Literature DB >> 32431951

Classification of atrial fibrillation and normal sinus rhythm based on convolutional neural network.

Mei-Ling Huang1, Yan-Sheng Wu1.   

Abstract

Electrocardiogram (ECG) technology plays a vital role in detecting arrhythmia. Numerous achievements have been marked in ECG-related research. Most methods first pre-process ECG signals, then extract features, and finally classify them. Most of the ECG signals used in the related studies were analyzed in specific time intervals or using a fixed number of samples. However, it is not always possible to see significant changes in a short term, and the symptoms of some patients are relatively short-lived. Misjudgments are possible because the ECG signal was not accurately extracted. This study proposes a computer-aided diagnosis (CAD) system for classification of Atrial Fibrillation and Normal Sinus Rhythm based on ECG signals through convolutional neural network. The proposed system considers a single heartbeat, rather than a specific number of seconds. This study eschews the one-dimensional digital ECG signal used in previous studies and uses convolutional neural networks to analyze two-dimensional ECG image. This study explores whether two-dimensional image ECG requires signal filtering. The final classification results in filtered ECG signals is accuracy of 99.23%, sensitivity of 99.71%, and specificity of 98.66%. The best result in non-filtered ECG signals achieves accuracy of 99.18%, sensitivity of 99.31%, and specificity of 99.03%. With no cumbersome artificial settings, the results of this study are comparable to the related studies. The proposed CAD system has high generalizability; it can help doctors to diagnose diseases effectively and reduce misdiagnosis. © Korean Society of Medical and Biological Engineering 2020.

Entities:  

Keywords:  Atrial fibrillation; Convolutional neural network; Electrocardiogram

Year:  2020        PMID: 32431951      PMCID: PMC7235126          DOI: 10.1007/s13534-020-00146-9

Source DB:  PubMed          Journal:  Biomed Eng Lett        ISSN: 2093-9868


  8 in total

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Authors:  A L Goldberger; L A Amaral; L Glass; J M Hausdorff; P C Ivanov; R G Mark; J E Mietus; G B Moody; C K Peng; H E Stanley
Journal:  Circulation       Date:  2000-06-13       Impact factor: 29.690

2.  ECG-based heartbeat classification for arrhythmia detection: A survey.

Authors:  Eduardo José da S Luz; William Robson Schwartz; Guillermo Cámara-Chávez; David Menotti
Journal:  Comput Methods Programs Biomed       Date:  2015-12-30       Impact factor: 5.428

3.  2016 ESC Guidelines for the management of atrial fibrillation developed in collaboration with EACTS.

Authors:  Paulus Kirchhof; Stefano Benussi; Dipak Kotecha; Anders Ahlsson; Dan Atar; Barbara Casadei; Manuel Castella; Hans-Christoph Diener; Hein Heidbuchel; Jeroen Hendriks; Gerhard Hindricks; Antonis S Manolis; Jonas Oldgren; Bogdan Alexandru Popescu; Ulrich Schotten; Bart Van Putte; Panagiotis Vardas; Stefan Agewall; John Camm; Gonzalo Baron Esquivias; Werner Budts; Scipione Carerj; Filip Casselman; Antonio Coca; Raffaele De Caterina; Spiridon Deftereos; Dobromir Dobrev; José M Ferro; Gerasimos Filippatos; Donna Fitzsimons; Bulent Gorenek; Maxine Guenoun; Stefan H Hohnloser; Philippe Kolh; Gregory Y H Lip; Athanasios Manolis; John McMurray; Piotr Ponikowski; Raphael Rosenhek; Frank Ruschitzka; Irina Savelieva; Sanjay Sharma; Piotr Suwalski; Juan Luis Tamargo; Clare J Taylor; Isabelle C Van Gelder; Adriaan A Voors; Stephan Windecker; Jose Luis Zamorano; Katja Zeppenfeld
Journal:  Eur J Cardiothorac Surg       Date:  2016-09-23       Impact factor: 4.191

4.  Detecting atrial fibrillation by deep convolutional neural networks.

Authors:  Yong Xia; Naren Wulan; Kuanquan Wang; Henggui Zhang
Journal:  Comput Biol Med       Date:  2017-12-15       Impact factor: 4.589

5.  Automated detection of atrial fibrillation using long short-term memory network with RR interval signals.

Authors:  Oliver Faust; Alex Shenfield; Murtadha Kareem; Tan Ru San; Hamido Fujita; U Rajendra Acharya
Journal:  Comput Biol Med       Date:  2018-07-17       Impact factor: 4.589

6.  Automated diagnosis of arrhythmia using combination of CNN and LSTM techniques with variable length heart beats.

Authors:  Shu Lih Oh; Eddie Y K Ng; Ru San Tan; U Rajendra Acharya
Journal:  Comput Biol Med       Date:  2018-06-05       Impact factor: 4.589

7.  Arrhythmia detection using deep convolutional neural network with long duration ECG signals.

Authors:  Özal Yıldırım; Paweł Pławiak; Ru-San Tan; U Rajendra Acharya
Journal:  Comput Biol Med       Date:  2018-09-15       Impact factor: 4.589

8.  Personalized Monitoring and Advance Warning System for Cardiac Arrhythmias.

Authors:  Serkan Kiranyaz; Turker Ince; Moncef Gabbouj
Journal:  Sci Rep       Date:  2017-08-24       Impact factor: 4.379

  8 in total
  3 in total

1.  A systematic review and Meta-data analysis on the applications of Deep Learning in Electrocardiogram.

Authors:  Nehemiah Musa; Abdulsalam Ya'u Gital; Nahla Aljojo; Haruna Chiroma; Kayode S Adewole; Hammed A Mojeed; Nasir Faruk; Abubakar Abdulkarim; Ifada Emmanuel; Yusuf Y Folawiyo; James A Ogunmodede; Abdukareem A Oloyede; Lukman A Olawoyin; Ismaeel A Sikiru; Ibrahim Katb
Journal:  J Ambient Intell Humaniz Comput       Date:  2022-07-07

Review 2.  Photoacoustic imaging aided with deep learning: a review.

Authors:  Praveenbalaji Rajendran; Arunima Sharma; Manojit Pramanik
Journal:  Biomed Eng Lett       Date:  2021-11-23

3.  AFibNet: an implementation of atrial fibrillation detection with convolutional neural network.

Authors:  Bambang Tutuko; Siti Nurmaini; Alexander Edo Tondas; Muhammad Naufal Rachmatullah; Annisa Darmawahyuni; Ria Esafri; Firdaus Firdaus; Ade Iriani Sapitri
Journal:  BMC Med Inform Decis Mak       Date:  2021-07-14       Impact factor: 2.796

  3 in total

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