ElectroCardioMaths Programme, Centre for Cardiac Engineering, Imperial College, London, UK.
Department of Aeronautics, Imperial College, London, UK.
Philos Trans A Math Phys Eng Sci. 2020 Jun 12;378(2173):20190339. doi: 10.1098/rsta.2019.0339. Epub 2020 May 25.
Mathematical models of a cellular action potential (AP) in cardiac modelling have become increasingly complex, particularly in gating kinetics, which control the opening and closing of individual ion channel currents. As cardiac models advance towards use in personalized medicine to inform clinical decision-making, it is critical to understand the uncertainty hidden in parameter estimates from their calibration to experimental data. This study applies approximate Bayesian computation to re-calibrate the gating kinetics of four ion channels in two existing human atrial cell models to their original datasets, providing a measure of uncertainty and indication of potential issues with selecting a single unique value given the available experimental data. Two approaches are investigated to reduce the uncertainty present: re-calibrating the models to a more complete dataset and using a less complex formulation with fewer parameters to constrain. The re-calibrated models are inserted back into the full cell model to study the overall effect on the AP. The use of more complete datasets does not eliminate uncertainty present in parameter estimates. The less complex model, particularly for the fast sodium current, gave a better fit to experimental data alongside lower parameter uncertainty and improved computational speed. This article is part of the theme issue 'Uncertainty quantification in cardiac and cardiovascular modelling and simulation'.
心肌细胞动作电位(AP)的数学模型在心脏建模中变得越来越复杂,特别是在门控动力学方面,它控制着单个离子通道电流的开启和关闭。随着心脏模型向个性化医疗推进,以告知临床决策,理解从校准到实验数据的参数估计中隐藏的不确定性至关重要。本研究应用近似贝叶斯计算方法,重新校准两个现有人心房细胞模型中的四个离子通道的门控动力学,以适应其原始数据集,提供了不确定性的度量,并表明在给定可用实验数据的情况下,选择单个独特值可能存在问题。研究了两种方法来降低现有不确定性:将模型重新校准到更完整的数据集,以及使用具有较少参数的更简单公式进行约束。重新校准的模型被插入全细胞模型中,以研究对 AP 的整体影响。使用更完整的数据集并不能消除参数估计中存在的不确定性。更简单的模型,特别是对于快速钠离子电流,与实验数据拟合更好,同时参数不确定性更低,计算速度更快。本文是“心脏和心血管建模与模拟中的不确定性量化”主题专刊的一部分。