Department of Biomedical Engineering, Texas A&M University, College Station, TX 77843, USA.
Department of Electrical Engineering, Texas A&M University, College Station, TX 77843, USA.
Biosensors (Basel). 2024 Feb 8;14(2):92. doi: 10.3390/bios14020092.
Pulse Wave Velocity (PWV) analysis is valuable for assessing arterial stiffness and cardiovascular health and potentially for estimating blood pressure cufflessly. However, conventional PWV analysis from two transducers spaced closely poses challenges in data management, battery life, and developing the device for continuous real-time applications together along an artery, which typically need data to be recorded at high sampling rates. Specifically, although a pulse signal consists of low-frequency components when used for applications such as determining heart rate, the pulse transit time for transducers near each other along an artery takes place in the millisecond range, typically needing a high sampling rate. To overcome this issue, in this study, we present a novel approach that leverages the Nyquist-Shannon sampling theorem and reconstruction techniques for signals produced by bioimpedance transducers closely spaced along a radial artery. Specifically, we recorded bioimpedance artery pulse signals at a low sampling rate, reducing the data size and subsequently algorithmically reconstructing these signals at a higher sampling rate. We were able to retain vital transit time information and achieved enhanced precision that is comparable to the traditional high-rate sampling method. Our research demonstrates the viability of the algorithmic method for enabling PWV analysis from low-sampling-rate data, overcoming the constraints of conventional approaches. This technique has the potential to contribute to the development of cardiovascular health monitoring and diagnosis using closely spaced wearable devices for real-time and low-resource PWV assessment, enhancing patient care and cardiovascular disease management.
脉搏波速度(PWV)分析对于评估动脉僵硬度和心血管健康非常有价值,并且有可能实现无袖带血压估计。然而,从两个紧密间隔的传感器进行传统的 PWV 分析在数据管理、电池寿命以及为连续实时应用开发沿着动脉的设备方面带来了挑战,这些应用通常需要以高采样率记录数据。具体来说,尽管在用于确定心率等应用中,脉搏信号包含低频成分,但沿动脉彼此靠近的传感器的脉搏传输时间发生在毫秒范围内,通常需要高采样率。为了解决这个问题,在本研究中,我们提出了一种新的方法,该方法利用奈奎斯特-香农采样定理和重建技术,对沿桡动脉紧密间隔的生物阻抗传感器产生的信号进行处理。具体来说,我们以低采样率记录生物阻抗动脉脉搏信号,减小数据量,然后以更高的采样率对这些信号进行算法重建。我们能够保留重要的传输时间信息,并实现了与传统高采样率方法相当的增强精度。我们的研究证明了该算法方法从低采样率数据中进行 PWV 分析的可行性,克服了传统方法的限制。该技术有可能通过使用紧密间隔的可穿戴设备进行实时和低资源 PWV 评估,为心血管健康监测和诊断做出贡献,从而改善患者护理和心血管疾病管理。