无创无袖血压监测。机制驱动和数据驱动模型如何帮助临床实践

Zaid Mohamed, Popescu Mihail, Despins Laurel, Keller James, Skubic Marjorie, Guidoboni Giovanna
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引用次数: 0

摘要

持续的无创无袖血压监测对于早期发现和治疗高血压至关重要。在本文中,我们概述了无套管BP传感器的最新进展。这些传感器包括接触式可穿戴传感器,如心电图(ECG)、光电体积脉搏图(PPG)、接触式非穿戴传感器,如ballistocardiography (BCG)和非接触式传感器,如视频体积脉搏图(VPG)。这些传感器采用不同的测量机制,如脉冲到达时间(PAT)、脉冲传递时间(PTT)和脉冲波分析(PWA)来估计BP。然而,在有效利用和解释信号特征以获得临床可靠的血压测量值方面存在挑战。机制驱动模型利用生理原理识别数学相关性,数据驱动模型利用机器学习算法分析观测数据识别多维相关性,从而获得信号特征与BP之间的相关性。一方面,将机制驱动模型应用于非线性场景和不完整或有噪声的数据是具有挑战性的,另一方面,数据驱动模型需要大量的数据,以防止物理上不一致的预测,导致泛化效果差。从这个角度来看,本文提出将机制驱动和数据驱动方法的优势结合起来,获得一种更全面的方法,即基于生理的机器学习方法,以提高连续无套管BP监测的准确性、可解释性和可扩展性。这为个性化临床应用和高血压管理的进步带来了希望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noninvasive Cuffless Blood Pressure Monitoring. How Mechanism-Driven and Data-Driven Models Can Help in Clinical Practice
Continuous noninvasive cuffless blood pressure (BP) monitoring is essential for early detection and treatment of hypertension. In this paper, we provide an overview of the recent advancements in cuffless BP sensors. These include contact wearable sensors such as electrocardiography (ECG), photoplethysmography (PPG), contact non-wearable sensors such as ballistocardiography (BCG), and contactless sensors such as video plethysmography (VPG). These sensors employ different measuring mechanisms such as pulse arrival time (PAT), pulse transit time (PTT), and pulse wave analysis (PWA) to estimate BP. However, challenges exist in the effective use and interpretation of signal features to obtain clinically reliable BP measurements. The correlations between signal features and BP are obtained by mechanism-driven models which use physiological principles to identify mathematical correlations, and data-driven models which use machine learning algorithms to analyze observational data to identify multidimensional correlations. On the one hand, applying mechanism-driven models to non-linear scenarios and incomplete or noisy data is challenging On the other hand, data-driven models require a large amount of data in order to prevent physically inconsistent predictions, resulting in poor generalization. From this perspective, this paper proposes to combine the strengths of mechanism-driven and data-driven approaches to obtain a more comprehensive approach, the physiology-informed machine-learning approach, with the goal of enhancing the accuracy, interpretability, and scalability of continuous cuffless BP monitoring. This holds promise for personalized clinical applications and the advancement of hypertension management.
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