Xing Xiaoman, Dong Wen-Fei, Xiao Renjie, Song Mingxuan, Jiang Chenyu
School of Biomedical Engineering (Suzhou), Division of Life Sciences and Medicine, University of Sciences and Technology of China, Suzhou 215163, China.
Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of Sciences, Suzhou 215163, China.
Entropy (Basel). 2023 Nov 24;25(12):1582. doi: 10.3390/e25121582.
Wearable technologies face challenges due to signal instability, hindering their usage. Thus, it is crucial to comprehend the connection between dynamic patterns in photoplethysmography (PPG) signals and cardiovascular health. In our study, we collected 401 multimodal recordings from two public databases, evaluating hemodynamic conditions like blood pressure (BP), cardiac output (CO), vascular compliance (), and peripheral resistance (). Using irregular-resampling auto-spectral analysis (IRASA), we quantified chaotic components in PPG signals and employed different methods to measure the fractal dimension (FD) and entropy. Our findings revealed that in surgery patients, the power of chaotic components increased with vascular stiffness. As the intensity of CO fluctuations increased, there was a notable strengthening in the correlation between most complexity measures of PPG and these parameters. Interestingly, some conventional morphological features displayed a significant decrease in correlation, indicating a shift from a static to dynamic scenario. Healthy subjects exhibited a higher percentage of chaotic components, and the correlation between complexity measures and hemodynamics in this group tended to be more pronounced. Causal analysis showed that hemodynamic fluctuations are main influencers for FD changes, with observed feedback in most cases. In conclusion, understanding chaotic patterns in PPG signals is vital for assessing cardiovascular health, especially in individuals with unstable hemodynamics or during ambulatory testing. These insights can help overcome the challenges faced by wearable technologies and enhance their usage in real-world scenarios.
可穿戴技术由于信号不稳定而面临挑战,这阻碍了它们的使用。因此,理解光电容积脉搏波描记法(PPG)信号中的动态模式与心血管健康之间的联系至关重要。在我们的研究中,我们从两个公共数据库收集了401份多模态记录,评估了诸如血压(BP)、心输出量(CO)、血管顺应性()和外周阻力()等血流动力学状况。使用不规则重采样自谱分析(IRASA),我们量化了PPG信号中的混沌成分,并采用不同方法测量分形维数(FD)和熵。我们的研究结果表明,在手术患者中,混沌成分的功率随血管僵硬度增加而增加。随着CO波动强度的增加,PPG的大多数复杂性测量指标与这些参数之间的相关性显著增强。有趣的是,一些传统形态学特征的相关性显著降低,表明从静态场景向动态场景的转变。健康受试者表现出更高比例的混沌成分,并且该组中复杂性测量指标与血流动力学之间的相关性往往更明显。因果分析表明,血流动力学波动是FD变化的主要影响因素,在大多数情况下观察到反馈。总之,了解PPG信号中的混沌模式对于评估心血管健康至关重要,尤其是对于血流动力学不稳定的个体或在动态测试期间。这些见解有助于克服可穿戴技术面临的挑战,并增强它们在现实场景中的使用。