Shimazaki Shota, Bhuiyan Shoaib, Kawanaka Haruki, Oguri Koji
Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:2857-2860. doi: 10.1109/EMBC.2018.8512829.
Several studies have been proposed to estimate blood pressure (BP) with cuffless devices using only a Photoplethysmograph (PPG) sensor on the basis of the physiological knowledge that the PPG changes depend on the state of the cardiovascular system. In these studies, machine learning algorithms were used to extract various features from the wave height and the elapsed time from the rising point of the pulse wave to feature points have been used to estimate the BP. However, the accuracy is still not adequate to be used as medical equipment because their features cannot express fully information of the pulse waveform which changes according to the BP. And, no other effective knowledge about the pulse waveform for estimating BP has been found yet. Therefore, in this study, we focus on the autoencoder which can extract complex features and can add new features of the pulse waveform for estimating the BP. By using autoencoder, we extracted 100 features from the coupling signal of the pulse wave and from its first-order differentiation and second-order differentiation. The result of examination with 1363 test subjects show that the correlation coefficients and the standard deviation of the difference between the measured BP and the estimated BP got improved from R = 0.67, SD = 13.97 without autoencoder to R = 0.78, SD = 11.86 with autoencoder.
已经有多项研究提出,基于光电容积脉搏波描记图(PPG)传感器仅利用生理知识来估计血压(BP),该生理知识即PPG变化取决于心血管系统的状态。在这些研究中,机器学习算法被用于从脉搏波上升点到特征点的波高和经过时间中提取各种特征,以估计血压。然而,由于这些特征无法充分表达随血压变化的脉搏波形信息,其准确性仍不足以用作医疗设备。而且,尚未发现其他关于用于估计血压的脉搏波形的有效知识。因此,在本研究中,我们聚焦于能够提取复杂特征并可为估计血压添加脉搏波形新特征的自动编码器。通过使用自动编码器,我们从脉搏波的耦合信号及其一阶导数和二阶导数中提取了100个特征。对1363名测试对象的检测结果表明,测量血压与估计血压之间差异的相关系数和标准差从无自动编码器时的R = 0.67,SD = 13.97提高到有自动编码器时的R = 0.78,SD = 11.86。