IEEE J Biomed Health Inform. 2024 Jul;28(7):3882-3894. doi: 10.1109/JBHI.2024.3395445. Epub 2024 Jul 2.
Biosignals collected by wearable devices, such as electrocardiogram and photoplethysmogram, exhibit redundancy and global temporal dependencies, posing a challenge in extracting discriminative features for blood pressure (BP) estimation. To address this challenge, we propose HGCTNet, a handcrafted feature-guided CNN and transformer network for cuffless BP measurement based on wearable devices. By leveraging convolutional operations and self-attention mechanisms, we design a CNN-Transformer hybrid architecture to learn features from biosignals that capture both local information and global temporal dependencies. Then, we introduce a handcrafted feature-guided attention module that utilizes handcrafted features extracted from biosignals as query vectors to eliminate redundant information within the learned features. Finally, we design a feature fusion module that integrates the learned features, handcrafted features, and demographics to enhance model performance. We validate our approach using two large wearable BP datasets: the CAS-BP dataset and the Aurora-BP dataset. Experimental results demonstrate that HGCTNet achieves an estimation error of 0.9 ± 6.5 mmHg for diastolic BP (DBP) and 0.7 ± 8.3 mmHg for systolic BP (SBP) on the CAS-BP dataset. On the Aurora-BP dataset, the corresponding errors are -0.4 ± 7.0 mmHg for DBP and -0.4 ± 8.6 mmHg for SBP. Compared to the current state-of-the-art approaches, HGCTNet reduces the mean absolute error of SBP estimation by 10.68% on the CAS-BP dataset and 9.84% on the Aurora-BP dataset. These results highlight the potential of HGCTNet in improving the performance of wearable cuffless BP measurements.
可穿戴设备采集的生物信号,如心电图和光电容积脉搏波,具有冗余性和全局时间依赖性,这给从生物信号中提取用于血压(BP)估计的有区分性特征带来了挑战。为了解决这个挑战,我们提出了 HGCTNet,这是一种基于可穿戴设备的无袖带血压测量的手工特征引导 CNN 和 Transformer 网络。通过利用卷积操作和自注意力机制,我们设计了一个 CNN-Transformer 混合架构,从生物信号中学习特征,这些特征既可以捕捉局部信息,也可以捕捉全局时间依赖性。然后,我们引入了一个手工特征引导的注意力模块,该模块利用从生物信号中提取的手工特征作为查询向量,以消除学习特征中的冗余信息。最后,我们设计了一个特征融合模块,该模块集成了学习特征、手工特征和人口统计学特征,以提高模型性能。我们使用两个大型可穿戴 BP 数据集,即 CAS-BP 数据集和 Aurora-BP 数据集,验证了我们的方法。实验结果表明,HGCTNet 在 CAS-BP 数据集上对舒张压(DBP)的估计误差为 0.9±6.5mmHg,对收缩压(SBP)的估计误差为 0.7±8.3mmHg。在 Aurora-BP 数据集上,对应的误差分别为 DBP 的-0.4±7.0mmHg 和 SBP 的-0.4±8.6mmHg。与当前最先进的方法相比,HGCTNet 在 CAS-BP 数据集上的收缩压估计平均绝对误差降低了 10.68%,在 Aurora-BP 数据集上降低了 9.84%。这些结果突出了 HGCTNet 在提高无袖带可穿戴 BP 测量性能方面的潜力。