[Study on a quantitative analysis method for pulse signal by modelling its waveform in time and space domain]

Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2020 Feb 25;37(1):61-70. doi: 10.7507/1001-5515.201904024.
[Article in Chinese]

Abstract

In order to quantitatively analyze the morphology and period of pulse signals, a time-space analytical modeling and quantitative analysis method for pulse signals were proposed. Firstly, according to the production mechanism of the pulse signal, the pulse space-time analytical model was built after integrating the period and baseline of pulse signal into the analytical model, and the model mathematical expression and its 12 parameters were obtained for pulse wave quantification. Then, the model parameters estimation process based on the actual pulse signal was presented, and the optimization method, constraints and boundary conditions in parameter estimation were given. The spatial-temporal analytical modeling method was applied to the pulse waves of healthy subjects from the international standard physiological signal sub-database Fantasia of the PhysioNet in open-source, and we derived some changes in heartbeat rhythm and hemodynamic generated by aging and gender difference from the analytical models. The model parameters were employed as the input of some machine learning methods, e.g. random forest and probabilistic neural network, to classify the pulse waves by age and gender, and the results showed that random forest has the best classification performance with Kappa coefficients over 98%. Therefore, the space-time analytical modeling method proposed in this study can effectively quantify and analyze the pulse signal, which provides a theoretical basis and technical framework for some related applications based on pulse signals.

为实现脉搏信号形态和周期的量化分析,本研究提出一种脉搏信号时空解析建模及量化分析方法。首先,根据脉搏信号的形成机理,将脉搏周期和基线引入脉搏解析模型,得到时空解析模型表达式及 12 个参数,用于脉搏波的量化描述。然后,提出了基于实际脉搏信号的模型参数估计流程,给出参数估计的优化方法、约束条件和边界条件。将所提出的时空解析建模方法用于国际标准生理信号开源数据库(PhysioNet)幻想曲(Fantasia)子库中的健康人脉搏波,从解析模型中可以得到一些年龄和性别因素引起的人体心脏搏动节律和血流动力学变化。以提取的模型参数为输入,采用随机森林、概率神经网络等机器学习方法对脉搏波按照年龄和性别进行分类,结果表明随机森林法分类效果最好,Kappa 系数达到 98% 以上。本研究提出的时空解析建模方法可有效地对脉搏信号进行量化分析,为脉搏信号相关的应用研究提供了理论基础和技术框架。.

Keywords: analytical modeling in the time-space domain; pulse signal; pulse to pulse interval; pulse waveform; quantitative analysis.

MeSH terms

  • Databases, Factual
  • Healthy Volunteers
  • Heart Rate*
  • Hemodynamics*
  • Humans
  • Pulse Wave Analysis*
  • Signal Processing, Computer-Assisted*

Grants and funding

国家自然科学基金(81360229,61901062);江苏省自然科学基金(BK20170436,BK20181033);2018年江苏省博士后科研资助基金;2018年国家公派高级研究学者、访问学者、博士后项目