University of Ulster, Coleraine.
IEEE/ACM Trans Comput Biol Bioinform. 2012 Jan-Feb;9(1):40-51. doi: 10.1109/TCBB.2011.84. Epub 2011 Apr 27.
Characterization of the kinetic and conformational properties of channel proteins is a crucial element in the integrative study of congenital cardiac diseases. The proteins of the ion channels of cardiomyocytes represent an important family of biological components determining the physiology of the heart. Some computational studies aiming to understand the mechanisms of the ion channels of cardiomyocytes have concentrated on Markovian stochastic approaches. Mathematically, these approaches employ Chapman-Kolmogorov equations coupled with partial differential equations. As the scale and complexity of such subcellular and cellular models increases, the balance between efficiency and accuracy of algorithms becomes critical. We have developed a novel two-stage splitting algorithm to address efficiency and accuracy issues arising in such modeling and simulation scenarios. Numerical experiments were performed based on the incorporation of our newly developed conformational kinetic model for the rapid delayed rectifier potassium channel into the dynamic models of human ventricular myocytes. Our results show that the new algorithm significantly outperforms commonly adopted adaptive Runge-Kutta methods. Furthermore, our parallel simulations with coupled algorithms for multicellular cardiac tissue demonstrate a high linearity in the speedup of large-scale cardiac simulations.
通道蛋白的动力学和构象特性的描述是先天性心脏病综合研究的一个关键要素。心肌细胞离子通道的蛋白代表了决定心脏生理学的重要生物成分家族。一些旨在理解心肌细胞离子通道机制的计算研究集中在马尔可夫随机方法上。从数学上讲,这些方法采用了与偏微分方程耦合的 Chapman-Kolmogorov 方程。随着这些亚细胞和细胞模型的规模和复杂性的增加,算法的效率和准确性之间的平衡变得至关重要。我们开发了一种新的两阶段分裂算法,以解决此类建模和模拟场景中出现的效率和准确性问题。基于将我们新开发的快速延迟整流钾通道构象动力学模型整合到人心室肌细胞的动力学模型中,进行了数值实验。我们的结果表明,新算法在效率和准确性方面明显优于常用的自适应 Runge-Kutta 方法。此外,我们对多细胞心脏组织的耦合算法的并行模拟表明,大规模心脏模拟的加速具有很高的线性度。