| Literature DB >> 35582037 |
Amjad Rehman1, Tanzila Saba1, Usman Tariq2, Noor Ayesha3.
Abstract
Currently, the world faces a novel coronavirus disease 2019 (COVID-19) challenge and infected cases are increasing exponentially. COVID-19 is a disease that has been reported by the WHO in March 2020, caused by a virus called the SARS-CoV-2. As of 10 March 2021, more than 150 million people were infected and 3v million died. Researchers strive to find out about the virus and recommend effective actions. An unprecedented increase in pathogens is happening and a major attempt is being made to tackle the epidemic. This article presents deep learning-based COVID-19 detection using CT and X-ray images and data analytics on its spread worldwide. This article's research structure builds on a recent analysis of the COVID-19 data and prospective research to systematize current resources, help the researchers, practitioners by using in-depth learning methodologies to build solutions for the COVID-19 pandemic.Entities:
Year: 2021 PMID: 35582037 PMCID: PMC8864950 DOI: 10.1109/MITP.2020.3036820
Source DB: PubMed Journal: IT Prof ISSN: 1520-9202 Impact factor: 2.626
Figure 1.COVID-19 statistics of countries worldwide.
Figure 2.Training models fusion to detect COVID-19.
COVID-19 detection: Current state of the art analysis and comparisons.
| References | Methodology | Data Type | Results | |
|---|---|---|---|---|
| Chen | Features model (C model), (R model), and (CR model). | CT scans | sensitivity (0.961) | |
| Ardakani | AlexNet, VGG-16, VGG-19, SqueezeNet, GoogleNet, MobileNet-V2, | CT scans | AUC (0.994) | |
| Salman | Trained CNN to detect COVID-10 | Chest X-rays | sensitivity (100) | |
| Ozturk | DarkNet model and YOLO | Chest X-rays | sensitivity (85.35) | |
| Butt | 3D CNN, ResNet, image preprocessing method based on HU Value, Noisy Bayesian Function | CT scans | AUC 0.996 (95%CI: 0.989–1.00) | |
| Toğaçar | Features were extracted using CNN model (MobileNetV2, SqueezeNet). Finally, for features selection, Social Mimic optimization is employed. | X-ray images | Accuracy (99.27) | |
| Singh | A fusion of CNN, ANN, and ANFIS models to classify | Chest CT images | Accuracy (1.9789) | |
| Wu | Multi-view deep learning fusion model | CT images | AUC (0.732) | |
| Ucar and Korkmaz | Deep Bayes-SqueezeNet based rapid diagnostic system | Chest X-ray images | COR (98.26) | |
| Hasan | Q-Deformed Entropy Feature Extraction (QDE), convolutional neural network (CNN) feature extractor and LSTM Neural Network Classifier. | CT Images | Accuracy (99.68) | |
| Loey | Generative Adversarial Network (GAN) and Convolutional Neural Networks (AlexNet, Googlenet, Resnet18) | Chest X-ray images | Googlenet 4 classes | |
*AUC (Area Under Curve)Common benchmarking dataset.
Figure 3.Sample chest X-ray (obtained with the patient's consent).