| Literature DB >> 35368962 |
Karrar Hameed Abdulkareem1, Salama A Mostafa2, Zainab N Al-Qudsy3, Mazin Abed Mohammed4, Alaa S Al-Waisy5, Seifedine Kadry6, Jinseok Lee7, Yunyoung Nam8.
Abstract
Coronavirus disease 2019 (COVID-19) is a novel disease that affects healthcare on a global scale and cannot be ignored because of its high fatality rate. Computed tomography (CT) images are presently being employed to assist doctors in detecting COVID-19 in its early stages. In several scenarios, a combination of epidemiological criteria (contact during the incubation period), the existence of clinical symptoms, laboratory tests (nucleic acid amplification tests), and clinical imaging-based tests are used to diagnose COVID-19. This method can miss patients and cause more complications. Deep learning is one of the techniques that has been proven to be prominent and reliable in several diagnostic domains involving medical imaging. This study utilizes a convolutional neural network (CNN), stacked autoencoder, and deep neural network to develop a COVID-19 diagnostic system. In this system, classification undergoes some modification before applying the three CT image techniques to determine normal and COVID-19 cases. A large-scale and challenging CT image dataset was used in the training process of the employed deep learning model and reporting their final performance. Experimental outcomes show that the highest accuracy rate was achieved using the CNN model with an accuracy of 88.30%, a sensitivity of 87.65%, and a specificity of 87.97%. Furthermore, the proposed system has outperformed the current existing state-of-the-art models in detecting the COVID-19 virus using CT images.Entities:
Mesh:
Year: 2022 PMID: 35368962 PMCID: PMC8968354 DOI: 10.1155/2022/5329014
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 2.682
Figure 1Positive cases for COVID-19 in CT scan images.
Figure 2Proposed automated detection and classification of COVID-19 cases on CT images using deep learning models.
Figure 3CT lung classification: (a) original CT lung case and (b) segmented CT lung.
Figure 4CNN architecture.
CNN parameters.
| Layer | Type | Input | Kernel | Output |
|---|---|---|---|---|
| 1 | Convolution layer | 32 × 32 × 1 | 6 × 6 | 28 × 28 × 36 |
| 2 | Max pooling | 28 × 28 × 36 | 3 × 3 | 24 × 24 × 64 |
| 3 | Convolution layer | 24 × 24 × 64 | 6 × 6 | 20 × 20 × 64 |
| 4 | Max pooling | 20 × 20 × 64 | 3 × 3 | 12 × 12 × 64 |
| 5 | Fully connected layer | 12 × 12 × 64 | 5 × 5 | 8 × 8 × 64 |
| 6 | Fully connected layer | 8 × 8 × 64 | 2 × 2 | 2 × 1 |
| 7 | Softmax layer | 2 × 1 result | - | Identification output |
Figure 5DNN architecture.
DNN parameters.
| Layer | Type | Input | Output |
|---|---|---|---|
| 1 | Input layer | 24 × 24 × 1 | 576 × 1 |
| 2 | Fully connected layer | 576 × 1 | 304 × 1 |
| 3 | Fully connected layer | 304 × 1 | 256 × 1 |
| 4 | Fully connected layer | 256 × 1 | 128 × 1 |
| 5 | Fully connected layer | 128 × 1 | 64 × 1 |
| 6 | Softmax layer | 2 × 1 | Identification output |
Figure 6Sparse autoencoder.
Figure 7SAE architecture.
SAE parameters.
| Layer | Type | Input | Output |
|---|---|---|---|
| 1 | Input layer | 24 × 24 × 1 | 576 × 1 |
| 2 | Fully connected layer | 576 × 1 | 304 × 1 |
| 3 | Fully connected layer | 304 × 1 | 256 × 1 |
| 4 | Fully connected layer | 256 × 1 | 128 × 1 |
| 5 | Softmax layer | 2 × 1 | Identification output |
Deep learning model results.
| Deep learning models | Accuracy (%) | Sensitivity (%) | Specificity (%) |
|---|---|---|---|
| CNN | 88.30 | 87.65 | 87.97 |
| DNN | 86.23 | 84.41 | 86.77 |
| SAE | 86.75 | 85.62 | 87.84 |
The comparison of the proposed models with the current state-of-the-art works in terms of testing time.
| Approaches | Testing time (s) |
|---|---|
| Wang et al. (2020) [ | 10 |
| Xu et al. (2020) [ | 30 |
| Kassani et al. (2020) [ | 0.03 |
| CNN | 0.002 |
| DNN | 0.04 |
| SAE | 0.02 |
Comparison with benchmarked studies on CT lung COVID-19 images.
| Study/year | Dataset (samples no.) | Accuracy (%) | Sensitivity (%) | Specificity (%) |
|---|---|---|---|---|
| Zhao et al. [ | 275 CT scans | 84.7 | N/A | N/A |
| Amyar et al. [ | 1044 CT collected from 3 datasets | 86 | 94 | 79 |
| He et al. [ | 349 CT scans | 86 | N/A | N/A |
| Our proposed (CNN) | 746 chest CT scans | 88.30 | 87.65 | 87.97 |
| Our proposed (DNN) | 746 chest CT scans | 86.23 | 84.41 | 86.77 |
| Our proposed (SAE) | 746 chest CT scans | 86.75 | 85.62 | 87.84 |
Figure 8CT lung COVID-19 image cases that include normal and COVID-19 samples.