Central Arterial Dynamic Evaluation from Peripheral Blood Pressure Waveforms Using CycleGAN: An In Silico Approach

Sensors (Basel). 2023 Feb 1;23(3):1559. doi: 10.3390/s23031559.

Abstract

Arterial stiffness is a major condition related to many cardiovascular diseases. Traditional approaches in the assessment of arterial stiffness supported by machine learning techniques are limited to the pulse wave velocity (PWV) estimation based on pressure signals from the peripheral arteries. Nevertheless, arterial stiffness can be assessed based on the pressure-strain relationship by analyzing its hysteresis loop. In this work, the capacity of deep learning models based on generative adversarial networks (GANs) to transfer pressure signals from the peripheral arterial region to pressure and area signals located in the central arterial region is explored. The studied signals are from a public and validated virtual database. Compared to other works in which the assessment of arterial stiffness was performed via PWV, in the present work the pressure-strain hysteresis loop is reconstructed and evaluated in terms of classical machine learning metrics and clinical parameters. Least-square GAN (LSGAN) and Wasserstein GAN with gradient penalty (WGAN-GP) adversarial losses are compared, yielding better results with LSGAN. LSGAN mean ± standard deviation of error for pressure and area pulse waveforms are 0.8 ± 0.4 mmHg and 0.1 ± 0.1 cm2, respectively. Regarding the pressure-strain elastic modulus, it is achieved a mean absolute percentage error of 6.5 ± 5.1%. GAN-based deep learning models can recover the pressure-strain loop of central arteries while observing pressure signals from peripheral arteries.

Keywords: arterial pressure waveform; arterial stiffness; deep learning.

MeSH terms

  • Arterial Pressure
  • Arteries
  • Blood Pressure / physiology
  • Blood Pressure Determination / methods
  • Pulse Wave Analysis* / methods
  • Vascular Stiffness* / physiology

Grants and funding

This work was partially funded by the Universidad Tecnológica Nacional (Grant: ICUTIBA7647 and ICTCABA8443 R&D projects) and by the ML-Cardyn project, co-funded by the European Union. The authors would like to thank Europe for its commitment in Champagne-Ardenne with the European Regional Development Fund (FEDER).