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CovidExpert: A Triplet Siamese Neural Network framework for the detection of COVID-19
Tareque Rahman Ornob Gourab Roy Enamul Hassan

Abstract
Patients with the COVID-19 infection may have pneumonia-like symptoms as well as respiratory problems which may harm the lungs. From medical images, coronavirus illness may be accurately identified and predicted using a variety of machine learning methods. Most of the published machine learning methods may need extensive hyperparameter adjustment and are unsuitable for small datasets. By leveraging the data in a comparatively small dataset, few-shot learning algorithms aim to reduce the requirement of large datasets. This inspired us to develop a few-shot learning model for early detection of COVID-19 to reduce the post-effect of this dangerous disease. The proposed architecture combines few-shot learning with an ensemble of pre-trained convolutional neural networks to extract feature vectors from CT scan images for similarity learning. The proposed Triplet Siamese Network as the few-shot learning model classified CT scan images into Normal, COVID-19, and Community-Acquired Pneumonia. The suggested model achieved an overall accuracy of 98.719%, a specificity of 99.36%, a sensitivity of 98.72%, and a ROC score of 99.9% with only 200 CT scans per category for training data.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| covid-19-diagnosis-on-large-covid-19-ct-scan | CovidExpert | AUC-ROC: 0.9992 Accuracy: 0.98719 Macro F1: 0.9872 Macro Precision: 0.9873 Macro Recall: 0.9872 Micro Precision: 0.9872 Specificity: 0.9936 |
| few-shot-learning-on-large-covid-19-ct-scan | CovidExpert | AUC-ROC: 0.9992 Accuracy : 0.98719 Macro F1: 0.9872 Macro Precision: 0.9873 Macro Recall: 0.9872 Micro Precision: 0.9872 Specificity: 0.9936 |
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