Department of Biomedical Informatics, Emory University, Atlanta, GA 30322, USA.
Biomedical Engineering Department, Georgia Institute of Technology, Atlanta, GA 30332, USA.
Sensors (Basel). 2024 Mar 7;24(6):1730. doi: 10.3390/s24061730.
Regular blood pressure (BP) monitoring in clinical and ambulatory settings plays a crucial role in the prevention, diagnosis, treatment, and management of cardiovascular diseases. Recently, the widespread adoption of ambulatory BP measurement devices has been predominantly driven by the increased prevalence of hypertension and its associated risks and clinical conditions. Recent guidelines advocate for regular BP monitoring as part of regular clinical visits or even at home. This increased utilization of BP measurement technologies has raised significant concerns regarding the accuracy of reported BP values across settings. In this survey, which focuses mainly on cuff-based BP monitoring technologies, we highlight how BP measurements can demonstrate substantial biases and variances due to factors such as measurement and device errors, demographics, and body habitus. With these inherent biases, the development of a new generation of cuff-based BP devices that use artificial intelligence (AI) has significant potential. We present future avenues where AI-assisted technologies can leverage the extensive clinical literature on BP-related studies together with the large collections of BP records available in electronic health records. These resources can be combined with machine learning approaches, including deep learning and Bayesian inference, to remove BP measurement biases and provide individualized BP-related cardiovascular risk indexes.
在临床和动态环境中定期监测血压(BP)对于预防、诊断、治疗和管理心血管疾病起着至关重要的作用。最近,由于高血压及其相关风险和临床情况的普遍存在,动态血压测量设备的广泛采用得到了推动。最近的指南主张将定期血压监测作为常规临床就诊的一部分,甚至在家中进行。这种对血压测量技术的更多使用引起了人们对不同环境中报告的血压值准确性的极大关注。在本次主要关注袖带式血压监测技术的调查中,我们强调了由于测量和设备误差、人口统计学和身体形态等因素,血压测量可能会表现出显著的偏差和差异。由于这些固有偏差,使用人工智能(AI)的新一代袖带式血压设备的开发具有很大的潜力。我们提出了未来的途径,人工智能辅助技术可以利用与血压相关研究的大量临床文献以及电子健康记录中可用的大量血压记录。这些资源可以与机器学习方法(包括深度学习和贝叶斯推理)相结合,以消除血压测量偏差并提供个性化的血压相关心血管风险指数。