Abstract

Early detection of atrial fibrillation from electrocardiography (ECG) plays a vital role in the timely prevention and diagnosis of cardiovascular diseases. Various algorithms have been proposed; however, they are lacking in considering varied-length signals, morphological transitions, and abnormalities over long-term recordings. We propose dynamic symbolic assignment (DSA) to differentiate a normal sinus rhythm (SR) from paroxysmal atrial fibrillation (PAF). We use ECG signals and their interbeat (RR) intervals from two public databases namely, AF Prediction Challenge Database (AFPDB) and AF Termination Challenge Database (AFTDB). We transform RR intervals into a symbolic representation and compute co-occurrence matrices. The DSA feature is extracted using varied symbol-length , word-size , and applied to five machine learning algorithms for classification. We test five hypotheses: (i) DSA captures the dynamics of the series, (ii) DSA is a reliable technique for various databases, (iii) optimal parameters improve DSA’s performance, (iv) DSA is consistent for variable signal lengths, and (v) DSA supports cross-data analysis. Our method captures the transition patterns of the RR intervals. The DSA feature exhibit a statistically significant difference in SR and PAF conditions (p < 0.005). The DSA feature with and yield maximum performance. In terms of F-measure (F), rotation forest and ensemble learning classifier are the most accurate for AFPDB (F = 94.6%) and AFTDB (F = 99.8%). Our method is effective for short-length signals and supports cross-data analysis. The DSA is capable of capturing the dynamics of varied-lengths ECG signals. Particularly, the optimal parameters-based DSA feature and ensemble learning could help to detect PAF in long-term ECG signals. Our method maps time series into a symbolic representation and identifies abnormalities in noisy, varied-length, and pathological ECG signals.

Highlights

  • Cardiovascular diseases (CVDs) are the primary cause of death worldwide, with 45% in the European Union [1,2]

  • The differences in the distance between the R-spikes of the signals are visible in sinus rhythm (SR) and paroxysmal atrial fibrillation (PAF) segments

  • The pattern transitions are consistent in SR but rather random in PAF segments

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Summary

Introduction

Cardiovascular diseases (CVDs) are the primary cause of death worldwide, with 45% in the European Union [1,2]. According to the World Health Organization (WHO), the number of deaths from CVDs has increased by 34% since 2000 [2,3]. It is a standard clinical tool to detect and diagnose CVDs [4,5,6]. ECG signals are monitored over a short time, and abnormalities are detected by visual inspection. Most of the existing methods can cope only with relatively noise-free signals and steady features from local waves such as QRS complex, P, T, and U-wave.

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