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Classification of Electrocardiogram (ECG) signals in manual or traditional way is an area which could be improved by having such automated classification system for ECG signals. In this work, enhanced Computer-Aided Diagnosis software system is introduced for automated classification of cardiac ECG signals. Total of 480 ECG signals were taken as dataset for the purpose of this study from MIT-BIH Arrhythmia Database; those dataset signals included 96 Normal ECG signals, as well as 384 Abnormal ECG signals belonging to four types of cardiac abnormalities which are Ventricular Couplet,…mehr

Produktbeschreibung
Classification of Electrocardiogram (ECG) signals in manual or traditional way is an area which could be improved by having such automated classification system for ECG signals. In this work, enhanced Computer-Aided Diagnosis software system is introduced for automated classification of cardiac ECG signals. Total of 480 ECG signals were taken as dataset for the purpose of this study from MIT-BIH Arrhythmia Database; those dataset signals included 96 Normal ECG signals, as well as 384 Abnormal ECG signals belonging to four types of cardiac abnormalities which are Ventricular Couplet, Ventricular Tachycardia, Ventricular Bigeminy, and Ventricular Fibrillation, where each one of those types has 96 ECG signals as well. Then, re-sampling has been done for all given signals at 360 samples per second, except for VF signals, which have been re-sampled at 250 samples per second. After that, iterative feature extraction process has been applied with the help of Classification Learner App existed in MATLAB.
Autorenporträt
Shadi M. Obaid ha conseguito un Master con eccellenza in ingegneria biomedica presso la King Abdulaziz University nel 2023. Inoltre, ha conseguito una laurea in ingegneria biomedica presso la stessa università, nel 2017. L'autore ha 5 anni di esperienza nella manutenzione e vendita di dispositivi relativo ai Laboratori di cateterizzazione. Attualmente lavora come Key Account Manager.