Nazeran H, Krishnam R, Chatlapalli S, Pamula Y, Haltiwanger E, Cabrera S
Dept. of Electr. & Comput. Eng., Texas Univ., El Paso, TX, USA.
Conf Proc IEEE Eng Med Biol Soc. 2006;2006:3873-8. doi: 10.1109/IEMBS.2006.260709.
This paper reports a preliminary investigation to evaluate the significance of various nonlinear dynamics approaches to analyze the heart rate variability (HRV) signal in children with sleep disordered breathing (SDB). Data collected from children in the age group of 1-17 years diagnosed with sleep apnea were used in this study. Both short term (5 minutes) and long term data from a full night polysomnography (7-9 hours) were analyzed. For short term data, the presence of nonstationarity in the derived HRV signal was determined by calculating the local Hurst exponent. Poincare plots and approximate entropy (ApEn) were then used to show the presence of correlation in the data. For long term data, the derived HRV signal was first separated into corresponding sleep stages with the aid of the recorded sleep hypnogram values at 30 seconds epochs. The scaling exponents using detrended fluctuation analysis (DFA) and the ApEn were then calculated for each sleep stage. Data from two sample subjects recorded for different sleep stages and breathing patterns were considered for short term analysis. Data from 7 sample subjects (after sleep staging) were considered for long term analysis. The accuracy rate of ApEn was about 72% for both long term and short term data sets. The accuracy rate of Alpha (alpha) derived from DFA for long term correlations was 57%. Further work is necessary to improve on the accuracies of these useful nonlinear dynamic measures and determine their sensitivity and specificity to detect SDB in children.
本文报告了一项初步调查,以评估各种非线性动力学方法在分析睡眠呼吸障碍(SDB)儿童心率变异性(HRV)信号中的意义。本研究使用了从1至17岁被诊断为睡眠呼吸暂停的儿童收集的数据。分析了短期(5分钟)和全夜多导睡眠图(7至9小时)的长期数据。对于短期数据,通过计算局部赫斯特指数来确定导出的HRV信号中是否存在非平稳性。然后使用庞加莱图和近似熵(ApEn)来显示数据中的相关性。对于长期数据,首先借助于以30秒时段记录的睡眠脑电图值将导出的HRV信号分离为相应的睡眠阶段。然后针对每个睡眠阶段计算使用去趋势波动分析(DFA)的标度指数和ApEn。短期分析考虑了来自两个样本受试者在不同睡眠阶段和呼吸模式下记录的数据。长期分析考虑了来自7个样本受试者(睡眠分期后)的数据。对于长期和短期数据集,ApEn的准确率约为72%。从DFA得出的用于长期相关性的Alpha(α)准确率为57%。有必要进一步开展工作,以提高这些有用的非线性动力学测量的准确性,并确定它们在检测儿童SDB方面的敏感性和特异性。