Arrhythmia Detection with Custom Designed Wavelet-based Convolutional Autoencoder

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Date

2023

Authors

Oyku Eravci
Nalan Ǒzkurt

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Institute of Electrical and Electronics Engineers Inc.

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Green Open Access

No

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Abstract

In this study we provide a deep learning approach for the classification of arrhythmias that uses a customized wavelet-based autoencoder (AE) model for feature extraction and an MLP model for beat classification. The main objective of this paper is to evaluate the performance of auto-encoder based deep learning algorithms and to automatically classify five types of cardiac arrhythmias such as normal heartbeat (NSR) right bundle branch block (RBBB) left bundle branch block (LBBB) and atrial premature beats (APC) premature ventricular beats (PVC). The proposed approach received average scores of 99.8% 99.8% and 99.7% 99.7% for accuracy precision recall and F1 on publicly available datasets. The outcomes of the experiments demonstrate the significance of using deep learning based models in the diagnosis of cardiac disease. © 2023 Elsevier B.V. All rights reserved.

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Keywords

Arrhythmia Classification, Autoencoder, Deep Learning, Discrete Wavelet Transformation, Deep Learning, Discrete Wavelet Transforms, Diseases, Learning Algorithms, Learning Systems, Arrhythmia Classification, Arrhythmia Detection, Auto Encoders, Beat Classification, Discrete Wavelets Transformations, Features Extraction, Learning Approach, Mlp Model, Performance, Diagnosis, Deep learning, Discrete wavelet transforms, Diseases, Learning algorithms, Learning systems, Arrhythmia classification, Arrhythmia detection, Auto encoders, Beat classification, Discrete wavelets transformations, Features extraction, Learning approach, MLP model, Performance, Diagnosis, Arrhythmia Classification, Deep Learning, Discrete Wavelet Transformation, Autoencoder

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17th International Conference on INnovations in Intelligent SysTems and Applications INISTA 2023

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1

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5
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