| Literature DB >> 33842563 |
Hossein Mohammad-Rahimi1, Mohadeseh Nadimi2,3, Azadeh Ghalyanchi-Langeroudi2,3, Mohammad Taheri4, Soudeh Ghafouri-Fard5.
Abstract
Coronavirus disease, first detected in late 2019 (COVID-19), has spread fast throughout the world, leading to high mortality. This condition can be diagnosed using RT-PCR technique on nasopharyngeal and throat swabs with sensitivity values ranging from 30 to 70%. However, chest CT scans and X-ray images have been reported to have sensitivity values of 98 and 69%, respectively. The application of machine learning methods on CT and X-ray images has facilitated the accurate diagnosis of COVID-19. In this study, we reviewed studies which used machine and deep learning methods on chest X-ray images and CT scans for COVID-19 diagnosis and compared their performance. The accuracy of these methods ranged from 76% to more than 99%, indicating the applicability of machine and deep learning methods in the clinical diagnosis of COVID-19.Entities:
Keywords: COVID-19; X-ray image; biomarker; detection; machine learning
Year: 2021 PMID: 33842563 PMCID: PMC8027078 DOI: 10.3389/fcvm.2021.638011
Source DB: PubMed Journal: Front Cardiovasc Med ISSN: 2297-055X
Figure 1PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) chart showing the process of systematic identification, screening, and selection of articles.
Characteristics of papers that used CT images or a combination of X-ray and CT images.
| Abbasian et al. (2020) | Iran University of Medical Sciences (IUMS) | 306 COVID-19 patients; | Extracting 20 features of CT images | Ensemble | 91.94% | 0.965 | 93.54% | 90.32% | ( |
| Alsharman et al. (2020) | “COVID-CT-dataset” | CT images | Binarization (the separation of the object and background is known as Binarization); | GoogleNet CNN | 82.14% | ( | |||
| Ardakani et al. (2020) | Private dataset | 108 COVID-19 patients; | Converted to the gray-scale Cropped and resized to 60 * 60 pixels | ResNet-101 | Resnet: 99.51% | Resnet: 0.994 | Resnet: 100% | Resnet: 99.02% | ( |
| Aswathy et al. (2020) | “National Cancer Institute and the Cancer Image Archive” | 1,763 normal patients; | Thresholding; | CNN | 99% | – | – | – | ( |
| Bai et al. (2020) | Private dataset | Lung segmentation; | EfficientNet B4 | 96% (compared to 85% in human) | 0.95 | 95% (compared to 79% in human) | 96% (compared to 88% in human) | ( | |
| Bridge et al. (2020) | 129 COVID-19 patients; | Using the GEV activation function for unbalanced data | Inception V3 | 100% | – | 100% | 100% | ( | |
| Butt et al. (2020) | Not mentioned | Image processing method base on HU values | 3D CNN | – | 0.996 | 98.2% | 92.2% | ( | |
| Dey et al. (2020) | “COVID-19 CT segmentation dataset;” | 200 COVID-19 patients; | Segmenting lung area related to pneumonia infection; | KNN | 87.75% | – | 89.00% | 86.50% | ( |
| El Asnaoui et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | 2,780 Bacterial pneumonia patients; | Intensity Normalization; | Inception ResNetV2; Densnet201 | Inception-ResNetV2: 92.18% | Inception-ResNetV2: 0.920 | Inception-ResNetV2: 92.11% | Inception-ResNetV2: 96.6% | ( |
| Han et al. (2020) | “COVID-19 hospitals in Shandong Province” | 79 COVID-19 patients; | Data augmentation | AD3D-MIL | 97.9% | 0.99 | 97.9% | 97.9% | ( |
