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A nonlinear signal processing approach to model heart rate variability

机译:一种用于心率变异性建模的非线性信号处理方法

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Mathematically modeling and generating the time series (RR-intervals) for heart rate variability (HRV) has been an on-going research activity for some time. This is of use, not just in artificial electrocardiogram (ECG) generation, but also in order to both gain an insight into the heart's operation and for disease diagnosis. First presented in 1972, the Zeeman equations (which model the beating of the heart) were an important contribution to this research area. But some biologists may disagree with aspects of the proposed model-e.g., because there is no consideration of sympathetic and parasympathetic influences on the heart rate. So in this paper, we propose new developments to the original Zeeman equations (as regards the sympathovagal balance), in order to bring them closer to the biologist's idea of a suitable model for heart rate generation. Finally, simulations illustrate these improvements in the resultant HRV modeling.
机译:数学建模和生成心率变异性(HRV)的时间序列(RR间隔)一直是持续的研究活动。这不仅在人工心电图(ECG)生成中有用,而且还可以用于深入了解心脏的操作和疾病诊断。 Zeeman方程(模拟心脏跳动)于1972年首次提出,对这一研究领域做出了重要贡献。但是有些生物学家可能不同意所提议模型的各个方面,例如,因为没有考虑到心率对交感和副交感的影响。因此,在本文中,我们提出了对原始Zeeman方程(关于交感神经平衡)的新发展,以使它们更接近生物学家关于合适的心率生成模型的想法。最后,仿真说明了所得HRV建模中的这些改进。

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