Hsiao Chin-To, Hong Sungcheol, Branan Kimberly L, McMurray Justin, Coté Gerard L
Department of Biomedical Engineering, Texas A&M University, College Station, 77843, Texas, United States.
Department of Biomedical Engineering, Texas A&M University, College Station, 77843, Texas, United States; Electrical and Electronic Convergence Department, Hongik University, Sejong, Republic of Korea.
Comput Biol Med. 2025 Jun;192(Pt B):110357. doi: 10.1016/j.compbiomed.2025.110357. Epub 2025 May 12.
Blood pressure is a critical risk factor for cardiovascular diseases (CVDs), yet most adults do not monitor it frequently enough to prevent serious complications. This is in part because the traditional cuff-based method is inconvenient, uncomfortable, and does not allow for continuous monitoring. To address these constraints, we developed a unique multi-modal wearable device and used a random forest regression (RFR) algorithm that resulted in a model capable of accurate cuffless blood pressure prediction. This multi-modal device features two photoplethysmography (PPG) sensors and two bioimpedance (BioZ) sensors to measure pulse wave propagation along the radial artery on the wrist. The redundancy in the design enhances prediction accuracy. To validate the device, a novel human subject study protocol was also developed that allows an individual's blood pressure to rise safely and repeatably by more than 40 mmHg (systolic pressure) from baseline measurements. In this study, using multiple pulsatile waveforms from the PPG and BioZ sensors as inputs into the machine learning prediction algorithm, showed that the model had higher accuracy than models using a single sensor. Specifically, the training, validation, and leaving one subject out of data sets all showed mean absolute errors of less than 3.3 mmHg for both systolic and diastolic blood pressures (BPs). While results from this test were promising, a subject-wise evaluation showed variability depending on how well an individual's BP distribution matched the training set. These findings demonstrate the potential for a universal model for cuffless BP estimation, with further validation needed in more diverse populations. Thus, the accompaniment of the RFR model with the multi-modal wearable device offers the potential for robust and continuous blood pressure monitoring, providing a unique and practical solution for long-term cardiovascular health management.
血压是心血管疾病(CVDs)的关键风险因素,但大多数成年人并未对其进行足够频繁的监测以预防严重并发症。部分原因在于传统的基于袖带的方法不方便、不舒适,且无法进行连续监测。为解决这些限制,我们开发了一种独特的多模态可穿戴设备,并使用随机森林回归(RFR)算法,得到了一个能够准确进行无袖带血压预测的模型。这种多模态设备具有两个光电容积脉搏波描记法(PPG)传感器和两个生物阻抗(BioZ)传感器,用于测量沿手腕桡动脉的脉搏波传播。设计中的冗余提高了预测准确性。为验证该设备,还制定了一项新颖的人体受试者研究方案,该方案能使个体的血压从基线测量值安全且可重复地升高超过40 mmHg(收缩压)。在这项研究中,将来自PPG和BioZ传感器的多个搏动波形作为机器学习预测算法的输入,结果表明该模型比使用单个传感器的模型具有更高的准确性。具体而言,训练集、验证集以及留一法数据集的收缩压和舒张压的平均绝对误差均小于3.3 mmHg。虽然该测试结果很有前景,但个体评估显示,其变异性取决于个体血压分布与训练集的匹配程度。这些发现证明了建立无袖带血压估计通用模型的潜力,不过还需要在更多样化的人群中进行进一步验证。因此,RFR模型与多模态可穿戴设备相结合,为进行可靠且连续的血压监测提供了潜力,为长期心血管健康管理提供了独特而实用的解决方案。