Webology, Volume 19, Number 1, January, 2022 1151 http://www.webology.org Classification and Detection of ECG Arrhythmia and Myocardial Infarction Using Deep Learning: A Review Atiaf Ayal Rawi Department of Computer Sciences, Faculty of Mathematical & Computer Sciences, Gezira University, Sudan. E-mail: atiaf.ayal88@gmail.com Murtada Kalafalla Albashir Ph.D. Department of Information Systems, College of Computer and Information Sciences, Jouf University, Saudia SA. E-mail: murtadabashir@gmail.com Awadallah Mohammed Ahmed Ph.D. Department of Computer Sciences, Faculty of Mathematical & Computer Sciences, Gezira University, Sudan. E-mail: awadallah@uofg.edu.sd Received August 22, 2021; Accepted December 02, 2021 ISSN: 1735-188X DOI: 10.14704/WEB/V19I1/WEB19078 Abstract Recently, DL (Deep Learning) becomes the focus study for researchers in wide and various applications such as; healthcare, where early detection can play an important and vital role in diagnosing abnormal (pathological) conditions through an electrocardiogram (ECG). In the current study, an extensive presentation was given on the modern techniques that have been applied in the ECG device, which have been introduced to classify heart rhythms and identify disturbances in it precisely in the infraction of the myocardial. To enter the method that defines the biological systems of vision, studies have been studied and reviewed that specifically describe the Convolutional Neural Network (CNN). Also, researches and studies related to the subject have been summarized from several aspects, the most important of which are according to the sequence: collecting data and application areas, in addition to planning the form and content of the model and the type of data that is entered, and then evaluating the performance. Keywords ECG Signal Detection, Myocardial Infarction (MI), Arrhythmia, Deep Learning (DL), Convolutional Neural Network (CNN).