Mendez Martin O, Bianchi Anna M, Recker Florian, Strizek Brigitte, Murguía J S, Reali Pierluigi, Jimenez-Cruz Jorge
Department of Obstetrics and Prenatal Medicine, University of Bonn, Bonn, Germany.
Department of Electronics, Information and Bioengineering, Politecnico di Milano, Milan, Italy.
Front Cardiovasc Med. 2024 Aug 6;11:1404055. doi: 10.3389/fcvm.2024.1404055. eCollection 2024.
Understanding the complex dynamics of heart rate variability (HRV) during pregnancy is crucial for monitoring both maternal well-being and fetal health. In this study, we use the Multifractal Detrended Fluctuations Analysis approach to investigate HRV patterns in pregnant individuals during sleep based on RR interval maxima (MM fluctuations). In addition, we study the type of multifractality within MM fluctuations, that is, if it arises from a broad probability density function or from varying long-range correlations. Furthermore, to provide a comprehensive view of HRV changes during sleep in pregnancy, classical temporal and spectral HRV indices were calculated at quarterly intervals during sleep. Our study population consists of 21 recordings from nonpregnant women, 18 from the first trimester (early-pregnancy) and 18 from the second trimester (middle-pregnancy) of pregnancy. Results. There are statistically significant differences ( -value < 0.05) in mean heart rate, rms heart rate, mean MM fluctuations, and standard deviation of MM fluctuations, particularly in the third and fourth quarter of sleep between pregnant and non-pregnant states. In addition, the early-pregnancy group shows significant differences ( -value < 0.05) in spectral indices during the first and fourth quarter of sleep compared to the non-pregnancy group. Furthermore, the results of our research show striking similarities in the average multifractal structure of MM fluctuations between pregnant and non-pregnant states during normal sleep. These results highlight the influence of different long-range correlations within the MM fluctuations, which could be primarily associated with the emergence of sleep cycles on multifractality during sleep. Finally, we performed a separability analysis between groups using temporal and spectral HRV indices as features per sleep quarter. Employing only three features after Principal Component Analysis (PCA) to the original feature set, achieving complete separability among all groups appears feasible. Using multifractal analysis, our study provides a comprehensive understanding of the complex HRV patterns during pregnancy, which holds promise for maternal and fetal health monitoring. The separability analysis also provides valuable insights into the potential for group differentiation using simple measures such as mean heart rate, rms heart rate, and mean MM fluctuations or in the transformed feature space based on PCA.
了解孕期心率变异性(HRV)的复杂动态对于监测母亲健康和胎儿健康都至关重要。在本研究中,我们使用多重分形去趋势波动分析方法,基于RR间期最大值(MM波动)来研究孕妇睡眠期间的HRV模式。此外,我们研究了MM波动内多重分形的类型,即它是源于广泛的概率密度函数还是源于不同的长程相关性。此外,为了全面了解孕期睡眠期间HRV的变化,在睡眠期间按季度计算经典的时域和频域HRV指标。我们的研究对象包括21名非孕妇的记录、18名孕早期(早孕)和18名孕中期(中孕)孕妇的记录。结果。平均心率、均方根心率、平均MM波动和MM波动标准差存在统计学显著差异(p值<0.05),尤其是在孕妇和非孕妇状态睡眠的第三和第四季度。此外,与非孕组相比,早孕组在睡眠的第一和第四季度的频域指标存在显著差异(p值<0.05)。此外,我们的研究结果表明,在正常睡眠期间,孕妇和非孕妇状态下MM波动的平均多重分形结构存在惊人的相似性。这些结果突出了MM波动内不同长程相关性的影响,这可能主要与睡眠周期的出现对睡眠期间多重分形的影响有关。最后,我们使用时域和频域HRV指标作为每个睡眠季度的特征,对组间进行可分离性分析。对原始特征集进行主成分分析(PCA)后仅使用三个特征,在所有组之间实现完全可分离似乎是可行的。使用多重分形分析,我们的研究提供了对孕期复杂HRV模式的全面理解,这对母婴健康监测具有重要意义。可分离性分析还为使用平均心率、均方根心率和平均MM波动等简单测量方法或基于PCA的变换特征空间进行组间区分的潜力提供了有价值的见解。