Aguet Clementine, Zaen Jerome Van, Jorge Joao, Proenca Martin, Bonnier Guillaume, Frossard Pascal, Lemay Mathieu
Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:463-466. doi: 10.1109/EMBC46164.2021.9630665.
Blood pressure (BP) is an important indicator for prevention and management of cardiovascular diseases. Alongside the improvement in sensors and wearables, photoplethysmography (PPG) appears to be a promising technology for continuous, non-invasive and cuffless BP monitoring. Previous attempts mainly focused on features extracted from the pulse morphology. In this paper, we propose to remove the feature engineering step and automatically generate features from an ensemble average (EA) PPG pulse and its derivatives, using convolutional neural network and a calibration measurement. We used the large VitalDB dataset to accurately evaluate the generalization capability of the proposed model. The model achieved mean errors of -0.24 ± 11.56 mmHg for SBP and -0.5 ± 6.52 mmHg for DBP. We observed a considerable reduction in error standard deviation of above 40% compared to the control case, which assumes no BP variation. Altogether, these results highlight the capability to model the dependency between PPG and BP.
血压(BP)是心血管疾病预防和管理的重要指标。随着传感器和可穿戴设备的不断改进,光电容积脉搏波描记法(PPG)似乎是一种用于连续、无创和无袖带血压监测的有前途的技术。以往的尝试主要集中在从脉搏形态中提取的特征上。在本文中,我们建议去除特征工程步骤,并使用卷积神经网络和校准测量,从总体平均(EA)PPG脉搏及其导数中自动生成特征。我们使用大型VitalDB数据集准确评估了所提出模型的泛化能力。该模型的收缩压平均误差为-0.24±11.56 mmHg,舒张压平均误差为-0.5±6.52 mmHg。与假设血压无变化的对照情况相比,我们观察到误差标准差显著降低了40%以上。总之,这些结果突出了对PPG和BP之间依赖性进行建模的能力。