Esmaelpoor Jamal, Moradi Mohammad Hassan, Kadkhodamohammadi Abdolrahim
Islamic Azad University, Boukan Branch, Boukan, Iran.
Amirkabir University of Technology, Tehran, Iran.
Physiol Meas. 2021 Apr 9;42(3). doi: 10.1088/1361-6579/abeae8.
For the first time in the literature, this paper investigates some crucial aspects of blood pressure (BP) monitoring using photoplethysmogram (PPG) and electrocardiogram (ECG). In general, the proposed approaches utilize two types of features: parameters extracted from physiological models or machine-learned features. To provide an overview of the different feature extraction methods, we assess the performance of these features and their combinations. We also explore the importance of the ECG waveform. Although ECG contains critical information, most models merely use it as a time reference. To take this one step further, we investigate the effect of its waveform on the performance.We extracted 27 commonly used physiological parameters in the literature. In addition, convolutional neural networks (CNNs) were deployed to define deep-learned representations. We applied the CNNs to extract two different feature sets from the PPG segments alone and alongside corresponding ECG segments. Then, the extracted feature vectors and their combinations were fed into various regression models to evaluate our hypotheses.We performed our evaluations using data collected from 200 subjects. The results were analyzed by the mean difference t-test and graphical methods. Our results confirm that the ECG waveform contains important information and helps us to improve accuracy. The comparison of the physiological parameters and machine-learned features also reveals the superiority of machine-learned representations. Moreover, our results highlight that the combination of these feature sets does not provide any additional information.We conclude that CNN feature extractors provide us with concise and precise representations of ECG and PPG for BP monitoring.
本文首次在文献中研究了使用光电容积脉搏波描记图(PPG)和心电图(ECG)进行血压(BP)监测的一些关键方面。一般来说,所提出的方法利用两种类型的特征:从生理模型中提取的参数或机器学习特征。为了概述不同的特征提取方法,我们评估了这些特征及其组合的性能。我们还探讨了心电图波形的重要性。虽然心电图包含关键信息,但大多数模型仅将其用作时间参考。为了进一步研究,我们研究了其波形对性能的影响。我们提取了文献中常用的27个生理参数。此外,还部署了卷积神经网络(CNN)来定义深度学习表示。我们应用CNN单独从PPG段以及与相应的ECG段一起提取两个不同的特征集。然后,将提取的特征向量及其组合输入到各种回归模型中以评估我们的假设。我们使用从200名受试者收集的数据进行评估。结果通过平均差t检验和图形方法进行分析。我们的结果证实,心电图波形包含重要信息,并有助于我们提高准确性。生理参数和机器学习特征的比较也揭示了机器学习表示的优越性。此外,我们的结果突出表明,这些特征集的组合没有提供任何额外信息。我们得出结论,CNN特征提取器为我们提供了用于血压监测的心电图和光电容积脉搏波描记图的简洁而精确的表示。