| Literature DB >> 33727984 |
Dac-Nhuong Le1,2, Velmurugan Subbiah Parvathy3, Deepak Gupta4, Ashish Khanna4, Joel J P C Rodrigues5,6, K Shankar7.
Abstract
At present times, the drastic advancements in the 5G cellular and internet of things (IoT) technologies find useful in different applications of the healthcare sector. At the same time, COVID-19 is commonly spread from animals to persons, but today it is transmitting among persons by adapting the structure. It is a severe virus and inappropriately resulted in a global pandemic. Radiologists utilize X-ray or computed tomography (CT) images to diagnose COVID-19 disease. It is essential to identify and classify the disease through the use of image processing techniques. So, a new intelligent disease diagnosis model is in need to identify the COVID-19. In this view, this paper presents a novel IoT enabled Depthwise separable convolution neural network (DWS-CNN) with Deep support vector machine (DSVM) for COVID-19 diagnosis and classification. The proposed DWS-CNN model aims to detect both binary and multiple classes of COVID-19 by incorporating a set of processes namely data acquisition, Gaussian filtering (GF) based preprocessing, feature extraction, and classification. Initially, patient data will be collected in the data acquisition stage using IoT devices and sent to the cloud server. Besides, the GF technique is applied to remove the existence of noise that exists in the image. Then, the DWS-CNN model is employed for replacing default convolution for automatic feature extraction. Finally, the DSVM model is applied to determine the binary and multiple class labels of COVID-19. The diagnostic outcome of the DWS-CNN model is tested against Chest X-ray (CXR) image dataset and the results are investigated interms of distinct performance measures. The experimental results ensured the superior results of the DWS-CNN model by attaining maximum classification performance with the accuracy of 98.54% and 99.06% on binary and multiclass respectively. © Springer-Verlag GmbH Germany, part of Springer Nature 2021.Entities:
Keywords: COVID-19; Convolutional neural network; Deep learning; Feature extraction; Multilabel classification
Year: 2021 PMID: 33727984 PMCID: PMC7778504 DOI: 10.1007/s13042-020-01248-7
Source DB: PubMed Journal: Int J Mach Learn Cybern ISSN: 1868-8071 Impact factor: 4.377
Fig. 1Overall process of proposed DWS-CNN model
Fig. 2Convolution neural networks
Fig. 3Structure of DWS-CNN
Fig. 4a Standard CNN b Depthwise Separable CNN
Fig. 5Layers a Standard CNN b Depthwise Separable CNN
Fig. 6Sample Images a Normal b COVID-19 c SARS d ARDS e Streptococcus
Fig. 7Visualization of classified results
Results of proposed DWS-CNN model for binary class in terms of different measures
| No. of folds | Sensitivity | Specificity | Accuracy | F-score |
|---|---|---|---|---|
| F1 | 98.10 | 98.65 | 98.16 | 98.10 |
| F2 | 98.32 | 97.89 | 98.27 | 98.76 |
| F3 | 98.53 | 99.10 | 99.06 | 99.09 |
| F4 | 98.64 | 98.84 | 98.82 | 98.81 |
| F5 | 98.28 | 98.45 | 98.39 | 98.41 |
Fig. 8Binary class a sensitivity b specificity c accuracy d F-score
Results of proposed DWS-CNN model for multi class in terms of different measures
| No. of folds | Sensitivity | Specificity | Accuracy | F-score |
|---|---|---|---|---|
| F1 | 99.32 | 99.17 | 99.12 | 99.06 |
| F2 | 99.20 | 99.45 | 99.36 | 99.28 |
| F3 | 98.96 | 98.91 | 98.90 | 98.87 |
| F4 | 98.70 | 98.85 | 98.52 | 98.43 |
| F5 | 99.45 | 99.62 | 99.41 | 99.22 |
| Mean | 99.13 | 99.20 | 99.06 | 98.97 |
Fig. 9Multi class a sensitivity b specificity c accuracy d F-score
Fig. 10Average analysis of proposed DWS-CNN
Comparative analysis of existing with proposed methods
| Methods | Sensitivity | Specificity | Accuracy | F-score |
|---|---|---|---|---|
| DWS-CNN (Binary Class) | 98.37 | 98.59 | 98.54 | 98.63 |
| DWS-CNN (Multi Class) | 99.13 | 99.20 | 99.06 | 98.97 |
| FR-CNN | 97.65 | 95.48 | 97.36 | 98.46 |
| ResNet-50 | 93.00 | 67.74 | 89.61 | 93.94 |
| Inception V3 | 91.00 | 74.19 | 88.74 | 93.33 |
| AlexNet | 92.50 | 71.43 | 90.50 | 94.63 |
| CovxNet | 90.50 | 95.80 | 91.70 | 91.10 |
| CapsNet | 84.22 | 91.79 | 89.19 | 84.21 |
| VGG19 | 97.05 | 96.00 | 96.33 | 94.24 |
| Deep Transfer Learning | 89.61 | 92.03 | 90.75 | 90.43 |
| Multi-Layer Perceptron | 93.00 | 87.23 | 93.13 | 93.00 |
| Logistic Regression | 93.00 | 90.34 | 92.12 | 92.00 |
| K-Nearest Neighbour | 89.00 | 90.65 | 88.91 | 89.00 |
| Decision Tree | 87.00 | 88.93 | 86.71 | 87.00 |
Fig. 11Result analysis of existing with proposed DWS-CNN in terms of sensitivity and specificity
Fig. 12Result analysis of existing with proposed DWS-CNN in terms of accuracy and F-score