Department of Electrical and Information Engineering, Polytechnic University of Bari, 70125 Bari, Italy.
Sensors (Basel). 2023 Feb 19;23(4):2321. doi: 10.3390/s23042321.
In this paper, new features relevant to blood pressure (BP) estimation using photoplethysmography (PPG) are presented. A total of 195 features, including the proposed ones and those already known in the literature, have been calculated on a set composed of 50,000 pulses from 1080 different patients. Three feature selection methods, namely Correlation-based Feature Selection (CFS), RReliefF and Minimum Redundancy Maximum Relevance (MRMR), have then been applied to identify the most significant features for BP estimation. Some of these features have been extracted through a novel PPG signal enhancement method based on the use of the Maximal Overlap Discrete Wavelet Transform (MODWT). As a matter of fact, the enhanced signal leads to a reliable identification of the characteristic points of the PPG signal (e.g., systolic, diastolic and dicrotic notch points) by simple means, obtaining results comparable with those from purposely defined algorithms. For systolic points, mean and std of errors computed as the difference between the locations obtained using a purposely defined already known algorithm and those using the MODWT enhancement are, respectively, 0.0097 s and 0.0202 s; for diastolic points they are, respectively, 0.0441 s and 0.0486 s; for dicrotic notch points they are 0.0458 s and 0.0896 s. Hence, this study leads to the selection of several new features from the MODWT enhanced signal on every single pulse extracted from PPG signals, in addition to features already known in the literature. These features can be employed to train machine learning (ML) models useful for estimating systolic blood pressure () and diastolic blood pressure () in a non-invasive way, which is suitable for telemedicine health-care monitoring.
本文提出了一些与使用光体积描记法(PPG)估计血压(BP)相关的新特征。总共计算了 195 个特征,包括提出的特征和文献中已有的特征,这些特征是基于由 1080 个不同患者的 50000 个脉搏组成的集合计算得到的。然后,应用三种特征选择方法,即基于相关性的特征选择(CFS)、RReliefF 和最小冗余最大相关性(MRMR),来识别用于 BP 估计的最显著特征。其中一些特征是通过一种新的基于最大重叠离散小波变换(MODWT)的 PPG 信号增强方法提取的。事实上,增强后的信号通过简单的方法可靠地识别 PPG 信号的特征点(例如,收缩期、舒张期和重搏切迹点),得到的结果与专门定义的算法相当。对于收缩期点,使用专门定义的已知算法获得的位置与使用 MODWT 增强获得的位置之间的差异计算得到的均值和标准差分别为 0.0097 s 和 0.0202 s;对于舒张期点,它们分别为 0.0441 s 和 0.0486 s;对于重搏切迹点,它们分别为 0.0458 s 和 0.0896 s。因此,这项研究从每个从 PPG 信号中提取的增强后的 MODWT 信号中选择了一些新的特征,除了文献中已经存在的特征。这些特征可用于训练机器学习(ML)模型,以便以非侵入性的方式估计收缩压(SBP)和舒张压(DBP),这适合远程医疗保健监测。