Abstract

Atrial fibrillation (AF) is the most common cardiac arrhythmia in clinical practice. It often starts with asymptomatic and short episodes, which are difficult to detect without the assistance of automatic monitoring tools. The vast majority of methods proposed for this purpose are based on quantifying the irregular ventricular response (i.e., RR series) during the arrhythmia. However, although AF totally alters the atrial activity (AA) reflected on the electrocardiogram (ECG), replacing stable P-waves by chaotic and time-variant fibrillatory waves, this information has still not been explored for automated screening of AF. Hence, a pioneering AF detector based on quantifying the variability over time of the AA morphological pattern is here proposed. Results from two public reference databases have proven that the proposed method outperforms current state-of-the-art algorithms, reporting accuracy higher than 90%. A less false positive rate in the presence of other arrhythmias different from AF was also noticed. Finally, the combination of this algorithm with the classical analysis of RR series variability also yielded a promising trade-off between AF accuracy and detection delay. Indeed, this combination provided similar accuracy than RR-based methods, but with a significantly shorter delay of 10 beats.

Highlights

  • Atrial fibrillation (AF) is nowadays the most common heart rhythm disturbance [1]

  • Results from two public reference databases have proven that the proposed method outperforms current state-of-the-art algorithms, reporting accuracy higher than 90%

  • Only tiny differences were noticed, the best distinction between AF and other rhythms (OR) episodes was reported for m = 1

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Summary

Introduction

Atrial fibrillation (AF) is nowadays the most common heart rhythm disturbance [1]. Its prevalence is closely related to age, rising notably among elderly people [2]. While 0.12–0.16% of population under 49 years suffer from this cardiac arrhythmia, this percentage increases to 10–17% for those aged 80 years or older [3]. Bearing in mind the fast expected growth of the elderly population, from 841 million in 2013 to more than 2000 million by 2050 [4], AF can be considered as an acute and burgeoning public health problem. Whereas this disease currently affects 8.8 million adults (over the age of 55) in the European Union, this population will roughly double by 2060 [5]. 5.2 million Americans presented AF in 2010, but it is expected that the number of cases will exceed 12 million by 2030 [6]

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