Abstract
ECG signal classification is essential for the production of high grade classification results to support diagnostic decisions and develop treatments. Recent methods of feature extraction—for example, autoregressive (AR) modeling; magnitude squared coherence (MSC); wavelet coherence (WTC) using the PhysioNet database—have yielded an extensive set of features. A large number of these features may be inconsequential, as they contain superfluous components that put an excessive burden on computation leading to a loss of performance. For this reason, the hybrid firefly and particle swarm optimization (FFPSO) method is used to optimize the raw ECG signal instead of extracting features using AR, MSC and WTC. This chapter proposes a design for an efficient system for the classification of mocardial infarction (MI) using an artificial neural network (ANN) (Levenberg-Marquardt Neural Network) and two different classifiers. Our experimental results show that an FFPSO algorithm with an ANN give a 99.3% rate of accuracy when combining the MIT-BIH and the NSR databases.
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Kora, P., Annavarapu, A., Borra, S. (2018). ECG Based Myocardial Infarction Detection Using Different Classification Techniques. In: Dey, N., Ashour, A., Borra, S. (eds) Classification in BioApps. Lecture Notes in Computational Vision and Biomechanics, vol 26. Springer, Cham. https://doi.org/10.1007/978-3-319-65981-7_3
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DOI: https://doi.org/10.1007/978-3-319-65981-7_3
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