Отрывок: In particular, the highest macro-weighted recall of 92.2 % is achieved by the CNN model trained on dataset resampled using SMOTE Tomek-Links. While BLSTM and LSTM have better performance when trained on da- taset resampled using SMOTE ENN, CNN and Random Forest models show better performance after SMOTE Tomek-Links resampling. Tab. 1. Comparison of the testing metrics (accuracy, ROC AUC, macro-averaged f1-score, prec...
Название : Arrhythmia detection using resampling and deep learning methods on unbalanced data
Авторы/Редакторы : Shchetinin, E.Y.
Glushkova, A.G.
Ключевые слова : machine learning
deep learning
ECG
resampling
arrhythmia
Дата публикации : Дек-2022
Издательство : Самарский национальный исследовательский университет
Библиографическое описание : Shchetinin EY, Glushkova AG. Arrhythmia detection using resampling and deep learning methods on unbalanced data. Computer Optics 2022; 46(6): 980-987. DOI: 10.18287/2412-6179-CO-1112.
Серия/номер : 46;6
Аннотация : Due to cardiovascular diseases millions of people die around the world. One way to detect abnormality in the heart condition is with the help of electrocardiogram signal (ECG) analysis. This paper's goal is to use machine learning and deep learning methods such as Support Vector Machines (SVM), Random Forests, Light Gradient Boosting Machine (LightGBM), Convolutional Neural Network (CNN), Long Short-Term Memory (LSTM) and Bidirectional Long Short-Term Memory (BLSTM) to classify arrhythmias, where particular interest represent the rare cases of disease. In order to deal with the problem of imbalance in the dataset we used resampling methods such as SMOTE Tomek-Links and SMOTE ENN to improve the representation ration of the minority classes. Although the machine learning models did not improve a lot when trained on the resampled dataset, the deep learning models showed more impressive results. In particular, LSTM model fitted on dataset resampled using SMOTE ENN method provides the most optimal precision-recall trade-off for the minority classes Supraventricular beat and Fusion of ventricular and normal beat, with recall of 83 % and 88 % and precision of 74 % and 66 % for the two classes re-spectively, whereas the macro-weighted recall is 92 % and precision is 82 % .
URI (Унифицированный идентификатор ресурса) : https://dx.doi.org/ 10.18287/2412-6179-CO-1112
http://repo.ssau.ru/handle/Zhurnal-Komputernaya-optika/Arrhythmia-detection-using-resampling-and-deep-learning-methods-on-unbalanced-data-107755
Другие идентификаторы : Dspace\SGAU\20231227\107755
ГРНТИ: 28.17.37
Располагается в коллекциях: Журнал "Компьютерная оптика"

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