Porta Alberto, Bari Vlasta, Ranuzzi Giovanni, De Maria Beatrice, Baselli Giuseppe
Department of Biomedical Sciences for Health, University of Milan, Milan, Italy.
Department of Cardiothoracic, Vascular Anesthesia and Intensive Care, IRCCS Policlinico San Donato, San Donato Milanese, Milan, Italy.
Chaos. 2017 Sep;27(9):093901. doi: 10.1063/1.4999353.
We propose a multiscale complexity (MSC) method assessing irregularity in assigned frequency bands and being appropriate for analyzing the short time series. It is grounded on the identification of the coefficients of an autoregressive model, on the computation of the mean position of the poles generating the components of the power spectral density in an assigned frequency band, and on the assessment of its distance from the unit circle in the complex plane. The MSC method was tested on simulations and applied to the short heart period (HP) variability series recorded during graded head-up tilt in 17 subjects (age from 21 to 54 years, median = 28 years, 7 females) and during paced breathing protocols in 19 subjects (age from 27 to 35 years, median = 31 years, 11 females) to assess the contribution of time scales typical of the cardiac autonomic control, namely in low frequency (LF, from 0.04 to 0.15 Hz) and high frequency (HF, from 0.15 to 0.5 Hz) bands to the complexity of the cardiac regulation. The proposed MSC technique was compared to a traditional model-free multiscale method grounded on information theory, i.e., multiscale entropy (MSE). The approach suggests that the reduction of HP variability complexity observed during graded head-up tilt is due to a regularization of the HP fluctuations in LF band via a possible intervention of sympathetic control and the decrement of HP variability complexity observed during slow breathing is the result of the regularization of the HP variations in both LF and HF bands, thus implying the action of physiological mechanisms working at time scales even different from that of respiration. MSE did not distinguish experimental conditions at time scales larger than 1. Over a short time series MSC allows a more insightful association between cardiac control complexity and physiological mechanisms modulating cardiac rhythm compared to a more traditional tool such as MSE.
我们提出了一种多尺度复杂度(MSC)方法,该方法用于评估指定频带内的不规则性,适用于分析短时间序列。它基于自回归模型系数的识别、指定频带内生成功率谱密度分量的极点平均位置的计算以及其在复平面中与单位圆距离的评估。MSC方法在模拟中进行了测试,并应用于17名受试者(年龄从21岁到54岁,中位数 = 28岁,7名女性)在分级头高位倾斜期间以及19名受试者(年龄从27岁到35岁,中位数 = 31岁,11名女性)在定频呼吸方案期间记录的短心动周期(HP)变异性序列,以评估心脏自主控制典型时间尺度(即低频(LF,0.04至0.15Hz)和高频(HF,0.15至0.5Hz)频段)对心脏调节复杂性的贡献。所提出的MSC技术与基于信息论的传统无模型多尺度方法,即多尺度熵(MSE)进行了比较。该方法表明,分级头高位倾斜期间观察到的HP变异性复杂性降低是由于交感神经控制的可能干预使LF频段的HP波动正则化,而慢呼吸期间观察到的HP变异性复杂性降低是LF和HF频段HP变化正则化的结果,这意味着生理机制在与呼吸不同的时间尺度上起作用。在时间尺度大于1时,MSE无法区分实验条件。与更传统的工具如MSE相比,在短时间序列上,MSC能够更深入地关联心脏控制复杂性与调节心律的生理机制。