Literature DB >> 10475582

Modelling the relationship between peripheral blood pressure and blood volume pulses using linear and neural network system identification techniques.

J Allen1, A Murray.   

Abstract

The relationships between peripheral blood pressure and blood volume pulse waveforms can provide valuable physiological data about the peripheral vascular system, and are the subject of this study. Blood pressure and volume pulse waveforms were collected from 12 normal male subjects using non-invasive optical techniques, finger arterial blood pressure (BP, Finapres: Datex-Ohmeda) and photoelectric plethysmography (PPG) respectively, and captured to computer for three equal (1 min) measurement phases: baseline, hand raising and hand elevated. This simple physiological challenge was designed to induce a significant drop in peripheral blood pressure. A simple first order lag transfer function was chosen to study the relationship between blood pressure (system input) and blood volume pulse waveforms (system output), with parameters describing the dynamics (time constant, tau) and input-output gain (K). Tau and K were estimated for each subject using two different system identification techniques: a recursive parameter estimation algorithm which calculated tau and K from a linear auto-regressive with exogenous variable (ARX) model, and an artificial neural network which was trained to learn the non-linear process input-output relationships and then derive a linearized ARX model of the system. The identification techniques allowed the relationship between the blood pressure and blood volume pulses to be described simply, with the neural network technique providing a better model fit overall (p < 0.05, Wilcoxon). The median falls in tau following the hand raise challenge were 26% and 31% for the linear and neural network based techniques respectively (both p < 0.05, Wilcoxon). This preliminary study has shown that the time constant and gain parameters obtained using these techniques can provide physiological data for the clinical assessment of the peripheral circulation.

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Mesh:

Year:  1999        PMID: 10475582     DOI: 10.1088/0967-3334/20/3/306

Source DB:  PubMed          Journal:  Physiol Meas        ISSN: 0967-3334            Impact factor:   2.833


  7 in total

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Journal:  Med Biol Eng Comput       Date:  2006-08-03       Impact factor: 2.602

2.  Optical blood pressure estimation with photoplethysmography and FFT-based neural networks.

Authors:  Xiaoman Xing; Mingshan Sun
Journal:  Biomed Opt Express       Date:  2016-07-12       Impact factor: 3.732

3.  Adaptive network-based fuzzy inference system for assessment of lower limb peripheral vascular occlusive disease.

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Journal:  J Med Syst       Date:  2010-04-13       Impact factor: 4.460

4.  Machine learning and blood pressure.

Authors:  Prasanna Santhanam; Rexford S Ahima
Journal:  J Clin Hypertens (Greenwich)       Date:  2019-09-19       Impact factor: 3.738

5.  Optical coherence tomography angiography measures blood pulsatile waveforms at variable tissue depths.

Authors:  Zhiying Xie; Geng Wang; Yuxuan Cheng; Qinqin Zhang; Minh Nhan Le; Ruikang K Wang
Journal:  Quant Imaging Med Surg       Date:  2021-03

6.  Quantification the effect of ageing on characteristics of the photoplethysmogram using an optimized windkessel model.

Authors:  H Doostdar; Ma Khalilzadeh
Journal:  J Biomed Phys Eng       Date:  2014-09-01

7.  Cardiovascular System Modeling Using Windkessel Segmentation Model Based on Photoplethysmography Measurements of Fingers and Toes.

Authors:  Ervin Masita Dewi; Sugondo Hadiyoso; Tati Latifah Erawati Rajab Mengko; Hasballah Zakaria; Kastam Astami
Journal:  J Med Signals Sens       Date:  2022-07-26
  7 in total

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