function · Neuroscience and Neural Engineering · Advanced Memory and Neural Computing