| Harmon et al. (2020) | Private dataset | Hybrid 3D based on Densnet-121 | 90.8% | – | 84% | 93% | ( | ||
| Hasan et al. (2020) | “Radiopaedia and the cancer imaging archive websites” | 118 COVID-19 patients; 96 pneumonia patients; | Histogram | LSTM | 99.68% | – | 100% | – | ( |
| Hu et al. (2020) | “Hospital of Wuhan Red Cross Society;” | 150 COVID-19 patients; | Data augmentation | CNN | 96.2% | 0.970 | 94.5% | 95.3% | ( |
| Jaiswal et al. (2020) | “The SARS-CoV-2 CT scan dataset” | 1,262 COVID-19 patients; 1,230 non-COVID-19 patients (CT images) | Data augmentation (rotation up to 15, slant-angle of 0.2, horizontal flipping, filling new pixels as “nearest” for better robustness) | DenseNet201 | 96.25% | 0.97 | 96.29% | 96.21% | ( |
| Kang et al. (2020) | “Tongji Hospital of Huazhong University of Science and Technology;” | 1,495 COVID-19 patients; | Normalization; | NN | 93.90% | – | 94.60% | 91.70% | ( |
| Lessmann et al. (2020) | “Emergency wards of an Academic center and teaching hospital in the Netherlands in March and April 2020” | 237 COVID-19 patients; | Resampling; | CORADS-AI | – | 0.95 | 85.7% | 89.8% | ( |
| Li et al. (2020) | Private | 1,296 COVID-19 patients; | Segmenting lung area with U-net | COVNet (ResNet-50) | – | 0.96 | 90% | 96% | ( |
| Li et al. (2020) | More than 10 medical centers between Nov. 11th, 2010 and Feb. 9th, 2020 | 305 images from 251 COVID-19 patients; | DL-based algorithm | 3D ResNet-18 | Recall = 88% | ( | |||
| Liu et al. (2020) | Private | 73 COVID-19 patients; | ROI delineation based on ground-glass opacities (GGOs); | An ensemble of bagged tree (EBT) | 94.16% | 0.99 | 88.62% | 100% | ( |
| Mei et al. (2020) | Private | 419 COVID-19 patients | Selecting pertinent slices by image segmentation to detect parenchymal tissue; | ResNet-18 | 79.6% | 0.86 | 83.6% | 75.9% | ( |
| Panwar et al. (2020) | “COVID-chest X-ray;” | 206 COVID-19 patients; | – | VGG-19 | 95.61% (COVID-19 vs. Pneumonia) | – | 96.55% (COVID-19 vs. Pneumonia) | 95.29% (COVID-19 vs. Pneumonia) | ( |
| Pathak et al. (2020) | 2 different COVID-19 datasets of chest-CT images | CT images | – | Deep bidirectional long short-term memory network with mixture density network (DBM) | 96.19% (multi-class) | 0.96 (multi-class) | 96.22% (multi-class) | 96.16% (multi-class) | ( |
| Pathak et al. (2020) | “COVID-19 open datasets of chest CT images” | 413 COVID-19 patients; | – | ResNet-50 | 93.01% | – | 91.45% | 94.77% | ( |
| Peng et al. (2020) | Collected from PMC | 606 COVID-19 patients; | – | DenseNet121 | – | 0.87 | 72.3% | 85.2% | ( |
| Pu et al. (2020) | Private | 498 COVID-19 patients; | Data augmentation [rotation, translation, vertical/horizontal flips, Hounsfield Unit (HU) shift, smoothing (blurring) operation, Gaussian noise] | 3D CNNs | 99% | 0.7 | – | – | ( |
| Raajan et al. (2020) | X-ray images on public medical Github repositories; | 349 images from 216 COVID-19 patients; | Normalization | ResNet-16 | 95.09% | – | 100% | 81.89% | ( |
| Rajaraman et al. (2020) | “Pediatric CXR dataset;” | 313 COVID-19 patients; | Median filtering; | Inception-V3 | 99.01% | 0.997 | 98.4% | – | ( |
