Author:
Song Weize,Sun Xiaoyan,Hu Chuhan
Abstract
Abstract
Cuffless method for blood pressure measurement is an important methods for continuous health status monitoring. A pulse wave is a periodic time-series signal that reflects a non-linear, non-stationary change in the pulse signal over time. Traditional ways of pulse wave based blood pressure assessment rely on feature extraction from pulse signals, which are usually signal quality dependent and lack of consistence among studies. In this paper, a method of blood pressure measurement of using continuous pulse waveform and long-term and short-term memory network is proposed, which avoids the process of manually extracting waveform features. Experiments were performed with both pulse wave signals and the arterial blood pressure signals form the MIMIC database. Empirical mode decomposition was applied for signal preprocessing, and the time series of the pulse wave was analyzed to establish a Long Short-Term Memory neural network for blood pressure assessment. An average prediction accuracy of 83.2% was achieved.
Subject
General Physics and Astronomy
Reference19 articles.
1. Chinese guidelines for the management of hypertension[J];Chinese Journal of Cardiovascular Medicine,2018
2. Superiority of ambulatory over clinic blood pressure measurement in predicting mortality: the Dublin outcome study[J];Dolan;Hypertension (Dallas, Tex.: 1979),2005
3. Prognostic Value of the Variability in Home-Measured Blood Pressure and Heart Rate The Finn-Home Study[J];Johansson;Hypertension,2012
4. Non-invasive Technique to Measure Blood Pressure[J];Hai-Tao;China Medical Devices Information,2004
5. Cuff challenges in blood pressure measurement[J];Palatini;The Journal of Clinical Hypertension,2018