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Identification of structures for ion channel kinetic models

Kathryn Mangold, Wei Wang, Eric K. Johnson, Druv Bhagavan, Jonathan D. Moreno, Jeanne M. Nerbonne, Jonathan R. Silva

2021PLoS Computational Biology21 citationsDOIOpen Access PDF

Abstract

Markov models of ion channel dynamics have evolved as experimental advances have improved our understanding of channel function. Past studies have examined limited sets of various topologies for Markov models of channel dynamics. We present a systematic method for identification of all possible Markov model topologies using experimental data for two types of native voltage-gated ion channel currents: mouse atrial sodium currents and human left ventricular fast transient outward potassium currents. Successful models identified with this approach have certain characteristics in common, suggesting that aspects of the model topology are determined by the experimental data. Incorporating these channel models into cell and tissue simulations to assess model performance within protocols that were not used for training provided validation and further narrowing of the number of acceptable models. The success of this approach suggests a channel model creation pipeline may be feasible where the structure of the model is not specified a priori.

Topics & Concepts

Network topologyComputer scienceChannel (broadcasting)Markov modelA priori and a posterioriMarkov chainIdentification (biology)Topology (electrical circuits)Ion channelBiological systemPipeline (software)Potassium channelMachine learningChemistryEngineeringBiophysicsBiologyComputer networkBiochemistryProgramming languageReceptorBotanyEpistemologyPhilosophyElectrical engineeringCardiac electrophysiology and arrhythmiasIon channel regulation and functionFuel Cells and Related Materials
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