| Sakagianni et al. (2020) | COVID-19 articles on medRxiv and bioRxiv | 349 COVID-19 patients; | – | AutoML Cloud Vision | – | 0.94 | 88.31% | – | ( |
| Sharma (2020) | Dataset from Italian Society of Medical and Interventional Radiology; | 800 COVID-19 patients; | Ground-glass opacities (GGO), consolidation and pleural effusion are the features | ResNet | 91% | – | 92.1% | 90.29% | ( |
| Singh et al. (2020) | Not mentioned | CT images | – | Multi-objective differential evolution (MODE) based CNN | 90.22% | – | 91.17% | 89.23% | ( |
| Song et al. (2020) | Private (two hospitals in China); | 98 COVID-19 patients; | – | BigBiGAN | – | 0.972 | 92% | 91% | ( |
| Wang et al. (2020) | Private | 1,315 COVID-19 patients; | Lobe Segmentation by 3D-Unet; | PA-66 model | 93.3% | 0.973 | 97.6% | – | ( |
| Wang et al. (2020) | COVID-19 dataset (private); | 754 COVID-19 patients; | Lung segmentation; | COVID-19Net (DenseNet-like architecture) | Test-set1: 78.32% | Test-set1: 0.87 | Test-set1: 80.39% | Test-set1: 76.61% | ( |
| Warman et al. (2020) | “Public sources” | 606 COVID-19 patients; | Data augmentation | YOLOv3 model | 96.80% | 0.966 | 98.33% | 94.95% | ( |
| Wu et al. (2020) | Private | 368 COVID-19 patients; | Lung region in each axial, coronal and sagittal CT slices were segmented using threshold segmentation and morphological optimization algorithms; | Multi-view fusion ResNet50 architecture | 76% | 0.819 | 81.1% | 61.5% | ( |
| Xu et al. (2020) | Private “Hospitals in Zhejiang Province, China.” | 219 images from 110 COVID-19 patients; | Image processing method base on HU values | 3D CNN segmentation model | 86.7% | – | 86.7% | – | ( |
| Xu et al. (2020) | Private | 432 COVID-19 patients; | Sampling 5 subsets of CT slices from all sequential images of one CT case to picture the infected lung regions. | 3D-Densenet | – | 0.98 | 97.5% (differentiating COVID-19 from three types of non-COVID-19 cases) (compared to 79% in human) | 89.4% (differentiating COVID-19 from three types of non-COVID-19 cases) (compared to 90% in human) | ( |
| Yan et al. (2020) | Private | 416 images from 206 COVID-19 patients; | Transferring image slices to JPG; | MSCNN | 97.7% | 0.962 | 99.5% | 95.6% | ( |
| Yang et al. (2020) | Private | 146 COVID-19 patients; | For patients, images containing round-glasses opacity (GGO), GGO with consolidation was selected; for healthy control, every 3 slices containing pulmonary parenchyma were selected; | DenseNet | 92% (compared to 95% in human) | 0.98 | 97% (compared to 94% in human) | 87% (compared to 96% in human) | ( |
| Yu et al. (2020) | Private | 202 COVID-19 patients (CT images) | – | DenseNet-201 with the cubic SVM model | 95.2% | 0.99 | 91.87% | 96.87% | ( |
| Al-Karawi et al. (2020) | “COVID-CT-Dataset” | 275 COVID-19 patients; | Adaptive winner filter followed by inversion; | SVM | 95.37% | – | 95.99% | 94.76% | ( |
| Alom et al. (2020) | Publicly available datasets; | 3,875 pneumonia patients; | Data augmentation; | IRRCNN model; | X-ray images: 84.67% | 0.93 | – | – | ( |
| Barstugan et al. (2020) | From the Italian Society of Medical and Interventional Radiology | 150 COVID-19 patients (CT images) | 13 features were extracted by Gray Level Size Zone Matrix (GLSZM) | SVM | 98.77% | – | 97.72% | 99.67% | ( |
