Departmento de Fisica e Matemática, FFCLRP-Universidade de São Paulo. Av. Bandeirantes, 3900, CEP 14040-901, Ribeirão Preto-SP, Brazil.
Physiol Meas. 2012 Oct;33(10):1563-83. doi: 10.1088/0967-3334/33/10/1563. Epub 2012 Sep 4.
We analyzed the effectiveness of linear short- and long-term variability time domain parameters, an index of sympatho-vagal balance (SDNN/RMSSD) and entropy in differentiating fetal heart rate patterns (fHRPs) on the fetal heart rate (fHR) series of 5, 3 and 2 min duration reconstructed from 46 fetal magnetocardiograms. Gestational age (GA) varied from 21 to 38 weeks. FHRPs were classified based on the fHR standard deviation. In sleep states, we observed that vagal influence increased with GA, and entropy significantly increased (decreased) with GA (SDNN/RMSSD), demonstrating that a prevalence of vagal activity with autonomous nervous system maturation may be associated with increased sleep state complexity. In active wakefulness, we observed a significant negative (positive) correlation of short-term (long-term) variability parameters with SDNN/RMSSD. ANOVA statistics demonstrated that long-term irregularity and standard deviation of normal-to-normal beat intervals (SDNN) best differentiated among fHRPs. Our results confirm that short- and long-term variability parameters are useful to differentiate between quiet and active states, and that entropy improves the characterization of sleep states. All measures differentiated fHRPs more effectively on very short HR series, as a result of the fMCG high temporal resolution and of the intrinsic timescales of the events that originate the different fHRPs.
我们分析了线性短期和长期变异性时域参数、交感神经-迷走神经平衡指数(SDNN/RMSSD)和熵在区分胎儿心率(fHR)系列中 5、3 和 2 分钟时长的胎儿心磁图(fMCG)重构的胎儿心率模式(fHRP)中的有效性。胎龄(GA)从 21 周到 38 周不等。fHRP 是根据 fHR 标准差进行分类的。在睡眠状态下,我们观察到迷走神经的影响随着 GA 的增加而增加,而熵随着 GA 的增加(减少)显著增加(减少)(SDNN/RMSSD),这表明自主神经系统成熟时迷走神经活动的普遍性可能与睡眠状态复杂性的增加有关。在活跃的清醒状态下,我们观察到短期(长期)变异性参数与 SDNN/RMSSD 呈显著负(正)相关。方差分析表明,长期不规则性和正常-正常心跳间隔的标准差(SDNN)是区分 fHRP 的最佳参数。我们的结果证实,短期和长期变异性参数可用于区分安静和活跃状态,而熵可提高睡眠状态的特征描述。所有措施在非常短的 HR 系列上更有效地区分了 fHRP,这是因为 fMCG 具有高时间分辨率和产生不同 fHRP 的事件的固有时间尺度。