Abstract

This paper proposes a framework combining the complementary ensemble empirical mode decomposition with both the independent component analysis and the non-negative matrix factorization for estimating both the heart rate and the respiratory rate from the photoplethysmography (PPG) signal. After performing the complementary ensemble empirical mode decomposition on the PPG signal, a finite number of intrinsic mode functions are obtained. Then, these intrinsic mode functions are divided into two groups to perform the further analysis via both the independent component analysis and the non-negative matrix factorization. The surrogate cardiac signal related to the heart activity and another surrogate respiratory signal related to the respiratory activity are reconstructed to estimate the heart rate and the respiratory rate, respectively. Finally, different records of signals acquired from the Medical Information Mart for Intensive Care database downloaded from the Physionet Automated Teller Machine (ATM) data bank are employed for demonstrating the outperformance of our proposed method. The results show that our proposed method outperforms both the digital filtering approach and the conventional empirical mode decomposition based methods in terms of reconstructing both the surrogate cardiac signal and the respiratory signal from the PPG signal as well as both achieving the higher accuracy and the higher reliability for estimating both the heart rate and the respiratory rate.

Highlights

  • With increasing the life pressure, the cardiorespiratory diseases [1] became the major death reasons of the humans. It is necessary for the general public to monitor the cardiorespiratory activities [2] so that any abnormal heart situation and any abnormal respiration situation such as the acute physiologic deterioration [3], the cardiovascular diseases [4] and the long term cardiovascular related illnesses [5] can be detected earlier

  • It is worth noting that both the heart rate and the respiratory rate are the important parameters for representing the health conditions

  • The computer numerical simulation results show that our proposed method could achieve the better results in terms of achieving the higher accuracies of both the estimated heart rate and the estimated respiratory rate as well as the more reliable results in terms of achieving the lower variances of the accuracies of both the estimated heart rate and the estimated respiratory rate

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Summary

Introduction

With increasing the life pressure, the cardiorespiratory diseases [1] became the major death reasons of the humans. The joint ensemble empirical mode decomposition and the principal component analysis based method was proposed [28] to improve the robustness for estimating both the heart rate and the respiratory rate from the PPG signal by reducing the mode mixing effect. It may still yield an inaccurate result if the intrinsic mode functions unrelated to both the heart activity and the respiratory activity are taken into an account.

Complementary Ensemble Empirical Mode Decomposition
Independent Component Analysis
Non-Negative Matrix Factorization
Decomposition
Filtering on the Intrinsic Mode Functions
Database
Performances
Methods
Conclusions
Full Text
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