Department of Electronics and Communication Engineering, Bennett University, Greater Noida, India.
School of Computer science engineering and technology, Bennett University, Greater Noida, India.
Phys Eng Sci Med. 2023 Dec;46(4):1589-1605. doi: 10.1007/s13246-023-01322-8. Epub 2023 Sep 25.
The markers that help to predict th function of a cardiovascular system are hemodynamic parameters like blood pressure (BP), stroke volume, heart rate, and cardiac output. Continuous analysis of hemodynamic parameters such as BP can detect abnormalities earlier, preventing cardiovascular diseases (CVDs). However, sometimes due to motion artifacts, it becomes difficult to monitor the BP accurately and classify it. This work presents an optimized deep learning model having the capability to estimate the systolic blood pressure (SBP) and diastolic blood pressure (DBP) and classify the BP stages simultaneously from the same network using only a single channel photoplethysmography (PPG) signal. The proposed model is designed by exploiting the deep learning framework of a convolutional neural network (CNN), exhibiting the inherent ability to extract features automatically. Moreover, the proposed framework utilizes the superlet transform method to transform a 1-D PPG signal into a 2-D super-resolution time-frequency (TF) spectrogram. A superlet transform separates the peaks related to true PPG signal components and motion artifacts components. Thus, the superlet provides a robust realtime approach to accurately estimating and classifying BP using a single PPG sensor signal and does not require additional ECG and PPG sensor signals for reference. Using a super-resolution spectrogram and CNN model makes the method profitable in motion artifact removal, feature selection, and extraction. Hence the proposed framework becomes less complex for deployment on wearable devices having limited battery resources. The performance of the proposed framework is demonstrated on the publicly available larger dataset MIMIC-III. This work obtained a mean absolute error (MAE) of 2.71 mmHg and 2.42 mmHg for SBP and DBP, respectively. The classification accuracy for the SBP prediction is about 96.79%, whereas it is 98.94% for DBP. From a motion artifact-affected PPG signal, SBP and DBP are estimated. Then the estimated BP is classified into three categories: normotension, prehypertension, and hypertension, and is compared with the state of art methods to show the effectiveness of the proposed optimized framework.
有助于预测心血管系统功能的标志物是血流动力学参数,如血压(BP)、每搏输出量、心率和心输出量。对血压等血流动力学参数的连续分析可以更早地发现异常,从而预防心血管疾病(CVD)。然而,有时由于运动伪影,很难准确监测血压并对其进行分类。本工作提出了一种优化的深度学习模型,该模型具有从单个通道光电容积脉搏波(PPG)信号同时估计收缩压(SBP)和舒张压(DBP)并对血压阶段进行分类的能力。所提出的模型是通过利用卷积神经网络(CNN)的深度学习框架设计的,展示了自动提取特征的固有能力。此外,所提出的框架利用超小波变换方法将一维 PPG 信号转换为二维超分辨率时频(TF)频谱图。超小波将与真实 PPG 信号分量和运动伪影分量相关的峰值分开。因此,超小波为使用单个 PPG 传感器信号准确估计和分类 BP 提供了一种稳健的实时方法,而不需要额外的 ECG 和 PPG 传感器信号作为参考。使用超分辨率频谱图和 CNN 模型使该方法在运动伪影去除、特征选择和提取方面具有优势。因此,所提出的框架对于具有有限电池资源的可穿戴设备的部署变得不那么复杂。该框架的性能在公开的更大的 MIMIC-III 数据集上进行了验证。该工作分别获得了 SBP 和 DBP 的 2.71mmHg 和 2.42mmHg 的平均绝对误差(MAE)。SBP 预测的分类准确率约为 96.79%,而 DBP 的分类准确率为 98.94%。从受运动伪影影响的 PPG 信号中,估计 SBP 和 DBP。然后将估计的 BP 分为正常血压、高血压前期和高血压三类,并与现有的方法进行比较,以显示所提出的优化框架的有效性。