Roha Vishal Singh, Ranjan Rahul, Yuce Mehmet Rasit
Department of Electrical and Computer Systems, Monash University, Wellington Rd, Clayton, 3800, Melbourne, VIC, Australia.
Faculty of Information Technology, Monash University, Wellington Rd, Clayton, 3800, Melbourne, VIC, Australia.
J Med Syst. 2025 Jul 9;49(1):97. doi: 10.1007/s10916-025-02228-6.
Traditional cuffless blood pressure (BP) estimation methods often require collecting physiological signals, such as electrocardiogram (ECG) and photoplethysmography (PPG), from two distinct body sites to compute metrics like pulse transit time (PTT) or pulse arrival time (PAT). While these metrics strongly correlate with BP, their reliance on multiple signal sources and susceptibility to noise from modern wearable devices present significant challenges. Addressing these limitations, we propose an innovative framework that requires only PPG signals from a single body site, leveraging advancements in artificial intelligence and computer vision. Our approach employs images of PPG signals, along with their first (vPPG) and second (aPPG) derivatives, for enhanced BP estimation. ResNet-50 is utilized to extract features and identify regions within the PPG, vPPG, and aPPG images that correlate strongly with BP. These features are further refined using multi-head cross-attention (MHCA) mechanism, enabling efficient information exchange across the modalities derived from ResNet-50 outputs, thereby improving estimation accuracy. The framework is validated on three distinct datasets, demonstrating superior performance compared to traditional PAT and PTT-based methods. Furthermore, it adheres to stringent medical standards, such as those defined by the Association for the Advancement of Medical Instrumentation (AAMI) and the British Hypertension Society (BHS), ensuring clinical reliability. By reducing the need for multiple signal sources and incorporating cutting-edge AI techniques, this framework represents a significant advancement in non-invasive BP monitoring, offering a more practical and accurate alternative to traditional methodologies.
传统的无袖血压(BP)估计方法通常需要从两个不同的身体部位收集生理信号,如心电图(ECG)和光电容积脉搏波描记法(PPG),以计算诸如脉搏传输时间(PTT)或脉搏到达时间(PAT)等指标。虽然这些指标与血压密切相关,但它们对多个信号源的依赖以及对现代可穿戴设备噪声的敏感性带来了重大挑战。为了解决这些限制,我们提出了一个创新框架,该框架仅需要来自单个身体部位的PPG信号,利用人工智能和计算机视觉的进步。我们的方法使用PPG信号的图像及其一阶(vPPG)和二阶(aPPG)导数来增强血压估计。利用ResNet-50提取特征并识别PPG、vPPG和aPPG图像中与血压密切相关的区域。使用多头交叉注意力(MHCA)机制进一步细化这些特征,实现跨ResNet-50输出派生模态的高效信息交换,从而提高估计精度。该框架在三个不同的数据集上得到验证,与传统的基于PAT和PTT的方法相比表现出卓越性能。此外,它符合严格的医学标准,如由医疗仪器促进协会(AAMI)和英国高血压协会(BHS)定义的标准,确保临床可靠性。通过减少对多个信号源的需求并纳入前沿人工智能技术,该框架代表了无创血压监测的重大进步,为传统方法提供了一种更实用、准确的替代方案。