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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Identification of healthy and pathological heartbeat dynamics based on ECG-waveform using multifractal spectrum
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Identification of healthy and pathological heartbeat dynamics based on ECG-waveform using multifractal spectrum

机译:基于多法谱的ECG波形的健康和病理心跳动力学识别

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Human body surface electrocardiogram (ECG) is non-stationary and frequency-varying by nature that belongs to a typical nonlinear signal. Therefore, traditional linear and time-frequency analysis methods cannot fully disclose its nonlinear nature. Meanwhile, physiological complexity of heartbeat signal may vary with age, diseases, drug administrations, or even behavioral modifiers. To test the intrinsic relationships among them, we first put forward a theoretical model for nonlinear time series analysis and then took the generally accepted multifractal sets to verify it. Upon that, we then investigated the multifractal singularity spectrum areas of synchronous 12-lead ECG signals taken from crowds with different age stages, healthy conditions and drug medications. Our results suggested that aging and diseases can not only decrease multifractal complexity of the signals, but also increase inhomogeneity of it. With aging and deepening lesion, fractal-like structure of the heartbeat system is damaged or even structurally changed, which lead to the declination of physiological complexity and at the same time the increasement of irregularity and anisotropy of ECG signal's propagation. In addition, the mean value of multifractal spectrum area of human 12-lead ECG signals also reflect the self-discipline regulation of human autonomic nervous system. The value descends with age growing or drug intervention to restrain sympathetic nerves. That suggest self-discipline control function weakens when people are getting old, or they are under repressed heartbeat activities with lower heart rate and lower blood pressure. Then, complexity of heartbeat signal declines and even tends to turn from multifractality to monofractality, which means drops off of human individual adaptability. (C) 2020 Elsevier B.V. All rights reserved.
机译:人体表面心电图(ECG)由属于典型的非线性信号的性质是非静止和频率变化的。因此,传统的线性和时频分析方法不能完全披露其非线性性质。同时,心跳信号的生理复杂性可能随年龄,疾病,毒药署,甚至行为改性剂而变化。为了测试其中的内在关系,我们首先提出了一个用于非线性时间序列分析的理论模型,然后迈出了普遍接受的多分术集来验证。在此之后,我们研究了从具有不同年龄阶段,健康状况和毒品药物的人群中获取的同步12引导ECG信号的多分术奇异谱区域。我们的研究结果表明,老化和疾病不仅可以降低信号的多重复杂性,而且增加它的不均匀性。随着衰老和深化的病变,心跳系统的分形结构受损或甚至结构性地改变,这导致生理复杂性的偏差,同时增加了ECG信号传播的不规则性和各向异性。此外,人12-铅动态信号的多重分谱面积的平均值也反映了人自主神经系统的自律调节。该价值随着年龄增长或药物干预而下降,以抑制交感神经。当人们变老时,建议自律控制功能削弱,或者它们受到心跳降低心率和降低血压的压抑的心跳活动。然后,心跳信号的复杂性下降,甚至倾向于从多重性转向单次数,这意味着脱离人类个体适应性。 (c)2020 Elsevier B.v.保留所有权利。

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