Park Junyung, Shin Hangsik
Department of Biomedical Engineering, Chonnam National University, Yeosu, Republic of Korea.
Department of Convergence Medicine, Asan Medical Center, University of Ulsan College of Medicine, Seoul, Republic of Korea.
JMIR Med Inform. 2022 Mar 17;10(3):e33439. doi: 10.2196/33439.
For the noninvasive assessment of arterial stiffness, a well-known indicator of arterial aging, various features based on the photoplethysmogram and regression methods have been proposed. However, whether because of the existing characteristics not accurately reflecting the characteristics of the incident and reflected waveforms of the photoplethysmogram or because of the lack of expressive power of the regression model, a reliable arterial stiffness assessment technique based on a single photoplethysmogram has not yet been proposed.
The purpose of this study is to discover highly correlated features from the incident and reflected waves decomposed from a photoplethysmogram waveform and to develop an artificial neural network-based regression model for the assessment of vascular aging using newly derived features.
We obtained photoplethysmograms from 757 participants. All recorded photoplethysmograms were segmented for each beat, and each waveform was decomposed into incident and reflected waves by the Gaussian mixture model. The 26 basic features and 52 combined features were defined from the morphological characteristics of the incident and reflected waves. The regression model of the artificial neural network was developed using the defined features.
In correlation analysis, the features from the amplitude of the reflected wave and the skewness of the photoplethysmogram showed a relatively strong correlation with the participant's real age. In the estimation of real age, the artificial neural network model showed 10.0 years of root mean square error. Its estimated age and real age had a strong correlation of 0.63 (P<.001).
This study proved that the features defined from the reflected wave and skewness of the photoplethysmogram are useful to assess vascular aging. Moreover, the regression model of artificial neural network using these features shows the feasibility for the estimation of vascular aging.
动脉僵硬度是动脉衰老的一个众所周知的指标,为了对其进行无创评估,人们已经提出了各种基于光电容积脉搏波描记图(PPG)和回归方法的特征。然而,无论是由于现有特征不能准确反映PPG入射波和反射波的特征,还是由于回归模型缺乏表达能力,基于单个PPG的可靠动脉僵硬度评估技术尚未被提出。
本研究的目的是从PPG波形分解出的入射波和反射波中发现高度相关的特征,并开发一种基于人工神经网络的回归模型,使用新导出的特征评估血管衰老。
我们从757名参与者那里获取了PPG。所有记录的PPG按心跳进行分割,每个波形通过高斯混合模型分解为入射波和反射波。根据入射波和反射波的形态特征定义了26个基本特征和52个组合特征。使用定义的特征开发了人工神经网络的回归模型。
在相关性分析中,反射波幅度和PPG偏度的特征与参与者的实际年龄显示出相对较强的相关性。在实际年龄估计中,人工神经网络模型的均方根误差为10.0岁。其估计年龄与实际年龄的相关性很强,为0.63(P<0.001)。
本研究证明,从PPG的反射波和偏度定义的特征对于评估血管衰老很有用。此外,使用这些特征的人工神经网络回归模型显示了估计血管衰老的可行性。