Literature DB >> 33741776

Non-invasive cuff-less blood pressure machine learning algorithm using photoplethysmography and prior physiological data.

Sen Yang1,2, Stephen P Morgan3, Siu-Yeung Cho1, Ricardo Correia3, Long Wen4, Yaping Zhang1.   

Abstract

Conventional blood pressure (BP) measurement methods have a number of drawbacks such as being invasive, cuff-based or requiring manual operation. Many studies are focussed on emerging methods of noninvasive, cuff-less and continuous BP measurement, and using only photoplethysmography to estimate BP has become popular. Although it is well known that physiological characteristics of the subject are important in BP estimation, this has not been widely explored. This article presents a novel method which adopts photoplethysmography and prior knowledge of a subject's physiological features to estimate DBP and SBP. Features extracted from a fingertip photoplethysmography signal and prior knowledge of a subject's physiological characteristics, such as gender, age, height, weight and BMI is used to estimate BP using three different machine learning models: artificial neural networks, support vector machine and least absolute shrinkage and selection operator regression. The accuracy of BP estimation obtained when prior knowledge of the physiological characteristics are incorporated into the model is superior to those which do not take the physiological characteristics into consideration. In this study, the best performing algorithm is an artificial neural network which obtains a mean absolute error and SD of 4.74 ± 5.55 mm Hg for DBP and 9.18 ± 12.57 mm Hg for SBP compared to 6.61 ± 8.04 mm Hg for DBP and 11.12 ± 14.20 mm Hg for SBP without prior knowledge. The inclusion of prior knowledge of the physiological characteristics can improve the accuracy of BP estimation using machine learning methods, and the incorporation of more physiological characteristics enhances the accuracy of the BP estimation.
Copyright © 2021 Wolters Kluwer Health, Inc. All rights reserved.

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Year:  2021        PMID: 33741776     DOI: 10.1097/MBP.0000000000000534

Source DB:  PubMed          Journal:  Blood Press Monit        ISSN: 1359-5237            Impact factor:   1.444


  1 in total

1.  A Data-Driven Model with Feedback Calibration Embedded Blood Pressure Estimator Using Reflective Photoplethysmography.

Authors:  Jia-Wei Chen; Hsin-Kai Huang; Yu-Ting Fang; Yen-Ting Lin; Shih-Zhang Li; Bo-Wei Chen; Yu-Chun Lo; Po-Chuan Chen; Ching-Fu Wang; You-Yin Chen
Journal:  Sensors (Basel)       Date:  2022-02-27       Impact factor: 3.576

  1 in total

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