| Chen et al. (2020) | Private dataset | 25,989 images from 51 COVID-19 patients; | Filtering | Deep learning model | Retrospective dataset: 95.24%; | – | Retrospective dataset: 100%; | Retrospective dataset:93.55%; | ( |
| Farid et al. (2020) | Kaggle database | 51 COVID-19 patients (CT images) | Feature extraction (MPEG7 Histogram Filter, Gabor Image Filter, Pyramid of Rotation-Invariant Local Binary Pattern, Fuzzy 64-bin Histogram Image Filter); | CHFS-Stacked (jrip, RF) with Naïve Bayes classifier | 96.07% | – | – | – | ( |
| Gozes et al. (2020) | Dataset1:ChainZ; | 50 suspicious COVID-19 patients from dataset1 used for training; | Data augmentation (rotation, horizontal flips and cropping) | Resnet-50-2D | – | 0.996 | 98.2% | 92.2% | ( |
| Jin et al. (2020) | Three centers in China; | 2,529 images from 1,502 COVID-19 patients; | – | CNN | – | 0.977 | 90.19% | 95.76% | ( |
| Jin et al. (2020) | Data from three different centers in Wuhan; | 1,502 COVID-19 patients; | Segmenting lung area with U-net | ResNet152 | – | 0.971 | 90.19% | 95.76% | ( |
| Hosseinzadeh Kassani et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | 117 COVID-19 patients; | Normalization | DenseNet121 with Bagging tree classifier | 99% | – | 96% | – | ( |
| Ozkaya et al. (2020) | From the Italian Society of Medical and Interventional Radiology | 53 COVID-19 patients (CT images) | Feature vectors obtained from Pre-trained VGG-16, GoogleNet and ResNet-50 networks and fusion method; | SVM | 98.27% | – | 98.93% | 97.60% | ( |
| Shi et al. (2020) | From Tongji Hospital, Shanghai Public Health Clinical Center, and China-Japan Union Hospital (all in China) | 183 COVID-19 patients; 5,521 Pneumonia patients (CT images) | Segmentation by a deep learning network (VB-Net) | Infection size-aware random forest | 87.9% | 0.942 | 90.7% | 83.3% | ( |
| Song et al. (2020) | From the Renmin Hospital of Wuhan University | 88 COVID-19 patients (CT images) | We extracted the main regions of lungs and filled the blank of lung segmentation with the lung itself | Details Relation Extraction neural network | 86% | 0.96 | 96% | – | ( |
| Wang et al. (2020) | Private dataset | 44 COVID-19 patients; 55 Pneumonia patients (CT images) | Random selection of ROI; Feature extraction using Transfer Learning | Fully connected network and combination of Decision tree and Adaboost | 82.9% | 0.90 | 81% | 84% | ( |
| Zheng et al. (2020) | Private dataset | 313 COVID-19 patients; 229 non-COVID-19 patients (CT images) | Data augmentation; Producing lung masks by a trained UNet | 3D deep convolutional neural network | 90.8% | 0.959 | – | – | ( |
Data Source: The source(s) that images were acquired from, Data Structure and Size: Number of images, image modalities, sample groups, Data Preprocessing: cleaning, Instance selection, normalization, transformation, feature extraction, selection, etc. The product of data preprocessing is the final training set, Best Model Structure(s): Best machine algorithm or deep learning model reported in the selected paper based on its performance, Performance Measurements (on the best model): The measurement of the model's output performance based on accuracy, sensitivity, specificity, and AUC score.
Characteristics of papers that used X-ray images.
