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Modelling variability in cardiac electrophysiology: a moment-matching approach.


ABSTRACT: The variability observed in action potential (AP) cardiomyocyte measurements is the consequence of many different sources of randomness. Often ignored, this variability may be studied to gain insight into the cell ionic properties. In this paper, we focus on the study of ionic channel conductances and describe a methodology to estimate their probability density function (PDF) from AP recordings. The method relies on the matching of observable statistical moments and on the maximum entropy principle. We present four case studies using synthetic and sets of experimental AP measurements from human and canine cardiomyocytes. In each case, the proposed methodology is applied to infer the PDF of key conductances from the exhibited variability. The estimated PDFs are discussed and, when possible, compared to the true distributions. We conclude that it is possible to extract relevant information from the variability in AP measurements and discuss the limitations and possible implications of the proposed approach.

SUBMITTER: Tixier E 

PROVIDER: S-EPMC5582121 | biostudies-literature | 2017 Aug

REPOSITORIES: biostudies-literature

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Modelling variability in cardiac electrophysiology: a moment-matching approach.

Tixier Eliott E   Lombardi Damiano D   Rodriguez Blanca B   Rodriguez Blanca B   Gerbeau Jean-Frédéric JF  

Journal of the Royal Society, Interface 20170801 133


The variability observed in action potential (AP) cardiomyocyte measurements is the consequence of many different sources of randomness. Often ignored, this variability may be studied to gain insight into the cell ionic properties. In this paper, we focus on the study of ionic channel conductances and describe a methodology to estimate their probability density function (PDF) from AP recordings. The method relies on the matching of observable statistical moments and on the maximum entropy princi  ...[more]

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