A hybrid approach using local mean decomposition and an ensemble boosted trees classifier achieved up to 92.33% accuracy in classifying atrial fibrillation episodes from ECG data.
Does a hybrid approach using LMD and EBTC improve the classification accuracy of AFib episodes from ECG data compared to existing machine learning approaches?
A novel hybrid machine learning approach using LMD and EBTC achieved high accuracy (>90%) in classifying different types of atrial fibrillation episodes from ECG data.
Atrial fibrillation (AFib) is a type of heart arrhythmia, marked by an erratic and rapid contraction of the atria. Computer-aided diagnosis of AFib using electrocardiogram (ECG) sensor data may become a valuable tool in the detection and management of this common cardiac arrhythmia. In this letter, we present a new hybrid approach for the automatic classification of ECG signals using the local mean decomposition (LMD) and ensemble boosted trees classifier (EBTC). The LMD algorithm is employed to adaptively decompose the recorded ECG data into product functions (PFs). In total, four entropy-based features, namely, log energy, sure, Shannon, and threshold entropy, are computed from each PF. The Kruskal–Wallis algorithm is employed to check the statistical significance of the obtained features and an EBTC is used for the screening of AFib episodes. The proposed technique achieved the highest classification accuracy of 92.33%, 90.33%, and 90.00% by classifying immediate terminating and nonterminating, terminates after one minute and nonterminating, immediate terminating and terminates after one minute AFib episodes, respectively. The presented method outperforms the existing machine learning-based approaches for detecting AFib using ECG data acquired from the publicly accessible AF Termination Challenge Database.
Gupta et al. (Mon,) conducted a other in Atrial fibrillation (AFib). Hybrid approach using local mean decomposition (LMD) and ensemble boosted trees classifier (EBTC) vs. Existing machine learning-based approaches was evaluated on Classification accuracy of AFib episodes (immediate terminating vs nonterminating). A hybrid approach using local mean decomposition and an ensemble boosted trees classifier achieved up to 92.33% accuracy in classifying atrial fibrillation episodes from ECG data.
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