Average rating
Cast your vote
You can rate an item by clicking the amount of stars they wish to award to this item.
When enough users have cast their vote on this item, the average rating will also be shown.
Star rating
Your vote was cast
Thank you for your feedback
Thank you for your feedback
Author
Groenendaal, WillemijnOrtega, Francis A.
Kherlopian, Armen R.
Zygmunt, Andrew C.
Krogh-Madsen, Trine
Christini, David J.
Journal title
PLOS Computational BiologyDate Published
2015-04-30Publication Volume
11Publication Issue
4Publication Begin page
e1004242
Metadata
Show full item recordAbstract
The traditional cardiac model-building paradigm involves constructing a composite model using data collected from many cells. Equations are derived for each relevant cellular component (e.g., ion channel, exchanger) independently. After the equations for all components are combined to form the composite model, a subset of parameters is tuned, often arbitrarily and by hand, until the model output matches a target objective, such as an action potential. Unfortunately, such models often fail to accurately simulate behavior that is dynamically dissimilar (e.g., arrhythmia) to the simple target objective to which the model was fit. In this study, we develop a new approach in which data are collected via a series of complex electrophysiology protocols from single cardiac myocytes and then used to tune model parameters via a parallel fitting method known as a genetic algorithm (GA). The dynamical complexity of the electrophysiological data, which can only be fit by an automated method such as a GA, leads to more accurately parameterized models that can simulate rich cardiac dynamics. The feasibility of the method is first validated computationally, after which it is used to develop models of isolated guinea pig ventricular myocytes that simulate the electrophysiological dynamics significantly better than does a standard guinea pig model. In addition to improving model fidelity generally, this approach can be used to generate a cell-specific model. By so doing, the approach may be useful in applications ranging from studying the implications of cell-to-cell variability to the prediction of intersubject differences in response to pharmacological treatment.Citation
Groenendaal W, Ortega FA, Kherlopian AR, Zygmunt AC, Krogh-Madsen T, Christini DJ. Cell-specific cardiac electrophysiology models. PLoS Comput Biol. 2015 Apr 30;11(4):e1004242. doi: 10.1371/journal.pcbi.1004242. PMID: 25928268; PMCID: PMC4415772.DOI
10.1371/journal.pcbi.1004242ae974a485f413a2113503eed53cd6c53
10.1371/journal.pcbi.1004242
Scopus Count
Collections
Except where otherwise noted, this item's license is described as http://creativecommons.org/licenses/by/4.0/
Related articles
- A generic ionic model of cardiac action potentials.
- Authors: Guo T, Abed AA, Lovell NH, Dokos S
- Issue date: 2010
- Parameter fitting using multiple datasets in cardiac action potential modeling.
- Authors: Guo T, Al Abed A, Lovell NH, Dokos S
- Issue date: 2011
- Regional differences in rabbit atrial action potential properties: mechanisms, consequences and pharmacological implications.
- Authors: Aslanidi OV, Dewey RS, Morgan AR, Boyett MR, Zhang H
- Issue date: 2008
- On the performance of an implicit-explicit Runge-Kutta method in models of cardiac electrical activity.
- Authors: Spiteri RJ, Dean RC
- Issue date: 2008 May
- A comparison of non-standard solvers for ODEs describing cellular reactions in the heart.
- Authors: Maclachlan MC, Sundnes J, Spiteri RJ
- Issue date: 2007 Oct