The Rotation Forest ensemble classifier using RQA coefficients achieved an overall accuracy of 98.37% for classifying tachycardia beats, outperforming Random Forest (96.29%) and Decision Tree (94.14%).
Does the Rotation Forest ensemble classifier using RQA features improve the classification accuracy of multiclass tachycardia beats compared to Random Forest and Decision Tree classifiers?
A Rotation Forest ensemble classifier using Recurrence Quantification Analysis features achieved 98.37% accuracy in classifying normal sinus rhythm, atrial fibrillation, atrial flutter, and ventricular fibrillation from ECG signals.
Absolute Event Rate: 98.37% vs 96.29%
Atrial Fibrillation (A-Fib), Atrial Flutter (AFL) and Ventricular Fibrillation (V-Fib) are fatal cardiac abnormalities commonly affecting people in advanced age and have indication of life-threatening condition. To detect these abnormal rhythms, Electrocardiogram (ECG) signal is most commonly visualized as a significant clinical tool. Concealed non-linearities in the ECG signal can be clearly unraveled using Recurrence Quantification Analysis (RQA) technique. In this paper, RQA features are applied for classifying four classes of ECG beats namely Normal Sinus Rhythm (NSR), A-Fib, AFL and V-Fib using ensemble classifiers. The clinically significant (Formula: see text) features are ranked and fed independently to three classifiers viz. Decision Tree (DT), Random Forest (RAF) and Rotation Forest (ROF) ensemble methods to select the best classifier. The training and testing of the feature set is accomplished using 10-fold cross-validation strategy. The RQA coefficients using ROF provided an overall accuracy of 98.37% against 96.29% and 94.14% for the RAF and DT, respectively. The results achieved evidently ratify the superiority of ROF ensemble classifier in the diagnosis of A-Fib, AFL and V-Fib. Precision of four classes is measured using class-specific accuracy (%) and reliability of the performance is assessed using Cohen’s kappa statistic (Formula: see text). The developed approach can be used in therapeutic devices and help the physicians in automatic monitoring of fatal tachycardia rhythms.
Desai et al. (Mon,) conducted a other in Atrial Fibrillation, Atrial Flutter, and Ventricular Fibrillation. Rotation Forest (ROF) ensemble classifier using Recurrence Quantification Analysis (RQA) features vs. Random Forest (RAF) and Decision Tree (DT) classifiers was evaluated on Overall classification accuracy. The Rotation Forest ensemble classifier using RQA coefficients achieved an overall accuracy of 98.37% for classifying tachycardia beats, outperforming Random Forest (96.29%) and Decision Tree (94.14%).
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