Department of ECE, School of Engineering, Tezpur University, Assam, India.
Department of Instrumentation Engineering, Central Institute of Technology, Kokrajhar, India.
Biomed Eng Online. 2023 Apr 13;22(1):35. doi: 10.1186/s12938-023-01100-3.
In recent times, an upsurge in the investigation related to the effects of meditation in reconditioning various cardiovascular and psychological disorders is seen. In majority of these studies, heart rate variability (HRV) signal is used, probably for its ease of acquisition and low cost. Although understanding the dynamical complexity of HRV is not an easy task, the advances in nonlinear analysis has significantly helped in analyzing the impact of meditation of heart regulations. In this review, we intend to present the various nonlinear approaches, scientific findings and their limitations to develop deeper insights to carry out further research on this topic.
Literature have shown that research focus on nonlinear domain is mainly concentrated on assessing predictability, fractality, and entropy-based dynamical complexity of HRV signal. Although there were some conflicting results, most of the studies observed a reduced dynamical complexity, reduced fractal dimension, and decimated long-range correlation behavior during meditation. However, techniques, such as multiscale entropy (MSE) and multifractal analysis (MFA) of HRV can be more effective in analyzing non-stationary HRV signal, which were hardly used in the existing research works on meditation.
After going through the literature, it is realized that there is a requirement of a more rigorous research to get consistent and new findings about the changes in HRV dynamics due to the practice of meditation. The lack of adequate standard open access database is a concern in drawing statistically reliable results. Albeit, data augmentation technique is an alternative option to deal with this problem, data from adequate number of subjects can be more effective. Multiscale entropy analysis is scantily employed in studying the effect of meditation, which probably need more attention along with multifractal analysis.
Scientific databases, namely PubMed, Google Scholar, Web of Science, Scopus were searched to obtain the literature on "HRV analysis during meditation by nonlinear methods". Following an exclusion criteria, 26 articles were selected to carry out this scientific analysis.
近年来,人们对冥想对各种心血管和心理障碍的影响的研究兴趣日益浓厚。在这些研究中,心率变异性(HRV)信号可能因其易于获取和低成本而被广泛使用。尽管理解 HRV 的动态复杂性并非易事,但非线性分析的进步在分析冥想对心脏调节的影响方面有很大的帮助。在本综述中,我们旨在介绍各种非线性方法、科学发现及其局限性,以更深入地了解这一主题并开展进一步的研究。
文献表明,研究重点主要集中在评估 HRV 信号的可预测性、分形性和基于熵的动态复杂性上。尽管存在一些相互矛盾的结果,但大多数研究观察到冥想期间 HRV 的动态复杂性降低、分形维数降低和长程相关性行为减少。然而,HRV 的多尺度熵(MSE)和多重分形分析(MFA)等技术可以更有效地分析非平稳 HRV 信号,而这些技术在现有的冥想研究中很少使用。
通过文献回顾,人们意识到需要进行更严格的研究,以获得关于由于冥想实践而导致的 HRV 动力学变化的一致和新发现。缺乏足够的标准开放获取数据库是得出统计上可靠结果的一个关注点。尽管数据扩充技术是解决这个问题的一种替代方案,但足够数量的受试者的数据会更有效。多尺度熵分析在研究冥想的影响方面应用较少,可能需要更多关注,同时也需要进行多重分形分析。
科学数据库,如 PubMed、Google Scholar、Web of Science 和 Scopus 被用来获取关于“通过非线性方法在冥想期间进行 HRV 分析”的文献。经过排除标准,选择了 26 篇文章进行这项科学分析。