Variability and Complexity of Non-stationary Functions: Methods for Post-exercise HRV.

IF 0.6 4区 心理学 Q4 PSYCHOLOGY, MATHEMATICAL
Nathaniel T Berry, Laurie Wideman, Christopher K Rhea
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引用次数: 0

Abstract

Heart rate variability (HRV) is a noninvasive marker of cardiac autonomic function that has been extensively studied in a variety of populations. However, HRV analyses require stationarity-thus, limiting the conditions in which these data can be analyzed in physiologic and health research (e.g. post-exercise). To provide evidence and clarity on how non-stationarity affects popular indices of variability and complexity. Simulations within physiologic (restricted to values similar to exercise and recovery RR-intervals) and non-physiologic parameters, with homoscedastic and heteroscedastic variances, across four sample lengths (200, 400, 800, and 2000), and four trends (stationary, positive-linear, quadratic, and cubic) were detrended using 1-3 order polynomials and sequential differencing. Measures of variability [standard deviation of normal intervals (SDNN) and root mean square of successive differences (rMSSD)] as well as complexity [sample entropy (SampEn)] were calculated on each of the raw and detrended time-series. Differential effects of trend, length, and fit were observed between physiologic and non-physiologic parameters. rMSSD was robust against trends within physiologic parameters while both SDNN and SampEn were positively and negatively biased by trend, respectively. Within non-physiologic parameters, the SDNN, rMSSD, and SampEn of the raw time-series were all biased, highlighting the effect of the scale between these two sets of parameters. However, indices of variability and complexity on the original (trended) times-series were furthest from those of the stationary time-series, with indices coming closer to the known values as fit become more optimal. Detrending with polynomial functions provide reliable and accurate methods of assessing the variability and complexity of non-stationary time-series-such as those immediately following exercise.

非平稳函数的变异性和复杂性:运动后HRV的方法。
心率变异性(HRV)是心脏自主神经功能的无创标志物,在各种人群中得到了广泛的研究。然而,HRV分析需要平稳性,因此限制了在生理和健康研究中分析这些数据的条件(例如运动后)。为非平稳性如何影响流行的变异性和复杂性指数提供证据和清晰度。使用1-3阶多项式和顺序差分对生理(限于与运动和恢复rr区间相似的值)和非生理参数进行模拟,在四个样本长度(200,400,800和2000)和四个趋势(平稳,正线性,二次和三次)中具有均方差和异方差。在每个原始和去趋势时间序列上计算可变性[正常区间标准差(SDNN)和连续差的均方根(rMSSD)]以及复杂性[样本熵(SampEn)]的度量。在生理和非生理参数之间观察到趋势、长度和拟合的差异效应。rMSSD对生理参数内的趋势具有很强的抗偏性,而SDNN和SampEn分别受到趋势的正偏和负偏。在非生理参数中,原始时间序列的SDNN、rMSSD和SampEn均存在偏倚,突出了这两组参数之间尺度的影响。然而,原始(趋势)时间序列的变异性和复杂性指标与平稳时间序列的变异性和复杂性指标相差最大,随着拟合越优,这些指标越接近已知值。用多项式函数去趋势提供了可靠和准确的方法来评估非平稳时间序列的可变性和复杂性,例如那些紧接着的锻炼。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.40
自引率
11.10%
发文量
26
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