Table 1.
Reference | Medical image | Disease detected, n | Accuracy (%) | Methodology | Gaps in classification | |||
|
|
COVID-19 | Normal | Other chest diseases |
|
|
|
|
Apostolopoulos and Mpesiana [14] | X-ray | 224 | 504 | 700 | 93 | Used transfer learning on VGG19. MobileNetV2, Inception, Xception, and InceptionResNetV2 | Used only 3 classes: COVID-19, pneumonia, and other | |
Wang et al [23] | X-ray | 53 | 8066 | 5526 | 92 | Introduced COVID-Net—the first open-source COVID-19 detection system | Used only 3 classes: COVID-19, pneumonia, and normal | |
Narin et al [17] | X-ray | 50 | 50 | N/Aa | 98 | Used 5 pretrained networks and applied 3 binary classifications for 4 classes of chest x-rays | Used only 3 classes: normal, COVID-19, viral and bacterial pneumonia | |
Brunese et al [22] | X-ray | 250 | 3520 | 2753 | 97 | Defined 2 models based on VGG16: one to classify affected x-ray images from healthy ones and the other to classify COVID-19 from affected x-ray images. Then, they localized the affected areas. | Although they used x-ray images of most diseases, they used only 3 classes: COVID-19, healthy, and disease | |
Song et al [24] | CTb | 777 | 708 | N/A | 86 | Proposed DRE-Net and compared its performance with VGG-16, DenseNet, and ResNet | Used only 3 classes: COVID-19, bacterial pneumonia, and healthy | |
Zheng et al [25] | CT | 313 | 229 | N/A | 90 | Proposed DeCoVNet for classification | Used only 2 classes: COVID-19–positive and COVID-19–negative | |
Xu et al [26] | X-ray | 219 | 175 | 224 | 86 | Proposed ResNet-18 based CNNc network | Used only 3 classes: COVID-19, Influenza-A viral pneumonia, and normal | |
Ozturk et al [27] | X-ray | 250 | 1000 | 500 | 92 | Proposed DarkCovidNet | Used only 3 classes: COVID-19, pneumonia, and no findings | |
Ardakani et al [28] | CT | 510 | N/A | 510 | 99 | Used 10 CNN networks (ie, AlexNet and ResNet-101) for classification of 2 classes | Classified COVID-19 class from non–COVID-19 class | |
Li et al [18] | CT | 1296 | 1325 | 1735 | 96 | Proposed COV-Net for classifying 3 classes | Used only 3 classes: COVID-19, community-acquired pneumonia, and non-pneumonia | |
Abbas et al [15] | X-ray | 105 | 80 | 11 | 95.12 | Proposed DeTrac-ResNet18 CNN that uses Decompose, Transfer, and Compose architecture | Used only 3 classes: normal, COVID-19, and SARS | |
Chen et al [16] | CT | 51 | N/A | 55 | 95.24 | Used UNet++ along with Keras for segmentation and COVID-19 detection | Used only binary classification for COVID-19 detection |
aN/A: not applicable.
bCT: computed tomography.
cCNN: convolutional neural network.