| Alazab et al. (2020) | Kaggle database | 70 COVID-19 patients | Augmented to 1,000 images | VGG-16 | F1 Score: 0.99 | ( | |||
| Albahli et al. (2020) | “ChestX-ray8” combined with the few samples of rare classes from the Kaggle challenge | 108,948 X-ray images of 32,717 unique patients. Including 15 kinds of chest disease | Data augmentation (rotation, height shift, zoom, horizontal flip) | ResNet | 89% | – | – | – | ( |
| Albahli et al. (2020) | Open source COVIDx dataset | 850 COVID-19 patients; | Data augmentation | InceptionNetV3 | 99.02% | – | – | – | ( |
| Altan et al. (2020) | Not mentioned | 7,980 chest X-ray image (2,905 real raw 5,075 synthetic chests X-ray images) | Data augmentation; | Hybrid model | 99.69% | – | 99.44% | 99.81% | ( |
| Apostolopoulos et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | 455 COVID-19 patients; | Data augmentation (randomly rotated by a maximum of 10° and randomly shifted horizontally or vertically by a maximum of 20 pixels toward any direction) | MobileNet v2 | 99.18% | – | 97.36% | 99.42% | ( |
| Apostolopoulos et al. (2020) | X-ray images on public medical Github repositories; | Dataset 1: | - | MobileNet v2 | 96.78% | – | 98.66% | 96.46% | ( |
| Brunese et al. (2020) | COVID-19 image data collection; | 250 COVID-19 patients; | Data augmentation (15 degrees rotation clockwise or counterclockwise) | VGG-16 | 96% (comparison between COVID-19 and other pulmonary diseases) | – | 87% | 94% | ( |
| Chowdhury et al. (2020) | Kaggle chest X-ray database; | 423 COVID-19 patients; | Data augmentation | CNN | 99.7% | – | 99.7% | 99.55% | ( |
| Civit-Masot et al. (2020) | COVID-19 and Pneumonia Scans Dataset | 132 COVID-19 patients; | Histogram equalization | VGG16 | 85% | – | 85% | 92% | ( |
| Das et al. (2020) | COVID-19 collection; | 162 COVID-19 patients; | Histogram matching | Truncated Inception Net | 100% (Pneumonia collections) | 1.0 | 100% | 100% | ( |
| Elaziz et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | 219 COVID-19 patients; | Feature extraction by Fractional Multichannel Exponent Moments (FrMEMs); | KNN | 98.09 | – | 98.91 | – | ( |
| Hassantabar et al. (2020) | “COVID-CT-Dataset” | 315 COVID-19 patients; 367 non-COVID-19 patients (X-ray images) | – | CNN | 93.2% | – | 96.1% | 99.71% | ( |
| Islam et al. (2020) | “GitHub;” | 1,525 COVID-19 patients; | Normalization | CNN-LSTM | 99.4% | 0.999 | 99.3% | 99.2% | ( |
| Khan et al. (2020) | “Covid-chestxray-dataset” | 284 COVID-19 patients; | Random under-sampling (to overcome the unbalanced data problem) | CoroNet (based on Xception) | 89.6% | – | 89.92% | 96.4% | ( |
| Khuzani et al. (2020) | “GitHub” | 140 COVID-19 patients; | PCA method; | ML | 94% | 0.91 | 100% | – | ( |
| Ko et al. (2020) | Private; | 1,194 COVID-19 patients; | Data augmentation (rotation, zoom) | FCONet (ResNet-50) | 99.58% | – | 99.58% | 100% | ( |
| Loey et al. (2020) | COVID-19 X-ray image database developed by Cohen JP | 69 COVID-19 patients; | Data augmentation | Googlenet | 80.56% (Four classes) | – | 80.56% | – | ( |
| Mahmud et al. (2020) | Private | 1,583 normal patients; | – | CovXNet (CNN based architecture) | 90.2% (multi-class) | 0.911 (multi-class) | 89.9% (multi-class) | 89.1% (multi-class) | ( |
| Martínez et al. (2020) | COVID-19 X-ray image database developed by Cohen JP | 120 COVID-19 patients; | Data augmentation; | NASNet-type convolutional | 97% | – | 97% | 97% | ( |
| Minaee et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | 40 COVID-19 patients; | Regularization | SqueezeNet | 97% | – | 97.5% | 97.8% | ( |
