An In-Silico Study of the Effects of Conductance Variation on the Regionally Based Action Potential Morphology.

J. Elliott, O. Dössel, A. Loewe, L. Mainardi, V. Corino, Jose F Rodriguez Matas"
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引用次数: 1

Abstract

Improved understanding of the effects of variability in electrophysiological activity within the human heart is key to understanding and predicting cardiovascular response to disease and treatments. Previous studies have considered either regional variation in action potentials or inter-subject variability within a single region of the atria. In this study, we hypothesize that the regional differences in morphology derive not only from variation in dependence on individual conductances, but also from the relationship between multiple conductances. Using the Monte-Carlo Sampling Method and the Maleckar cellular model for electrophysiology, we created an in-silico population of models. Each conductance was varied +/100% from the standard model. The population was divided into regional groups based on biomarkers. Results showed regional variation in the dependence on relationships between conductances. In the right atrial appendage the value of gK1 was found to be only twice as influential as the relationship between gK1 and gKur on the APD90 biomarker. Other relationships that had a significant impact included gTo-gKur; gKr-gK1; gNaKgNaCa and gKur-gNaK for various regions. R values for first order linear regression models showed significant relationships were left out in the analysis. This was significantly improved in the second order R values.
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电导变化对区域动作电位形态影响的计算机研究。
提高对人类心脏电生理活动变异性影响的理解是理解和预测心血管对疾病和治疗反应的关键。以前的研究既考虑了动作电位的区域差异,也考虑了心房单个区域内的主体间差异。在本研究中,我们假设区域形态的差异不仅源于对单个电导的依赖程度的变化,还源于多个电导之间的关系。利用蒙特卡罗采样方法和电生理学的Maleckar细胞模型,我们创建了一个计算机模型群。每个电导与标准模型相差+/100%。根据生物标记物将人群划分为区域组。结果显示电导之间关系的依赖性存在区域差异。在右心房附件中,gK1的价值仅是gK1和gKur对APD90生物标志物之间关系的两倍。其他有重大影响的关系包括gTo-gKur;gKr-gK1;gNaKgNaCa和gKur-gNaK用于不同地区。一阶线性回归模型的R值表明,在分析中忽略了显著的关系。这在二阶R值中得到了显著改善。
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