Lee Jieun, Guo Yugene, Ravikumar Vasanth, Tolkacheva Elena G
Department of Electrical and Computer Engineering, University of Minnesota-Twin Cities, Minneapolis, MN 55455, USA.
Department of Biochemistry, University of Minnesota-Twin Cities, Minneapolis, MN 55455, USA.
Entropy (Basel). 2020 May 8;22(5):531. doi: 10.3390/e22050531.
Paroxysmal atrial fibrillation (Paro. AF) is challenging to identify at the right moment. This disease is often undiagnosed using currently existing methods. Nonlinear analysis is gaining importance due to its capability to provide more insight into complex heart dynamics. The aim of this study is to use several recently developed nonlinear techniques to discriminate persistent AF (Pers. AF) from normal sinus rhythm (NSR), and more importantly, Paro. AF from NSR, using short-term single-lead electrocardiogram (ECG) signals. Specifically, we adapted and modified the time-delayed embedding method to minimize incorrect embedding parameter selection and further support to reconstruct proper phase plots of NSR and AF heart dynamics, from MIT-BIH databases. We also examine information-based methods, such as multiscale entropy (MSE) and kurtosis (Kt) for the same purposes. Our results demonstrate that embedding parameter time delay ( τ ), as well as MSE and Kt values can be successfully used to discriminate between Pers. AF and NSR. Moreover, we demonstrate that τ and Kt can successfully discriminate Paro. AF from NSR. Our results suggest that nonlinear time-delayed embedding method and information-based methods provide robust discriminating features to distinguish both Pers. AF and Paro. AF from NSR, thus offering effective treatment before suffering chaotic Pers. AF.
阵发性心房颤动(Paro. AF)在恰当的时机进行识别具有挑战性。使用现有的方法,这种疾病常常无法被诊断出来。非线性分析因其能够更深入洞察复杂的心脏动力学而变得越来越重要。本研究的目的是使用几种最近开发的非线性技术,利用短期单导联心电图(ECG)信号,将持续性房颤(Pers. AF)与正常窦性心律(NSR)区分开来,更重要的是,将阵发性房颤(Paro. AF)与正常窦性心律区分开来。具体而言,我们对延时嵌入方法进行了调整和改进,以尽量减少嵌入参数选择错误,并进一步支持从麻省理工学院 - 贝斯以色列女执事医疗中心(MIT - BIH)数据库重建正常窦性心律和房颤心脏动力学的正确相图。我们还出于相同目的研究了基于信息的方法,如多尺度熵(MSE)和峰度(Kt)。我们的结果表明,嵌入参数时间延迟(τ)以及MSE和Kt值可以成功用于区分持续性房颤和正常窦性心律。此外,我们证明τ和Kt可以成功区分阵发性房颤和正常窦性心律。我们的结果表明,非线性延时嵌入方法和基于信息的方法提供了强大的区分特征,以将持续性房颤和阵发性房颤与正常窦性心律区分开来,从而在患者出现混乱的持续性房颤之前提供有效的治疗。