Classification of electrocardiogram signal using an ensemble of deep learning models
Purpose According to the World Health Organization, arrhythmia is one of the primary causes of deaths across the globe. In order to reduce mortality rate, cardiovascular disease should be properly identified and the proper treatment for the same should be immediately provided to the patients. The objective of this paper was to implement a better heartbeat classification model which will work better than the other implemented heartbeat classification methods. Design/methodology/approach In this paper, the ensemble of two deep learning models is proposed to classify the MIT-BIH arrhythmia database into four different classes according to ANSI-AAMI standards. First, a convolutional neural network (CNN) model is used to classify heartbeats on a raw data set. Secondly, four features (wavelets, R-R intervals, morphological and higher-order statistics) are extracted from the data set and then applied to a long short-term memory (LSTM) model to classify the heartbeats. Finally, the ensemble of CNN and LSTM model with sum rule, product rule and majority voting has been used to identify the heartbeat classes. Findings Among these, the highest accuracy obtained is 98.58% using ensemble method with product rule. The results show that the ensemble of CNN and BLSTM has offered satisfactory performance compared to other techniques discussed in this study. Originality/value In this study, we have developed a new combination of two deep learning models to enhance the performance of arrhythmia classification using segmentation of input ECG signals. The contributions of this study are as follows: First, a deep CNN model is built to classify ECG heartbeat using a raw data set. Second, four types of features (R-R interval, HOS, morphological and wavelet) were extracted from the raw data set and then applied to the bidirectional LSTM model to classify the ECG heartbeat. Third, combination rules (sum rules, product rules and majority voting rules) were tested to ensure the accumulated probabilities of the CNN and LSTM models.
Year of publication: |
2021
|
---|---|
Authors: | Pandey, Saroj Kumar ; Janghel, Rekh Ram |
Published in: |
Data Technologies and Applications. - Emerald Publishing Limited, ISSN 2514-9318, ZDB-ID 2935212-5. - Vol. 55.2021, 3, p. 446-460
|
Publisher: |
Emerald Publishing Limited |
Subject: | CNN | LSTM | Classification | Electrocardiogram | Arrhythmia |
Saved in:
Online Resource
Saved in favorites
Similar items by subject
-
A new stock price forecasting method using active deep learning approach
AlKhatib, Khalid, (2022)
-
A comparative review of sentimental analysis using machine learning and deep learning approaches
Nagelli, Archana, (2023)
-
Blind quantitative steganalysis using CNN-long short-term memory architecture
Singhal, Anuradha, (2020)
- More ...
Similar items by person