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272246

A review on Machine, Transfer and Deep learning approaches for ECG classification

Article

Last updated: 24 Dec 2024

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Tags

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Abstract

Cardiovascular Diseases (CVDs) diagnosis requires an expert interpretation of ECG (Electrocardiogram). The ECG is an essential tool that is used to diagnose CVDs for medical treatment to take place. The ECG represents the electrical events of the cardiac cycle which coordinates the contraction and relaxation of the heart chambers to circulate oxygenated and deoxygenated blood. Automation of ECG classification is considered recently to accelerate the diagnoses process and enable continuous monitoring to detect abnormalities in heart functions. ECG classification problem comes with some challenges that need to be considered such as noise, feature extraction, segmentation, and classification. This review article discusses various techniques of classification in a machine, deep, and transfer learning context as well as it considers various denoising methods to enhance the performance of different classifiers. These different classifiers are trained and tested by various and different data sets which may affect their performance as well as the number of classification classes.

DOI

10.21608/fsrt.2022.175348.1075

Keywords

Electrocardiogram Classification, Support Vector Machines, Convolutional neural network, Recurrent Neural Network

Authors

First Name

Mohammed

Last Name

Atiea

MiddleName

Ali

Affiliation

Computer Science Department, Faculty of Computers and Information, Suez University, Suez, Egypt

Email

mohammed.a.atiea@fci.suezuni.edu.eg

City

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Orcid

-

First Name

Hosam

Last Name

E. Refaat

MiddleName

-

Affiliation

Dept. of Information System, Faculty of Computers and Informatics, Suez Canal University, Ismailia, Egypt

Email

hosam.refaat@ci.suez.edu.eg

City

Ismailia

Orcid

-

Volume

5

Article Issue

1

Related Issue

37995

Issue Date

2023-03-01

Receive Date

2022-11-17

Publish Date

2023-03-01

Print ISSN

2682-2962

Online ISSN

2682-2970

Link

https://fsrt.journals.ekb.eg/article_272246.html

Detail API

https://fsrt.journals.ekb.eg/service?article_code=272246

Order

272,246

Type

Review Article

Type Code

1,032

Publication Type

Journal

Publication Title

Frontiers in Scientific Research and Technology

Publication Link

https://fsrt.journals.ekb.eg/

MainTitle

A review on Machine, Transfer and Deep learning approaches for ECG classification

Details

Type

Article

Created At

22 Jan 2023