| Literature DB >> 35221781 |
Anuja Bhargava1, Atul Bansal1, Vishal Goyal1.
Abstract
The pandemic was announced by the world health organization coronavirus (COVID-19) universal health dilemma. Any scientific appliance which contributes expeditious detection of coronavirus with a huge recognition rate may be excessively fruitful to doctors. In this environment, innovative automation like deep learning, machine learning, image processing and medical image like chest radiography (CXR), computed tomography (CT) has been refined promising solution contrary to COVID-19. Currently, a reverse transcription-polymerase chain reaction (RT-PCR) test has been used to detect the coronavirus. Due to the moratorium period is high on results tested and huge false negative estimates, substitute solutions are desired. Thus, an automated machine learning-based algorithm is proposed for the detection of COVID-19 and the grading of nine different datasets. This research impacts the grant of image processing and machine learning to expeditious and definite coronavirus detection using CXR and CT medical imaging. This results in early detection, diagnosis, and cure for the accomplishment of COVID-19 as early as possible. Firstly, images are preprocessed by normalization to enhance the quality of the image and removing of noise. Secondly, segmentation of images is done by fuzzy c-means clustering. Then various features namely, statistical, textural, histogram of gradients, and discrete wavelet transform are extracted (92) and selected from the feature vector by principle component analysis. Lastly, k-NN, SRC, ANN, and SVM are used to make decisions for normal, pneumonia, COVID-19 positive patients. The performance of the system has been validated by the k (5) fold cross-validation technique. The proposed algorithm achieves 91.70% (k-Nearest Neighbor), 94.40% (Sparse Representation Classifier), 96.16% (Artificial Neural Network), and 99.14% (Support Vector Machine) for COVID detection. The proposed results show feature combination and selection improves the performance in 14.34 s with machine learning and image processing techniques. Among k-NN, SRC, ANN, and SVM classifiers, SVM shows more efficient results that are promising and comparable with the literature. The proposed approach results in an improved recognition rate as compared to the literature review. Therefore, the algorithm proposed shows immense potential to benefit the radiologist for their findings. Also, fruitful in prior virus diagnosis and discriminate pneumonia between COVID-19 and other pandemics.Entities:
Keywords: COVID-19; Coronavirus; Machine learning; Statistical; Support vector machine; Textural
Year: 2022 PMID: 35221781 PMCID: PMC8864211 DOI: 10.1007/s11042-022-12508-9
Source DB: PubMed Journal: Multimed Tools Appl ISSN: 1380-7501 Impact factor: 2.577
Fig. 1Hierarchical structure of COVID-19
Fig. 2Report of COVID 19 around the globe [62]
Fig. 3CT image of features
Literature review based on COVID-19 detection
| Authors | Image Type | Data Size | Method |
|---|---|---|---|
| Ozturk et al. [ | X-Ray | 125 COVID-19+, 500 Finding 500 Pneumonia | Dark COVID Net |
| Hemdan et al. [ | X-Ray | 25 COVID-19+, 25 COVID-19- | COVIDX-Net |
| Barstugan et al. [ | CT | 53 COVID-19+, 97 COVID-19- | DWT + SVM |
| Wang et al. [ | X-Ray | 358 COVID-19+, 5538 COVID-19,8066 Pneumonia | COVID-Net |
| Maghdid et al. [ | X-Ray, CT | 203 COVID-19+, 153 COVID-19- | Deep Learning |
| Ghoshal et al. [ | X-Ray | 1583 Normal, 2786 Bacterial, 1504 COVID-, 68 COVID+ | Bayesian CNN |
| Abbs et al. [ | X-Ray | 116 COVID-19+, 80 COVID-19- | Deep Transfer Learning, PCA |
| Farooq and Hafeez [ | X-Ray | 650 with non COVID-19, 1203 COVID-19- | ResNet5 |
| Singh et al. [ | CT | Multi-objective differential evolution CNN | |
| Soares et al. [ | CT | 1252 COVID-19+, 1230 COVID-19- | Deep Learning Classification |
| Yang et al. [ | CT | 349 COVID-19+, 397 COVID-19- | Multi-task learning, Self-supervised learning |
| Wei et al. [ | CT | 305 COVID-19+, 1498 Pneumonia | 3D ResNet18 |
| Hu et al. [ | CT | 150 COVID-19+, 300 Pneumonia | Weakly Supervised |
| Wu et al. [ | CT | 400 COVID-19+, 350 COVID-19- | Deep Learning |
| Sun et al. [ | CT | 1495 COVID-19+, 1027 Pneumonia | Adaptive feature selection |
| Jaiswal et al. [ | CT | 1262 COVID-19+, 1230 COVID-19- | DenseNet201 based deep transfer learning |
| Abraham et al. [ | X-Ray | 453 COVID-19+, 497 COVID-19- | Bayesian Classifier |
