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Comparative performance of mutual information and transfer entropy for analyzing the balance of information flow and energy consumption at synapses

View ORCID ProfileMireille Conrad, View ORCID ProfileRenaud B Jolivet
doi: https://doi.org/10.1101/2020.06.01.127399
Mireille Conrad
Département de Physique Nucléaire et Corpusculaire, University of Geneva, Geneva, Switzerland
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Renaud B Jolivet
Département de Physique Nucléaire et Corpusculaire, University of Geneva, Geneva, Switzerland
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  • ORCID record for Renaud B Jolivet
  • For correspondence: renaud.jolivet@unige.ch
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Abstract

Information theory has become an essential tool of modern neuroscience. It can however be difficult to apply in experimental contexts when acquisition of very large datasets is prohibitive. Here, we compare the relative performance of two information theoretic measures, mutual information and transfer entropy, for the analysis of information flow and energetic consumption at synapses. We show that transfer entropy outperforms mutual information in terms of reliability of estimates for small datasets. However, we also show that a detailed understanding of the underlying neuronal biophysics is essential for properly interpreting the results obtained with transfer entropy. We conclude that when time and experimental conditions permit, mutual information might provide an easier to interpret alternative. Finally, we apply both measures to the study of energetic optimality of information flow at thalamic relay synapses in the visual pathway. We show that both measures recapitulate the experimental finding that these synapses are tuned to optimally balance information flowing through them with the energetic consumption associated with that synaptic and neuronal activity. Our results highlight the importance of conducting systematic computational studies prior to applying information theoretic tools to experimental data.

Author summary Information theory has become an essential tool of modern neuroscience. It is being routinely used to evaluate how much information flows from external stimuli to various brain regions or individual neurons. It is also used to evaluate how information flows between brain regions, between neurons, across synapses, or in neural networks. Information theory offers multiple measures to do that. Two of the most popular are mutual information and transfer entropy. While these measures are related to each other, they differ in one important aspect: transfer entropy reports a directional flow of information, as mutual information does not. Here, we proceed to a systematic evaluation of their respective performances and trade-offs from the perspective of an experimentalist looking to apply these measures to binarized spike trains. We show that transfer entropy might be a better choice than mutual information when time for experimental data collection is limited, as it appears less affected by systematic biases induced by a relative lack of data. Transmission delays and integration properties of the output neuron can however complicate this picture, and we provide an example of the effect this has on both measures. We conclude that when time and experimental conditions permit, mutual information – especially when estimated using a method referred to as the ‘direct’ method – might provide an easier to interpret alternative. Finally, we apply both measures in the biophysical context of evaluating the energetic optimality of information flow at thalamic relay synapses in the visual pathway. We show that both measures capture the original experimental finding that those synapses are tuned to optimally balance information flowing through them with the concomitant energetic consumption associated with that synaptic and neuronal activity.

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY 4.0 International license.
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Posted June 01, 2020.
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Comparative performance of mutual information and transfer entropy for analyzing the balance of information flow and energy consumption at synapses
Mireille Conrad, Renaud B Jolivet
bioRxiv 2020.06.01.127399; doi: https://doi.org/10.1101/2020.06.01.127399
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Comparative performance of mutual information and transfer entropy for analyzing the balance of information flow and energy consumption at synapses
Mireille Conrad, Renaud B Jolivet
bioRxiv 2020.06.01.127399; doi: https://doi.org/10.1101/2020.06.01.127399

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