| Narayan Das et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | 125 COVID-19 patients; | – | Xception | 97.4% | 0.986 | 97.09% | 97.29% | ( |
| Nour et al. (2020) | “Public COVID-19 radiology database;” | 219 COVID-19 patients; | Data augmentation | CNN | 97.14% | 0.995 | 94.61% | 98.29% | ( |
| Novitasari et al. (2020) | GitHub and Kaggle | 102 COVID-19 patients; | Feature extraction by Googlenet, Resnet18, Resnet50, Resnet101; | SVM | 97.33% (multi class) | – | 96% | 98% | ( |
| Oh et al. (2020) | “Japanese Society of Radiological Technology;” | 180 COVID-19 patients; | Data normalization; | (FC)-DenseNet103 | 88.9% | – | 85.9% | 96.4% | ( |
| Ozturk et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | (X-ray images) | DarkCovidNet inspired by the DarkNet architecture | 87.02% | – | 85.35% | 92.18% | ( | |
| Pandit et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | 224 COVID-19 patients; | Data augmentation | VGG-16 | 92.53% (Three class output) | – | 86.7% | 95.1% | ( |
| Panwar et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | 142 COVID-19 patients; | Data augmentation | nCOVnet | 88.10% | 0.880 | 97.62% | 78.57% | ( |
| Pereira et al. (2020) | “RYDLS-20;” | 90 COVID-19 patients; | Resampling algorithms; | Pre-trained CNN | F1 score = 89% | ( | |||
| Rahaman et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; “Chest X-Ray Images (pneumonia)” | 260 COVID-19 patients; | Data augmentation (rotate, shift, shear, zoom, horizontal and vertical flip) | VGG19 | 89.3% | – | 89% | – | ( |
| Rahimzadeh et al. (2020) | “Covid chestxray dataset;” | 180 COVID-19 patients; | Data augmentation | Xception | 91.4% | – | 80.53% | 99.56% | ( |
| Rajaraman et al. (2020) | Pediatric CXR dataset; | 4,683 Bacterial Pneumonia; | Segmenting lung area with dilated dropout U-Net; | VGG-16 | 94.05% | 0.96 | 98.77% | 86.24% | ( |
| Rajaraman et al. (2020) | “Pediatric CXR dataset;” | 313 COVID-19 patients; | Median Filtering; | Inception-V3 | 99.01% | 0.997 | 98.4% | – | ( |
| Sethy et al. (2020) | X-ray images on public medical Github repositories; | 127 COVID-19 patients; | – | ResNet50 plus SVM | 98.66% | – | 95.33% | – | ( |
| Shibly et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | 183 COVID-19 patients; | – | Faster R-CNN | 97.36% | – | 97.65% | – | ( |
| Togaçar et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | 295 COVID-19 patients; | Restructuring images using the Fuzzy Color technique and stacking them with the original images; | SVM | 100% | – | 100% | 100% | ( |
| Toraman et al. (2020) | COVID-19 X-ray image database developed by Cohen JP | 231 COVID-19 patients; | Data augmentation; | Convolutional capsnet | 97.24% (Binary class) | – | 97.42% | 97.04% | ( |
| Tsiknakis et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | 137 COVID-19 patients; | Data augmentation (rotation, shear, zoom) | Inception V3 | 76% (multi-class) | 0.93 (multi-class) | 93% (multi-class) | 91.8% (multi-class) | ( |
| Tuncer et al. (2020) | GitHub website; | 87 COVID-19 patients; | Converting X-ray image to grayscale; | SVM | 100% | – | 98.29% | 100% | ( |
| Ucar et al. (2020) | “COVID chest X-ray dataset;” “Kaggle chest X-ray pneumonia dataset;” | 403 COVID-19 patients; | Data augmentation (noise, shear, brightness increase, brightness decrease) | Bayes-SqueezeNet | 98.26% (multi-class) | – | – | 99.13% (multi-class) | ( |
| Vaid et al. (2020) | Set of lately published articles; | 181 COVID-19 patients; | Normalization | VGG-19 | 96.3% | – | 97.1% | – | ( |
