2017
DOI: 10.1016/j.pbiomolbio.2016.11.006
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Limitations in electrophysiological model development and validation caused by differences between simulations and experimental protocols

Abstract: Models of ion channel dynamics are usually built by fitting isolated cell experimental values of individual parameters while neglecting the interaction between them. Another shortcoming regards the estimation of ionic current conductances, which is often based on quantification of Action Potential (AP)-derived markers. Although this procedure reduces the uncertainty in the calculation of conductances, many studies evaluate electrophysiological AP-derived markers from single cell simulations, whereas experiment… Show more

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Cited by 11 publications
(15 citation statements)
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“…The third term, k(t), represents the projection that serves to ensure that s(t) remains in the probability simplex [37], as described in [35]. Stochasticity was included in the ionic gating of four different currents, namely I Ks , I Kr , I to and I CaL , which are major currents active during AP repolarization [4], [25], [38]. Following the derivations of [4], [35], matrices A, E (stoichiometry) and D (containing the rate of each transition as a function of s) in equation (1) for the stochastic ORd model were calculated as described in the following.…”
Section: B Human Ventricular Stochastic Ap Modelsmentioning
confidence: 99%
“…The third term, k(t), represents the projection that serves to ensure that s(t) remains in the probability simplex [37], as described in [35]. Stochasticity was included in the ionic gating of four different currents, namely I Ks , I Kr , I to and I CaL , which are major currents active during AP repolarization [4], [25], [38]. Following the derivations of [4], [35], matrices A, E (stoichiometry) and D (containing the rate of each transition as a function of s) in equation (1) for the stochastic ORd model were calculated as described in the following.…”
Section: B Human Ventricular Stochastic Ap Modelsmentioning
confidence: 99%
“…One of the differences between the GPB / CRLP models and the other human ventricular models is the inclusion of the I Cl , bk current. This current was expected to have a minor role in modulating electrophysiological properties, but, as reported in [ 33 ], APD showed the highest sensitivity (-86%) to changes in the maximal ionic conductance of the I Cl , bk current. In the CRLP model, this sensitivity was reduced (-46%) but it was still large.…”
Section: Discussionmentioning
confidence: 72%
“…The range for triangulation was 44-112 ms [ 31 , 32 ]. For the diastolic and systolic [ Ca 2+ ] i levels at 1 Hz and 0.5 Hz stimulation, the CRLP model, as occurs with other recent human ventricular AP models (GPB, ORd, TP06, TP04) [ 4 , 5 , 7 , 16 , 17 , 33 , 34 ], is out of the physiological range reported in the literature [ 35 , 36 ]. For that reason, the physiological range was extended to ensure a feasible solution of the optimization problem.…”
Section: Methodsmentioning
confidence: 91%
“…The initial model has been enriched in many ways, by adding a much larger number of ion currents and also by including other mechanisms of cellular electrophysiology such as active ions pumps, intercellular compartments for calcium transport, and calcium buffers, see http://www.physiome.org/jsim/models/webmodel/NSR/Luo-Rudy/ or other projects of CellML (Miller et al, 2010). In consequence, the most detailed Luo-Rudy model of the human ventricular myocyte, known now as O'Hara-Rudy (O'Hara et al, 2011), involves 41 state variables in more than 100 differential-algebraic equations; see the latest review of electrophysiological models of the ventricular cell in Carro et al (2017).…”
Section: Motivation: Discrete Vs Continuous Modelingmentioning
confidence: 99%