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首页> 外文期刊>Annals of Biomedical Engineering: The Journal of the Biomedical Engineering Society >Quantification of cardiorespiratory interactions based on joint symbolic dynamics.
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Quantification of cardiorespiratory interactions based on joint symbolic dynamics.

机译:基于联合符号动力学的心肺相互作用的量化。

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摘要

Cardiac and respiratory rhythms are highly nonlinear and nonstationary. As a result traditional time-domain techniques are often inadequate to characterize their complex dynamics. In this article, we introduce a novel technique to investigate the interactions between R-R intervals and respiratory phases based on their joint symbolic dynamics. To evaluate the technique, electrocardiograms (ECG) and respiratory signals were recorded in 13 healthy subjects in different body postures during spontaneous and controlled breathing. Herein, the R-R time series were extracted from ECG and respiratory phases were obtained from abdomen impedance belts using the Hilbert transform. Both time series were transformed into ternary symbol vectors based on the changes between two successive R-R intervals or respiratory phases. Subsequently, words of different symbol lengths were formed and the correspondence between the two series of words was determined to quantify the interaction between cardiac and respiratory cycles. To validate our results, respiratory sinus arrhythmia (RSA) was further studied using the phase-averaged characterization of the RSA pattern. The percentage of similarity of the sequence of symbols, between the respective words of the two series determined by joint symbolic dynamics, was significantly reduced in the upright position compared to the supine position (26.4 +/- 4.7 vs. 20.5 +/- 5.4%, p < 0.01). Similarly, RSA was also reduced during upright posture, but the difference was less significant (0.11 +/- 0.02 vs. 0.08 +/- 0.01 s, p < 0.05). In conclusion, joint symbolic dynamics provides a new efficient technique for the analysis of cardiorespiratory interaction that is highly sensitive to the effects of orthostatic challenge.
机译:心脏和呼吸节律高度非线性且不稳定。结果,传统的时域技术通常不足以表征其复杂的动态特性。在本文中,我们介绍了一种新技术,可基于R-R间隔和呼吸相之间的联合符号动力学来研究它们之间的相互作用。为了评估该技术,在自发和控制呼吸过程中,以不同的姿势记录了13位健康受试者的心电图(ECG)和呼吸信号。在此,从心电图提取R-R时间序列,并使用希尔伯特变换从腹部阻抗带获得呼吸相位。基于两个连续的R-R间隔或呼吸相位之间的变化,两个时间序列都转换为三元符号向量。随后,形成了不同符号长度的单词,并确定了两个单词系列之间的对应关系,以量化心脏和呼吸循环之间的相互作用。为了验证我们的结果,我们使用RSA模式的相位平均特征进一步研究了呼吸窦性心律不齐(RSA)。与仰卧位置相比,在竖立位置上,由联合符号动力学确定的两个系列的各个单词之间的符号序列相似度百分比显着降低(26.4 +/- 4.7与20.5 +/- 5.4% ,p <0.01)。同样,在直立姿势下RSA也降低,但差异不明显(0.11 +/- 0.02与0.08 +/- 0.01 s,p <0.05)。总之,联合符号动力学提供了一种新的有效技术来分析心肺互动,该技术对体位挑战的影响高度敏感。

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