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Hierarchical Bayesian modelling of variability and uncertainty in synthetic action potential traces

Johnstone, Ross H.; Bardenet, Remi; Gavaghan, David J.; Polonchuk, Liudmila; Davies, Mark R.; Mirams, Gary R.

Authors

Ross H. Johnstone

Remi Bardenet

David J. Gavaghan

Liudmila Polonchuk

Mark R. Davies



Abstract

© 2016 CCAL. There are many sources of uncertainty in the recording and modelling of membrane action potentials (APs) from cardiomyocytes. For example, there are measurement, parameter, and model uncertainties. There is also extrinsic variability between cells, and intrinsic beat-to-beat variability within a single cell. These combined uncertainties and variability make it very difficult to extrapolate predictions from these models, since current AP models have single parameter values and thus produce a single AP trace. We aim to re-parameterise existing AP models to fit experimental data, and to quantify uncertainty associated with ion current densities when measuring and modelling these APs. We then wish to propagate this uncertainty into model predictions, such as ion channel block effected by a pharmaceutical compound. We perform an in silico study using synthetic data generated from different sets of parameters. Wethen 'forget' these parameter values and re-infer their distributions using hierarchical Markov chain Monte Carlo methods. We find that we can successfully infer the 'correct' distributions for most ion current densities for each AP trace, along with an approximation to the higher-level distribution from which these parameter values were sampled. There is, however, some level of unidentifiability amongst some of the current densities.

Citation

Johnstone, R. H., Bardenet, R., Gavaghan, D. J., Polonchuk, L., Davies, M. R., & Mirams, G. R. Hierarchical Bayesian modelling of variability and uncertainty in synthetic action potential traces. Presented at 2016 Computing in Cardiology Conference (CinC), Vancouver, BC, Canada

Presentation Conference Type Conference Paper (published)
Conference Name 2016 Computing in Cardiology Conference (CinC)
Acceptance Date Mar 1, 2016
Publication Date Mar 1, 2016
Deposit Date Jan 14, 2020
Journal Computing in Cardiology
Print ISSN 2325-8861
Electronic ISSN 2325-887X
Peer Reviewed Not Peer Reviewed
Volume 43
Pages 1089-1092
Public URL https://nottingham-repository.worktribe.com/output/3217423