Abstract

Background and objective: Arrhythmia is a widely seen cardiologic ailment worldwide, and is diagnosed using electrocardiogram (ECG) signals. The ECG signals can be translated manually by human experts, but can also be scheduled to be carried out automatically by some agents. To easily diagnose arrhythmia, an intelligent assistant can be used. Machine learning-based automatic arrhythmia detection models have been proposed to create an intelligent assistant. Materials and Methods: In this work, we have used an ECG dataset. This dataset contains 1000 ECG signals with 17 categories. A new hand-modeled learning network is developed on this dataset, and this model uses a 3D shape (prismatoid) to create textural features. Moreover, a tunable Q wavelet transform with low oscillatory parameters and a statistical feature extractor has been applied to extract features at both low and high levels. The suggested prismatoid pattern and statistical feature extractor create features from 53 sub-bands. A neighborhood component analysis has been used to choose the most discriminative features. Two classifiers, k nearest neighbor (kNN) and support vector machine (SVM), were used to classify the selected top features with 10-fold cross-validation. Results: The calculated best accuracy rate of the proposed model is equal to 97.30% using the SVM classifier. Conclusion: The computed results clearly indicate the success of the proposed prismatoid pattern-based model.

Highlights

  • We suggested a comprehensive machine learning feature creation model, which uses neighborhood component analysis (NCA) selector [40] and support vector machine (SVM) to calculate misclassification rates of each generated feature vector [41,42]

  • There is no need to use specific hardware to implement this model on an ECG signal dataset

  • The feature extraction ability of the prismatoid is investigated using a graph-based model and it is named as a prismatoid pattern; An accurate and effective hand-modeled network is proposed (PrismatoidPatNet54); The implementation of PrismatoidPatNet54 is very easy; PrismatoidPatNet54 reached over 97% using two shallow classifiers; A simple configured computer can be used to implement the proposed PrismatoidPatNet54

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Summary

Introduction

The ECG signals can be translated manually by human experts, but can be scheduled to be carried out automatically by some agents. Machine learning-based automatic arrhythmia detection models have been proposed to create an intelligent assistant.

Methods
Discussion
Conclusion
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