Programs
- M. Tech. in Automotive Engineering -
- Clinical Fellowship in Laboratory Genetics & Genomics - Fellowship
Publication Type : Conference Paper
Publisher : 2019 9th International Symposium on Embedded Computing and System Design
Source : 2019 9th International Symposium on Embedded Computing and System Design (ISED) (2019)
Url : https://ieeexplore.ieee.org/abstract/document/9096244
Keywords : Cardiac arrhythmia, ECG, imbalanced data, SVM
Campus : Amritapuri
School : School of Arts and Sciences
Department : Mathematics
Year : 2019
Abstract : Cardiac Arrhythmia is one of those common diseases leading to severe health problems for patients and even sudden death in some cases. Early detection of arrhythmias has a great role in saving lives which can be achieved by analyzing and classifying ECG signal into one of the cardiac arrhythmia. This study gives a method to classify the arrhythmia patients have into one of ten classes, where one class represents the normal condition and the other classes represent various types of arrhythmia conditions. This dataset has been preprocessed. The dataset being highly unbalanced, a combination of oversampling and under sampling using SMOTEENN is applied and feature reduction is carried out using XGboost. The feature reduced dataset is then classified using different supervised learning algorithms of machine learning and an accuracy of 97.48% has occurred which is better than state of art method. This study can be further elaborated using real time data for classification.
Cite this Research Publication : Manju B. R. and Nair, A. R., “Classification of Cardiac Arrhythmia of 12 Lead ECG Using Combination of SMOTEENN, XGBoost and Mach