Quantification of model and data uncertainty in a network analysis of cardiac myocyte mechanosignalling
Author(s) -
Shulin Cao,
Yasser Aboelkassem,
Ariel Wang,
Daniela ValdezJasso,
Jeffrey J. Saucerman,
Jeffrey H. Omens,
Andrew D. McCulloch
Publication year - 2020
Publication title -
philosophical transactions of the royal society a mathematical physical and engineering sciences
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.074
H-Index - 169
eISSN - 1471-2962
pISSN - 1364-503X
DOI - 10.1098/rsta.2019.0336
Subject(s) - uncertainty quantification , polynomial chaos , monte carlo method , experimental data , range (aeronautics) , computer science , ordinary differential equation , uncertainty analysis , cardiac myocyte , biological system , mathematics , algorithm , statistical physics , myocyte , statistics , differential equation , physics , simulation , machine learning , medicine , mathematical analysis , materials science , composite material , biology
Cardiac myocytes transduce changes in mechanical loading into cellular responses via interacting cell signalling pathways. We previously reported a logic-based ordinary differential equation model of the myocyte mechanosignalling network that correctly predicts 78% of independent experimental results not used to formulate the original model. Here, we use Monte Carlo and polynomial chaos expansion simulations to examine the effects of uncertainty in parameter values, model logic and experimental validation data on the assessed accuracy of that model. The prediction accuracy of the model was robust to parameter changes over a wide range being least sensitive to uncertainty in time constants and most affected by uncertainty in reaction weights. Quantifying epistemic uncertainty in the reaction logic of the model showed that while replacing ‘OR’ with ‘AND’ reactions greatly reduced model accuracy, replacing ‘AND’ with ‘OR’ reactions was more likely to maintain or even improve accuracy. Finally, data uncertainty had a modest effect on assessment of model accuracy. This article is part of the theme issue ‘Uncertainty quantification in cardiac and cardiovascular modelling and simulation’.
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