A Novel Statistical Model for Arterial Blood Pressure Signals

Alex Holland, Shadnaz Asgari1

  • 1California State University, Long Beach

Details

08:45 - 09:00 | Wed 26 Aug | Amber 1 | WeAT4.2

Session: Biomedical Simulation involving Signal Processing I

Abstract

This paper introduces a novel arterial blood pressure (ABP) signal model that generates statistically accurate synthetic signals with known characteristics. Using parameter identification from real ABP signals to form base parameter templates, our model applies stochastic processes to modulate cardiac cycle period and shape. A real-time control component modulates model parameters between cycle boundaries to emulate properties of real cardiovascular signals, such as arrhythmia, ectopic beats, resonances in the heart-rate variability spectrum, and respiratory cycle modulation of ABP signal amplitude. We present several examples to illustrate the capability of the proposed model.