Estimation of f-wave Dominant Frequency Using a Voting Scheme
Shany Biton, Mahmoud Suleiman, Noam Ben Moshe, Leif S\"ornmo, and, Joachim A. Behar

TL;DR
This paper presents a voting scheme to improve the estimation of the dominant atrial frequency from f-waves in ECG signals, enhancing AF detection accuracy by combining multiple extraction methods.
Contribution
It introduces a novel voting scheme for better f-wave dominant frequency estimation and a method to assess extraction algorithm performance.
Findings
Voting scheme improves AF classification performance.
DAF estimates are mostly around 5.66 Hz.
Best extraction methods enhance classification accuracy.
Abstract
Introduction: Atrial fibrillation (AF) is the most common heart arrhythmia, characterized by the presence of fibrillatory waves (f-waves) in the ECG. We introduce a voting scheme to estimate the dominant atrial frequency (DAF) of f-waves. Methods: We analysed a subset of Holter recordings obtained from the University of Virginia AF Database. 100 Holter recordings with manually annotated AF events, resulting in a total 363 AF events lasting more than 1 min. The f-waves were extracted using four different template subtraction (TS) algorithms and the DAF was estimated from the first 1-min window of each AF event. A random forest classifier was used. We hypothesized that better extraction of the f-wave meant better AF/non-AF classification using the DAF as the single input feature of the RF model. Results: Performance on the test set, expressed in terms of AF/non-AF classification, was the…
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Taxonomy
TopicsECG Monitoring and Analysis
MethodsTest
