Abstract

Automated biomedical signal processing becomes an essential process to determine the indicators of diseased states. At the same time, latest developments of artificial intelligence (AI) techniques have the ability to manage and analyzing massive amounts of biomedical datasets results in clinical decisions and real time applications. They can be employed for medical imaging; however, the 1D biomedical signal recognition process is still needing to be improved. Electrocardiogram (ECG) is one of the widely used 1-dimensional biomedical signals, which is used to diagnose cardiovascular diseases. Computer assisted diagnostic models find it difficult to automatically classify the 1D ECG signals owing to time-varying dynamics and diverse profiles of ECG signals. To resolve these issues, this study designs automated deep learning based 1D biomedical ECG signal recognition for cardiovascular disease diagnosis (DLECG-CVD) model. The DLECG-CVD model involves different stages of operations such as pre-processing, feature extraction, hyperparameter tuning, and classification. At the initial stage, data pre-processing takes place to convert the ECG report to valuable data and transform it into a compatible format for further processing. In addition, deep belief network (DBN) model is applied to derive a set of feature vectors. Besides, improved swallow swarm optimization (ISSO) algorithm is used for the hyperparameter tuning of the DBN model. Lastly, extreme gradient boosting (XGBoost) classifier is employed to allocate proper class labels to the test ECG signals. In order to verify the improved diagnostic performance of the DLECG-CVD model, a set of simulations is carried out on the benchmark PTB-XL dataset. A detailed comparative study highlighted the betterment of the DLECG-CVD model interms of accuracy, sensitivity, specificity, kappa, Mathew correlation coefficient, and Hamming loss.

Highlights

  • Cardiovascular Disease (CVD) is the major reason for human mortality, which is accountable for thirtyone percentage of global mortalities in 2016 [1], from which eighty-five percentage occurred because of heart attack

  • Improved swallow swarm optimization (ISSO) algorithm is used for the hyperparameter tuning of the deep belief network (DBN) model

  • At the same time, improved swallow swarm optimization (ISSO) algorithm based deep belief network (DBN) model is applied to derive a set of feature vectors

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Summary

Introduction

Cardiovascular Disease (CVD) is the major reason for human mortality, which is accountable for thirtyone percentage of global mortalities in 2016 [1], from which eighty-five percentage occurred because of heart attack. Each CAD ECG classification method includes 4 major phases, such as FS, pre-processing of ECG signal, feature extraction, classification creation, and heartbeat recognition. They have observed significant developments in automated ECG interpretation methods. This study designs automated deep learning based 1D biomedical ECG signal recognition for cardiovascular disease diagnosis (DLECG-CVD) model. ▪ An efficient 1D biomedical ECG signal recognition model using DLECG-CVD model is presented for cardiovascular diseases. ▪ Besides, the inclusion of ISSO algorithm as a hyperparameter optimizer helps to improve the classification performance of the DLECG-CVD model for unseen data.

Literature Review
Dataset Used
Data Pre-Processing
Structure of DBN Model
XGBoost Based Classification
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Performance Validation
Findings
Conclusion
Full Text
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