| Literature DB >> 33643425 |
Prasad Kalane1, Sarika Patil2, B P Patil3, Davinder Pal Sharma4.
Abstract
The severe acute respiratory syndrome coronavirus 2, called a SARS-CoV-2 virus, emerged from China at the end of 2019, has caused a disease named COVID-19, which has now evolved as a pandemic. Amongst the detected Covid-19 cases, several cases are also found asymptomatic. The presently available Reverse Transcription - Polymerase Chain Reaction (RT-PCR) system for detecting COVID-19 lacks due to limited availability of test kits and relatively low positive symptoms in the early stages of the disease, urging the need for alternative solutions. The tool based on Artificial Intelligence might help the world to develop an additional COVID-19 disease mitigation policy. In this paper, an automated Covid-19 detection system has been proposed, which uses indications from Computer Tomography (CT) images to train the new powered deep learning model- U-Net architecture. The performance of the proposed system has been evaluated using 1000 Chest CT images. The images were obtained from three different sources - Two different GitHub repository sources and the Italian Society of Medical and Interventional Radiology's excellent collection. Out of 1000 images, 552 images were of normal persons, and 448 images were obtained from COVID-19 affected people. The proposed algorithm has achieved a sensitivity and specificity of 94.86% and 93.47% respectively, with an overall accuracy of 94.10%. The U-Net architecture used for Chest CT image analysis has been found effective. The proposed method can be used for primary screening of COVID-19 affected persons as an additional tool available to clinicians.Entities:
Keywords: COVID-19; Deep learning; RT-PCR; SARS-CoV-2; U-Net architecture
Year: 2021 PMID: 33643425 PMCID: PMC7896819 DOI: 10.1016/j.bspc.2021.102518
Source DB: PubMed Journal: Biomed Signal Process Control ISSN: 1746-8094 Impact factor: 3.880
Fig. 1Status of the number of confirmed, recovered, and deaths cases of Covid-19 from 22nd January to 20th June 2020 [3].
Fig. 2Lung CT scan images a) CT scan of a healthy Lung b) chest CT scan demonstrating the peripheral right lower lobe ground-glass opacities (arrow). c) Chest CT image progressed with more sub-pleural curvilinear lines, in the extent of Ground-Glass Opacities (GGO), (arrows).
Fig. 3Block Diagram of Proposed Methodology.
Fig. 4Proposed U-Net Architecture for detection of Normal and COVID-19 affected cases. (Every combination of blocks denotes a multi-channel feature map (mentioned at the upper left corner of contraction path and upper right corner of extraction path).
Fig. 5Training accuracy of U-Net found over the first 100 epochs.
Fig. 6Chest CT images a) Input to U-Net architecture b) Infections due to occurrence of COVID-19 disease detected by U-Net.
Evaluation parameters achieved during validation of the U-Net architecture using 10-fold cross validation.
| Sensitivity | Specificity | Precision | Accuracy | |
|---|---|---|---|---|
| Fold-1 | 0.9219 | 0.9347 | 0.9486 | 0.941 |
| Fold-2 | 0.9240 | 0.9365 | 0.9508 | 0.943 |
| Fold-3 | 0.9123 | 0.9257 | 0.9531 | 0.938 |
| Fold-4 | 0.9264 | 0.9384 | 0.9553 | 0.946 |
| Fold-5 | 0.9304 | 0.9420 | 0.9553 | 0.948 |
| Fold-6 | 0.9321 | 0.9438 | 0.9508 | 0.947 |
| Fold-7 | 0.9157 | 0.9293 | 0.9464 | 0.937 |
| Fold-8 | 0.9179 | 0.9311 | 0.9486 | 0.939 |
| Fold-9 | 0.9245 | 0.9365 | 0.9575 | 0.946 |
| Fold-10 | 0.9219 | 0.9347 | 0.9486 | 0.941 |
Fig. 7Comparison of evaluation parameters for Covid-19 disease detection using different CNN's and FCN.
Comparison of Execution time required for five Network architectures.
| Network Architecture | Execution Time |
|---|---|
| U-Net | 1.06 s |
| ResNet50 | 2.34 s |
| DCNN | 2.41 s |
| Inception V3 | 2.11 s |
| ACNN | 1.46 s |
Comparison of the proposed method with State-of-the-Art Methods.
| Author and Year | Deep Learning Module Used | Type of Diseases Involved | Dataset and type of image | Results | |
|---|---|---|---|---|---|
| Metric Name | Metric Value | ||||
| Zheng C et al. (Jan 2020) [ | Deep CNN | COVID-19 | Local Hospitals 630 CT Images | Accuracy | 0.9 |
| Xiaowei Xu et al. (Feb 2020) [ | 3D-CNN | COVID-19 | CT images (Hospitals in China) | Accuracy | 0.87 |
| Influenza-A viral pneumonia | |||||
| Healthy People | |||||
| Ali Naren et al. (March 2020) [ | ResNet50 | COVID-19 | GitHub and Kaggle repository | Accuracy | 0.98 |
| Inception -ResNetV2 | 0.87 | ||||
| InceptionV3 | 0.97 | ||||
| Gozes et al. (March 2020) [ | ResNet-50 based 2-D CNN | Covid-19 | 56 CT Images from Local Hospitals | Sensitivity | 0.98 |
| Specificity | 0.92 | ||||
| AUC | 0.99 | ||||
| Barstuga et al. (March 2020) [ | Feature Extraction –GLCM, LDP, GLRLM, GLSZM, DWT | COVID-19 | Local Hospitals 150 CT abdominal Images | Accuracy | 0.99 |
| Classifier- SVM | |||||