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Complex dynamics assessment in 24-hour heart rate variability signals in normal and pathological subjects

机译:正常和病理受试者中24小时心率变异性信号的复杂动力学评估

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Long term regulation of beat-to-beat variability involves a different kind of control. Parametric models provide quantitative indices which measure short time regulating action of the autonomic nervous system. In the long period instead, nonlinear contributions can be put into evidence by a chaotic deterministic approach. For heart rate variability (HRV) series collected in the 24 hours in 14 normal subjects and 28 subjects with cardiovascular pathologies (11 severe heart failure, 11 essential hypertensive and 6 heart transplant), we extract some parameters which are reputed to be invariant characteristic of system attractor: fractal dimension, Kolmogorov entropy and Lyapunov exponents. Geometric representations in the state space, such as delay maps and phase space plots, describe system trajectories through the singular value decomposition method. All these parameters confirm the existence of nonlinear dynamics in HRV signals and show different values for normal and pathological subjects: in particular we notice a reduction of the complexity of the discrete series when passing from normal to pathological subjects.
机译:逐拍变异性的长期调节涉及另一种控制方式。参数模型提供定量指标,这些指标可测量植物神经系统的短期调节作用。相反,在较长时期内,可以通过混沌确定性方法来证明非线性贡献。对于14个正常受试者和28个心血管疾病(11个严重心力衰竭,11个基本高血压和6个心脏移植)在24小时内收集的心率变异性(HRV)系列,我们提取了一些参数,这些参数被称为是系统吸引子:分形维数,Kolmogorov熵和Lyapunov指数。状态空间中的几何表示(例如延迟图和相空间图)通过奇异值分解方法描述系统轨迹。所有这些参数证实了HRV信号中存在非线性动力学,并且对于正常和病理受试者显示出不同的值:特别是,当从正常受试者转到病理受试者时,我们注意到离散序列的复杂性降低了。

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