| Waheed et al. (2020) | “IEEE Covid Chest X-ray dataset;” | 403 COVID-19 patients; | Data augmentation using CovidGAN | VGG16 | 95% | – | 90% | 97% | ( |
| Yildirim et al. (2020) | “COVID-19 Chest X-Ray dataset;” | 136 COVID-19 patients; | – | Hybrid model | 96.30% | – | 96.30% | 98.73% | ( |
| Yoo et al. (2020) | “COVID-Chest XrayDataset;” | 162 COVID-19 Patients; | Data augmentation (rotated, translated, and horizontally flipped) | ResNet18 | 95% Average of (COVID-19/TB) and (COVID-19/non-TB) | 0.95 Average of (COVID-19/TB) and (COVID-19/non-TB) | 97% Average of (COVID-19/TB) and (COVID-19/non-TB) | 93% Average of (COVID-19/TB) and (COVID-19/non-TB) | ( |
| Ghoshal et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | 68 COVID-19 patients; | Standardization; | Bayesian ResNet50V2 model | 89.82% | – | – | – | ( |
| Hall et al. (2020) | “X-ray images on public medical Github repositories;” | 135 COVID-19 patients; | Data augmentation | Resnet50 and VGG16 plus | 91.24% | 0.94 | – | – | ( |
| Hammoudi et al. (2020) | “Chest XRay Images (Pneumonia) dataset;” | 148 Bacterial pneumonia; | – | DenseNet169 | 95.72% | – | – | – | ( |
| El-Din Hemdan et al. (2020) | COVID-19 X-ray image database developed by Cohen JP; | 25 COVID-19 patients; | Scaling to 224*224 pixels; | COVIDX-Net (VGG19 and DenseNet201 models) | VGG19 = 90%; | VGG19 = 0.90; | VGG19 = 100%; | – | ( |
| Jain et al. (2020) | “Chest XRay Images (Pneumonia) dataset;” | 250 COVID-19 patients; | Normalize images according to the images in the ImageNet database; | ResNet50 | 97.77% | – | 97.14% | – | ( |
| Luz et al. (2020) | “COVIDx dataset;” | 183 COVID-19 patients; | Intensity normalization; | EfficientNet B3 | 93.9% | – | 96.8% | – | ( |
| Ozkaya et al. (2020) | From the Italian Society of Medical and Interventional Radiology | 53 COVID-19 patients (CT images) | SVM | 98.27% | – | 98.93% | 97.60% | ( | |
| Ozturk et al. (2020) | “covid-chestxray-dataset available at: | 4 ARds images, 101 COVID images, 2 No finding images, 2 pneumocystis-pneumonia images, 11 Sars images, and 6 streptococcus (X-Ray images) | Data augmentation; SMOTE oversampling; creating feature vectors with sAE and PCA; feature extraction by feature vectors, Gray Level Co-occurrence Matrix, Local Binary Gray Level Co-occurrence Matrix, Gray Level Run Length Matrix, and Segmentation-based Fractal Texture Analysis | SVM | 94.23% | 0.99 | 91.88% | 98.54% | ( |
| Wang et al. (2020) | COVIDx dataset | 266 COVID-19 patients; 5,536 Pneumonia patients; 8,066 normal patients (X-Ray images) | – | COVID-Net Network Architecture using a “lightweight residual projection-expansion- projection-extension design pattern” (Customized CNN) | 93.3% | 91.0% | – | ( | |
| Zhang et al. (2020) | X-COVID, OpenCOVID | 599 COVID-19 patients; 2,107 non-COVID-19 patients (non-viral pneumonia and healthy) (X-Ray images) | Data augmentation; Feature extraction using EfficientNet | Confidence-aware anomaly detection | 78.57% | 0.844 | 77.13% | 78.97% | ( |
Data Source: The source(s) that images were acquired from, Data Structure and Size: Number of images, image modalities, sample groups, Data Preprocessing: cleaning, Instance selection, normalization, transformation, feature extraction, selection, etc. The product of data preprocessing is the final training set, Best Model Structure(s): Best machine algorithm or deep learning model reported in the selected paper based on its performance, Performance Measurements (on the best model): The measurement of the model's output performance based on accuracy, sensitivity, specificity, and AUC score.