Entropy-Facilitated Machine Learning for Blood Pressure Estimation Using Electrocardiogram and Photoplethysmogram in a Wearable Device

K. Ma, Hong Hao, Hung-Chun Huang, Yun-Hsiang Tang
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引用次数: 4

Abstract

Wearable devices that detect electrocardiogram (ECG) signals and photoplethysmogram (PPG) signals have been proposed to be effective at identifying early stage hypertension and estimating blood pressure. On the other hand, information entropy has been applied to determine whether certain biomedical signals represent pathological changes. In this study, Shannon entropy, sample entropy, and permutation entropy were derived from ECG and PPG signals collected through a wrist band wearable device, and were used to test whether the combination use of common features extracted from ECG and PPG, plus information entropies of ECG and PPG, may serve as effective features for blood pressure estimation when using machine learning-based linear regression (LR), random forest (RF), support vector regression (SVR), deep neural network (DNN), and XGBoost. Overall, the accuracy for blood pressure estimation was higher for diastolic blood pressure (DBP) than that for systolic blood pressure (SBP). The use of the entropies of ECG, PPG, or both, may increase the performance of BP estimation at an increase ranging from 3.3% to 10%. Accuracy of DBP estimation reached the highest when using entropies of ECG and PPG in either SVR or RF, with RF having a lower root-mean-square error (RMSE) compared with that for SVR. Likewise, SVR outperformed other models for the estimation of systolic blood pressure (SBP). The use of PPG entropy benefited the performance of LR, RF, and DNN in SBP estimation, which was better than when using entropies of ECG; for DNN, PPG entropy also brought about higher accuracy when it comes to the estimation of DBP. In conclusion, the use of entropies of ECG and PPG can improve the performance of blood pressure estimation, thus appears to be useful features in wearable devices that may facilitate blood pressure monitoring.
在可穿戴设备中使用心电图和光容积描记图进行血压估计的熵促进机器学习
可穿戴设备检测心电图(ECG)信号和光容积描记图(PPG)信号已被提出用于有效识别早期高血压和估计血压。另一方面,信息熵被用于确定某些生物医学信号是否代表病理变化。本研究通过腕带可穿戴设备采集心电图和PPG信号,提取香农熵、样本熵和置换熵,用于检验在基于机器学习的线性回归(LR)、随机森林(RF)、支持向量回归(SVR)、深度神经网络(DNN)、和XGBoost。总体而言,舒张压(DBP)的血压估计准确性高于收缩压(SBP)。使用ECG、PPG或两者的熵,可以提高BP估计的性能,提高幅度在3.3%到10%之间。在SVR和RF中使用ECG和PPG的熵估计DBP的准确性最高,RF的均方根误差(RMSE)低于SVR。同样,SVR在估计收缩压(SBP)方面优于其他模型。使用PPG熵有利于LR、RF和DNN在收缩压估计中的性能,且优于使用ECG熵;对于DNN, PPG熵在估计DBP时也带来了更高的精度。综上所述,使用ECG和PPG的熵可以提高血压估计的性能,因此似乎是可穿戴设备中有用的功能,可以促进血压监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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