Cuffless, calibration-free hemodynamic monitoring with physics-informed machine learning models

AI in healthcare
Published: arXiv: 2601.00081v1
Authors

Henry Crandall Tyler Schuessler Filip Bělík Albert Fabregas Barry M. Stults Alexandra Boyadzhiev Huanan Zhang Jim S. Wu Aylin R. Rodan Stephen P. Juraschek Ramakrishna Mukkamala Alfred K. Cheung Stavros G. Drakos Christel Hohenegger Braxton Osting Benjamin Sanchez

Abstract

Wearable technologies have the potential to transform ambulatory and at-home hemodynamic monitoring by providing continuous assessments of cardiovascular health metrics and guiding clinical management. However, existing cuffless wearable devices for blood pressure (BP) monitoring often rely on methods lacking theoretical foundations, such as pulse wave analysis or pulse arrival time, making them vulnerable to physiological and experimental confounders that undermine their accuracy and clinical utility. Here, we developed a smartwatch device with real-time electrical bioimpedance (BioZ) sensing for cuffless hemodynamic monitoring. We elucidate the biophysical relationship between BioZ and BP via a multiscale analytical and computational modeling framework, and identify physiological, anatomical, and experimental parameters that influence the pulsatile BioZ signal at the wrist. A signal-tagged physics-informed neural network incorporating fluid dynamics principles enables calibration-free estimation of BP and radial and axial blood velocity. We successfully tested our approach with healthy individuals at rest and after physical activity including physical and autonomic challenges, and with patients with hypertension and cardiovascular disease in outpatient and intensive care settings. Our findings demonstrate the feasibility of BioZ technology for cuffless BP and blood velocity monitoring, addressing critical limitations of existing cuffless technologies.

Paper Summary

Problem
Cardiovascular disease (CVD) is the leading cause of mortality worldwide, and current strategies for early detection and management are limited by the constraints of existing hemodynamic monitoring technologies. Wearable devices for blood pressure (BP) monitoring often rely on methods lacking theoretical foundations, making them vulnerable to physiological and experimental confounders that undermine their accuracy and clinical utility.
Key Innovation
This research presents a novel approach to cuffless hemodynamic monitoring using a smartwatch equipped with electrical bioimpedance (BioZ) sensing. The authors develop a multiscale modeling framework that mechanistically links BP to BioZ signals, enabling calibration-free estimation of BP and radial and axial blood velocity. A signal-tagged physics-informed neural network (sPINN) integrates Navier-Stokes equations to model fluid motion in an artery, providing a mechanistic link between fluid dynamics governing arterial BP, blood volume, blood conductivity, and the BioZ signal recorded at the wrist.
Practical Impact
This technology enables advanced hemodynamic monitoring in real-world settings, representing a potential paradigm shift in wearable cardiovascular assessment and personalized hypertension (HTN) and CVD care. The authors successfully tested their approach with healthy individuals, patients with hypertension, and those with CVD, demonstrating its feasibility and accuracy. This innovation has the potential to improve the management of CVD, reduce mortality rates, and enhance the quality of life for individuals with cardiovascular diseases.
Analogy / Intuitive Explanation
Imagine wearing a smartwatch that can monitor your blood pressure and blood flow without the need for a blood pressure cuff. The watch uses electrical bioimpedance sensing to measure changes in your body's electrical properties, which are related to your blood pressure and flow. A complex algorithm, similar to a computer simulation, uses this information to estimate your blood pressure and flow in real-time, providing valuable insights into your cardiovascular health. This technology is like having a personal, portable, and continuous cardiovascular health monitor that can help you stay healthy and prevent cardiovascular diseases.
Paper Information
Categories:
physics.med-ph cs.LG
Published Date:

arXiv ID:

2601.00081v1

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