Abstract

Atrial fibrillation disorders are one of the main arrhythmias of the elderly. The atrial and ventricular activities are decoupled during an atrial fibrillation episode, and very rapid and irregular waves replace the usual atrial P-wave in a normal sinus rhythm electrocardiogram (ECG). The estimation of these wavelets is a must for clinical analysis. We propose a new approach to this problem focused on the quasiperiodicity of these wavelets. Atrial activity is characterized by a main atrial rhythm in the interval 3-12 Hz. It enables us to establish the problem as the separation of the original sources from the instantaneous linear combination of them recorded in the ECG or the extraction of only the atrial component exploiting the quasiperiodic feature of the atrial signal. This methodology implies the previous estimation of such main atrial period. We present two algorithms that separate and extract the atrial rhythm starting from a prior estimation of the main atrial frequency. The first one is an algebraic method based on the maximization of a cost function that measures the periodicity. The other one is an adaptive algorithm that exploits the decorrelation of the atrial and other signals diagonalizing the correlation matrices at multiple lags of the period of atrial activity. The algorithms are applied successfully to synthetic and real data. In simulated ECGs, the average correlation index obtained was 0.811 and 0.847, respectively. In real ECGs, the accuracy of the results was validated using spectral and temporal parameters. The average peak frequency and spectral concentration obtained were 5.550 and 5.554 Hz and 56.3 and 54.4%, respectively, and the kurtosis was 0.266 and 0.695. For validation purposes, we compared the proposed algorithms with established methods, obtaining better results for simulated and real registers.

Highlights

  • In biomedical signal processing, data are recorded with the most appropriate technology in order to optimize the study and analysis of a clinically interesting application

  • For comparison purposes, we indicate the results obtained by two established methods in the literature: spatiotemporal QRST cancellation (STC) [9] and spatiotemporal blind source separation (ST-BSS) [11]

  • We found no significant differences between periodic component analysis (piCA) and periodic sequential approximate diagonalization (pSAD) as we expected after seeing Figure 5, since the results are quite similar for many recordings

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Summary

Introduction

Data are recorded with the most appropriate technology in order to optimize the study and analysis of a clinically interesting application. Depending on the different nature of the underlying physics and the corresponding signals, diverse information is obtained such as electrical and magnetic fields, electromagnetic radiation (visible, X-ray), chemical concentrations or acoustic signals just to name some of the most popular. In many of these different applications, for example, the ones based on biopotentials, such as electro- and magnetoencephalogram, electromyogram or electrocardiogram (ECG), it is usual to consider the observations as a linear combination of different kinds. The atrial fibrillatory frequency (or rate) can reliably be assessed from the surface ECG using digital signal processing: firstly, extracting the atrial signal and carrying out a spectral analysis

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