Abstract
(Aim)COVID-19 is an ongoing infectious disease. It has causedmore than 107.45mconfirmed cases and 2.35m deaths till 11/Feb/2021. Traditional computer vision methods have achieved promising results on the automatic smart diagnosis. (Method) This study aims to propose a novel deep learning method that can obtain better performance. We use the pseudo-Zernike moment (PZM), derived from Zernike moment, as the extracted features. Two settings are introducing: (i) image plane over unit circle; and (ii) image plane inside the unit circle. Afterward, we use a deep-stacked sparse autoencoder (DSSAE) as the classifier. Besides, multiple-way data augmentation is chosen to overcome overfitting. The multiple-way data augmentation is based on Gaussian noise, salt-and-pepper noise, speckle noise, horizontal and vertical shear, rotation, Gamma correction, random translation and scaling. (Results) 10 runs of 10-fold cross validation shows that our PZM-DSSAE method achieves a sensitivity of 92.06% ± 1.54%, a specificity of 92.56% ± 1.06%, a precision of 92.53% ± 1.03%, and an accuracy of 92.31% ± 1.08%. Its F1 score,MCC, and FMI arrive at 92.29%±1.10%, 84.64%±2.15%, and 92.29% ± 1.10%, respectively. The AUC of our model is 0.9576. (Conclusion) We demonstrate "image plane over unit circle" can get better results than "image plane inside a unit circle."Besides, this proposed PZM-DSSAEmodel is better than eight state-of-the-art approaches.
| Original language | English |
|---|---|
| Pages (from-to) | 3146-3162 |
| Number of pages | 17 |
| Journal | Computers, Materials and Continua |
| Volume | 69 |
| Issue number | 3 |
| DOIs | |
| Publication status | Published - 2021 |
| Externally published | Yes |
Keywords
- Covid-19
- Deep learning
- Medical image analysis
- Multiple-way data augmentation
- Pseudo zernike moment
- Stacked sparse autoencoder
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