Department of Statistics, Temple University, Philadelphia, PA, U.S.A.
Stat Med. 2014 Apr 15;33(8):1383-94. doi: 10.1002/sim.6038. Epub 2013 Nov 20.
Researchers in a variety of biomedical fields have utilized frequency domain properties of heart rate variability (HRV), or the elapsed time between consecutive heart beats. HRV is measured from the electrocardiograph signal through the interbeat interval series. Popular approaches for estimating power spectra from these interval data apply common spectral analysis methods that are designed for the analysis of evenly sampled time series. The application of these methods to the interbeat interval series, which is indexed over an uneven time grid, requires a bias-inducing transformation. The goal of this article is to explore the use of penalized sum of squares for nonparametric estimation of the spectrum of HRV directly from the interbeat intervals. A novel cross-validation procedure is introduced for smoothing parameter selection. Empirical properties of the proposed estimation procedure are explored and compared with popular methods in a simulation study. The proposed method is used in an analysis of data from an insomnia study, which seeks to illuminate the association between the power spectrum of HRV during different periods of sleep with response to behavioral therapy.
研究人员在各种生物医学领域中利用心率变异性(HRV)的频域特性,或两个连续心跳之间的时间间隔。HRV 通过心动间隔系列从心电图信号中测量。从这些间隔数据估计功率谱的常用方法应用了为均匀采样时间序列分析而设计的常见频谱分析方法。这些方法应用于心动间隔序列,该序列在不均匀的时间网格上进行索引,需要引入一种有偏差的转换。本文的目的是探索直接从心动间隔使用惩罚平方和进行 HRV 谱的非参数估计。引入了一种新的交叉验证程序来选择平滑参数。在模拟研究中,研究了所提出的估计方法的经验性质,并将其与流行方法进行了比较。该方法用于一项失眠研究的数据分析,旨在阐明睡眠不同阶段 HRV 功率谱与行为疗法反应之间的关系。