Li Jiaqi, Ling Bingo Wing-Kuen
Faculty of Information Engineering, Guangdong University of Technology, Guangzhou, China.
IET Syst Biol. 2025 Jan-Dec;19(1):e70032. doi: 10.1049/syb2.70032.
Since instantaneous large changes in blood pressure (BP) values would cause the stroke or even death, continuous BP estimation is essential and crucial. Nevertheless, traditional cuffed BP estimation devices are unable to perform continuous BP estimation. Therefore, there has been a growing interest in developing continuous cuffless BP estimation devices. In order to reduce hardware costs, photoplethysmograms (PPGs) are acquired and their integer order derivative signals are computed to extract features related to BP. Then, conventional machine learning models are developed to estimate BP values. However, the nonlinear characteristics of the heart and blood vessels introduce fractional delays to blood flow. Hence, the traditional integer order derivatives of PPGs may not yield high accuracy. To address this issue, this paper proposes a cuffless BP estimation method based on fractional order derivatives (FODs) of PPGs. First, singular spectrum analysis (SSA) is employed to preprocess the PPGs. Then, the fractional order derivatives of the preprocessed PPGs are calculated. Second, a multi-channel Gramian angular field (GAF)-based image encoding method is applied to both the integer order and fractional order derivatives of the PPGs to generate two-dimensional (2D) images. Then, the encoded images from each individual channel are combined to form a multi-channel encoded image. Third, a residual neural network with 18 layers (ResNet-18) and a U-architecture convolutional network (U-Net) are respectively used for BP estimation. To evaluate the effectiveness of our proposed method, computer numerical simulations are conducted using the Queensland dataset. The results show that our proposed method yields the lower errors and higher correlation coefficients compared to existing methods. Furthermore, our proposed method outperforms both the single-channel and three-channel image encoding methods in terms of errors and correlation coefficients.
由于血压(BP)值的瞬间大幅变化会导致中风甚至死亡,因此连续血压估计至关重要。然而,传统的袖带式血压估计设备无法进行连续血压估计。因此,开发连续无袖带血压估计设备的兴趣日益浓厚。为了降低硬件成本,采集光电容积脉搏波(PPG)并计算其整数阶导数信号以提取与血压相关的特征。然后,开发传统的机器学习模型来估计血压值。然而,心脏和血管的非线性特征会给血流引入分数延迟。因此,PPG的传统整数阶导数可能无法产生高精度。为了解决这个问题,本文提出了一种基于PPG分数阶导数(FOD)的无袖带血压估计方法。首先,采用奇异谱分析(SSA)对PPG进行预处理。然后,计算预处理后PPG的分数阶导数。其次,将基于多通道格拉姆角场(GAF)的图像编码方法应用于PPG的整数阶和分数阶导数,以生成二维(2D)图像。然后,将来自每个单独通道的编码图像组合形成多通道编码图像。第三,分别使用具有18层的残差神经网络(ResNet-18)和U型架构卷积网络(U-Net)进行血压估计。为了评估我们提出的方法的有效性,使用昆士兰数据集进行了计算机数值模拟。结果表明,与现有方法相比,我们提出的方法产生的误差更低,相关系数更高。此外,我们提出的方法在误差和相关系数方面均优于单通道和三通道图像编码方法。