| Literature DB >> 33643612 |
Wenjun Tan1, Pan Liu1, Xiaoshuo Li1, Yao Liu1, Qinghua Zhou1, Chao Chen2, Zhaoxuan Gong3, Xiaoxia Yin4, Yanchun Zhang5.
Abstract
The COVID-19 coronavirus has spread rapidly around the world and has caused global panic. Chest CT images play a major role in confirming positive COVID-19 patients. The computer aided diagnosis of COVID-19 from CT images based on artificial intelligence have been developed and deployed in some hospitals. But environmental influences and the movement of lung will affect the image quality, causing the lung parenchyma and pneumonia area unclear in CT images. Therefore, the performance of COVID-19's artificial intelligence diagnostic algorithm is reduced. If chest CT images are reconstructed, the accuracy and performance of the aided diagnostic algorithm may be improved. In this paper, a new aided diagnostic algorithm for COVID-19 based on super-resolution reconstructed images and convolutional neural network is presented. Firstly, the SRGAN neural network is used to reconstruct super-resolution images from original chest CT images. Then COVID-19 images and Non-COVID-19 images are classified from super-resolution chest CT images by VGG16 neural network. Finally, the performance of this method is verified by the pubic COVID-CT dataset and compared with other aided diagnosis methods of COVID-19. The experimental results show that improving the data quality through SRGAN neural network can greatly improve the final classification accuracy when the data quality is low. This proves that this method can obtain high accuracy, sensitivity and specificity in the examined test image datasets and has similar performance to other state-of-the-art deep learning aided algorithms.Entities:
Keywords: COVID-19; Chest CT images; Computer aided diagnosis; Convolutional neural network; Super-resolution images
Year: 2021 PMID: 33643612 PMCID: PMC7896179 DOI: 10.1007/s13755-021-00140-0
Source DB: PubMed Journal: Health Inf Sci Syst ISSN: 2047-2501
Fig. 1Workflow of proposed method for classifying the COVID-19 status in CT images
Fig. 2The basic structure of GAN
Fig. 3The architecture of SRGAN model
Fig. 4The basic structure of the residual block
Fig. 5Comparison of original images and Super-Resolution images
Fig. 6Comparative results of different resolution images
The classification results of different resolutions of images
| Results | 224 × 224 (%) | 400 × 400(%) | 512 × 512(%) | 600 × 600(%) |
|---|---|---|---|---|
| Precision | 86.0 | 96.0 | 100.0 | 96.0 |
| Recall | 100.0 | 100.0 | 98.0 | 96.0 |
| Accuracy | 90.4 | 97.9 | 99.0 | 96.0 |
| Specificity | 76.9 | 94.8 | 100.0 | 95.0 |
| F1 | 92.0 | 98.0 | 99.0 | 96.0 |
The comparison of experimental results with the same dataset
| Results | Zhao [ | This method |
|---|---|---|
| Accuracy | 84.7% | 97.9% |
| Sensitivity | 76.2% | 99.0% |
| F1 | 85.3% | 98.0% |
| Method | CNN | SRGAN+VGG |
Fig. 7The comparative results of our method and Zhao [46]
The comparative experimental results of different methods
| Results | Chen [ | Zheng [ | Jin [ | Jin [ | Wang [ | Ying [ | Xu [ | Li [ | Shi [ | Tang [ | This Method |
|---|---|---|---|---|---|---|---|---|---|---|---|
| Accuracy | 95.2% | NA | 95.0% | NA | 82.9% | 86.0% | 86.7% | NA | 87.9% | 87.5% | 98.0% |
| Sensitivity | 100.0% | 90.7% | 94.1% | 94.7% | 84.0% | 93.0% | NA | 90.0% | 90.7% | 93.3% | 99.0% |
| Specificity | 93.6% | 91.1% | 95.5% | 92.2% | 80.5% | NA | NA | 96.0% | 83.3% | 74.5% | 94.9% |
| Method | Unet++ | U-Net +CNN | CNN | Unet++ +CNN | CNN | ResNet-50 | CNN | ResNet-50 | RF | RF | SRGAN +VGG16 |
Fig. 8Comparative accuracy, sensitivity and specificity results of different methods
Fig. 9Radar chart of comparative experimental results of different methods