Swarm Intelligence Approach to QRS Detection

Swarm Intelligence Approach to QRS Detection

Mohamed Belkadi and Abdelhamid Daamouche

Signals and Systems Laboratory, Institute of Electrical and Electronics Engineering, Universite M’Hamed Bougara de Boumerdes, Algeria

Abstract: The QRS detection is a crucial step in ECG signal analysis; it has a great impact on the beats segmentation and in the final classification of the ECG signal. The Pan-Tompkins is one of the first and best-performing algorithms for QRS detection. It performs filtering for noise suppression, differentiation for slope dominance, and thresholding for decision making. All of the parameters of the Pan-Tompkins algorithm are selected empirically. However, we think that the Pan-Tompkins method can achieve better performance if the parameters were optimized. Therefore, we propose an adaptive algorithm that looks for the best set of parameters that improves the Pan-Tompkins algorithm performance. For this purpose, we formulate the parameter design as an optimization problem within a particle swarm optimization framework. Experiments conducted on the 24 hours recording of the MIT/BIH arrhythmia benchmark dataset achieved an overall accuracy of 99.83% which outperforms the state-of-the-art time-domain algorithms.

Keywords: ECG, QRS detection, Pan-Tompkins algorithm, Particle Swarm Optimization.

Received October 9, 2018; accepted November 5, 2019

https://doi.org/10.34028/iajit/17/4/6
 
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