| Altan & Karsau [ | X-Ray | 1262 COVID-19+, 1230 COVID-19-, 1614 Pneumonia | 2D Curvelet transform |
| Nour et al. [ | X-Ray | 219 COVID-19+, 1341 COVID-19-, 1345 Pneumonia | Deep features, Bayesian optimization |
| Kassani et al. [ | X-Ray, CT | 117 X-Ray, 20 CT COVID-19+, 117 X-Ray, 20 CT COVID 19- | MobileNet, DenseNet, ResNet |
| Ardakani et al. [ | CT | 306 COVID-19+, 306 COVID-19- | k-NN, SVM |
| Zhou et al. [ | CT | 500 COVID-19+, 500 COVID-19- | Ensemble deep learning model |
| Gupta et al. [ | X-Ray | 219 COVID-19+, 1341 COVID-19-, 1345 Pneumonia | Integrated Stacking Insta CovNet19 Model |
| Asian et al. [ | X-Ray | 361 COVID-19+, 365 COVID-19-, 362 Pneumonia | CNN based transfer learning |
| Luz et al. [ | X-Ray | 8066 Normal, 5521 Pneumonia, 183 COVID+ | Deep learning model |
| Rajinikanth et al. [ | CT | Benchmark Database | Optimization and Thresholding |
| Panwar et al. [ | X-Ray | 192 COVID-19+, 145 COVID-19- | nCOVnet |
| Xu et al. [ | CT | 219 COVID-19+, 224 COVID-19-, 175 Normal | Deep learning Technique |
| Chowdhury et al. [ | X-Ray | 1341 Normal, 1345 Pneumonia, 190 COVID+ | Deep Convolutional Neural Network |
| Mobiny et al. [ | CT | 349 COVID-19+, 397 COVID-19- | Detail-oriented capsule network |
| Alom et al. [ | X-Ray, CT | 1375 Normal, 3875 Pneumonia | Inception residual recurrent CNN |
| Aposlolopoulos & Mpesiana [ | X-Ray | 1008 Normal, 1414 Pneumonia, 448 COVID+ | Deep learning |
| Kusakunniran et al. [ | X-Ray | 5218 Normal, 200 Pneumonia, 142 COVID+ | ResNet101 |
| Loey & Khalifa [ | CT | 11,202 COVID-19+, 12,312 COVID-19- | Deep Convolutional Neural Network |
| Narin et al. [ | X-Ray | 50 Normal, 50 COVID+ | ResNet50 |
| Karakanis & Leontidis [ | X-Ray | 415 Normal, 420 Pneumonia, 420 COVID+ | Deephear Model |
| Khurana et al. [ | X-Ray | 5760 COVID-19+, 1885 COVID-19- | Convolutional Neural Network |
| Yan et al. [ | CT | 861 COVID-19+, 20,797 COVID-19- | Deep Convolutional Neural Network |
| Minaree et al. [ | X-Ray | 536 COVID-19+, 5000 COVID-19- | DenseNet 121, SquuezeNet |
| Afshar et al. [ | X-Ray | 94,323 COVID-19+, 112,120 Abnormal | Convolutional Neural Network |
| Pereira et al. [ | X-Ray | 2000 Normal, 1374 Pneumonia, 288 COVID+ | Convolutional Neural Network |
Fig. 4Proposed Approach for Detection and Grading COVID-19 disease
Characteristics of the database used
| S.No. | Authors | Image Type | No. of COVID+ | No. of N/P |
|---|---|---|---|---|
| 1 | Zhao et al. [ | CT | 349 | 397 |
| 2 | Ozturk et al. [ | X-Ray | 125 | 500 P |
| 3 | Soares et al. [ | CT | 1252 | 1230 |
| 4 | Joseph Chohen [ | X-Ray | 288 | 1374P/2000 N |
| 5 | Zhou et al. [ | CT | 2933 | 2500 |
| 6 | Joseph [ | X-Ray | 25 | 25 N |
| 7 | Wang & Wong [ | X-Ray | 183 | 8066 N/ 5521P |
| 8 | Mooney [ | X-Ray | – | 1341 N/1345P |
| 9 | Siram [ | X-Ray | 2000 | – |
Fig. 5Some of the samples of (a) COVID positive X-Ray (b) COVID positive CT (c) X-Ray Pneumonia (d) Normal CT database images
Fig. 6Combination of Feature Set Used
Fig. 7Overview of the algorithm on dataset image
Fig. 8Example of k-NN
Fig. 9Linearly separable 2D hyperplane
Fig. 10A five-fold cross-validation
Performance detection of the type of vegetable or fruit
| S.No. | Classifier | Accuracy | Sensitivity | Specificity | FPR | FNR | Time (s) |
|---|---|---|---|---|---|---|---|
| 1 | k-NN | 91.70 | 90.69 | 88.70 | 11.30 | 9.31 | 39.98 |
| 2 | SRC | 94.40 | 72.00 | 86.00 | 14.00 | 28.00 | 33.46 |
| 3 | ANN | 96.16 | 91.20 | 97.40 | 2.60 | 8.80 | 25.87 |
| 4 | SVM | 92.86 | 99.86 | 0.14 | 7.14 | 14.34 |
Fig. 11Various parameters achieved for detection of the type of vegetable or fruit
Comparative Analysis for COVID-19 detection and grading
| S.No. | Authors | Image Acquisition | Segmentation | Feature Extraction | Classification | Accuracy |
|---|---|---|---|---|---|---|
| 1 | Chowdhury et al. [ | 2876 | – | – | Deep Convolutional Neural Network | 98.30% |
| 2 | Apostolopoulus et al. [ | 2870 | – | – | Deep Learning | 96.78% |
| 3 | Kusakumarni et al. [ | 5753 | U-Net | – | ResNet101 | 98.00% |
| 4 | Narin et al. [ | 100 | – | – | ResNet50 | 97.00% |
| 5 | Proposed | 31,454 | Fuzzy c-means | Statistical/ Textural/ HOG/DWT | k-NN/ SRC/ANN/SVM | 99.14% |
Comparison of average time taken for diagnosis of COVID-19 detection
| S.No. | Method Used | Time |
|---|---|---|
| 1 | RT-PCR | 4–6 h |
| 2 | Radiologist | 20–45 min |
| 3 | Proposed | 1–1.5 min |
Fig. 12Execution Time for different classifiers used for COVID-19 detection