IT4Innovations, VSB - Technical University of Ostrava, 708 00, Ostrava, Czech Republic.
ARC Centre of Excellence for Plant Success in Nature and Agriculture, Queensland University of Technology, Brisbane, 4000, Australia.
Sci Rep. 2023 Jul 22;13(1):11828. doi: 10.1038/s41598-023-38256-w.
This paper uses recurrence quantification analysis (RQA) combined with entropy measures and organization indices to characterize arrhythmic patterns and dynamics in computer simulations of cardiac tissue. We performed different simulations of cardiac tissues of sizes comparable to the human heart atrium. In these simulations, we observed four classic arrhythmic patterns: a spiral wave anchored to a highly fibrotic region resulting in sustained re-entry, a meandering spiral wave, fibrillation, and a spiral wave anchored to a scar region that breaks up into wavelets away from the main rotor. A detailed analysis revealed that, within the same simulation, maps of RQA metrics could differentiate regions with regular AP propagation from ones with chaotic activity. In particular, the combination of two RQA metrics, the length of the longest diagonal string of recurrence points and the mean length of diagonal lines, was able to identify the location of rotor tips, which are the active elements that maintain spiral waves and fibrillation. By proposing low-dimensional models based on the mean value and spatial correlation of metrics calculated from membrane potential time series, we identify RQA-based metrics that successfully separate the four different types of cardiac arrhythmia into distinct regions of the feature space, and thus might be used for automatic classification, in particular distinguishing between fibrillation driven by self-sustaining chaos and that created by a persistent rotor and wavebreak. We also discuss the practical applicability of such an approach.
本文采用递归量化分析(RQA)结合熵测度和组织指数,对心脏组织的计算机模拟中的心律失常模式和动力学进行了特征描述。我们对大小与人心房相当的心脏组织进行了不同的模拟。在这些模拟中,我们观察到了四种典型的心律失常模式:一个螺旋波锚定在一个高度纤维化的区域,导致持续折返;一个蜿蜒的螺旋波;纤维颤动;以及一个螺旋波锚定在一个疤痕区域,它从主转子分裂成小波。详细分析表明,在同一模拟中,RQA 指标的图谱可以区分具有规则 AP 传播的区域和具有混沌活动的区域。特别是,两个 RQA 指标的组合,即递归点最长对角线字符串的长度和对角线的平均长度,能够识别转子尖端的位置,转子尖端是维持螺旋波和纤维颤动的活性元素。通过基于膜电位时间序列计算的平均值和空间相关性提出低维模型,我们确定了基于 RQA 的指标,这些指标能够成功地将四种不同类型的心律失常分为特征空间的不同区域,从而可能用于自动分类,特别是区分由自维持混沌驱动的纤维颤动和由持久转子和波破裂驱动的纤维颤动。我们还讨论了这种方法的实际适用性。