School of Engineering, Monash University, Selangor, Malaysia.
School of Pharmacy, Monash University, Selangor, Malaysia.
Technol Health Care. 2023;31(1):205-215. doi: 10.3233/THC-220191.
One of the important areas of heart research is to analyze heart rate variability during (HRV) walking.
In this research, we investigated the correction between heart activation and the variations of walking paths.
We employed Shannon entropy to analyze how the information content of walking paths affects the information content of HRV. Eight healthy students walked on three designed walking paths with different information contents while we recorded their ECG signals. We computed and analyzed the Shannon entropy of the R-R interval time series (as an indicator of HRV) versus the Shannon entropy of different walking paths and accordingly evaluated their relation.
According to the obtained results, walking on the path that contains more information leads to less information in the R-R time series.
The analysis method employed in this research can be extended to analyze the relation between other physiological signals (such as brain or muscle reactions) and the walking path.
心脏研究的一个重要领域是分析行走过程中心率变异性(HRV)。
在这项研究中,我们研究了心脏激活与行走路径变化之间的校正关系。
我们采用香农熵来分析行走路径的信息量如何影响 HRV 的信息量。八名健康学生在三条具有不同信息量的设计行走路径上行走,同时记录他们的心电图信号。我们计算并分析了 R-R 间期时间序列(作为 HRV 的指标)的香农熵与不同行走路径的香农熵之间的关系,并对其进行了评估。
根据所得结果,在包含更多信息的路径上行走会导致 R-R 时间序列中的信息量减少。
本研究中采用的分析方法可以扩展到分析其他生理信号(如大脑或肌肉反应)与行走路径之间的关系。