4.0 Article

Deep learning based fusion model for COVID-19 diagnosis and classification using computed tomography images

Journal

CONCURRENT ENGINEERING-RESEARCH AND APPLICATIONS
Volume 30, Issue 1, Pages 116-127

Publisher

SAGE PUBLICATIONS LTD
DOI: 10.1177/1063293X211021435

Keywords

deeplearning; COVID-19; weiner filtering; convolutional neural network; Gaussian Naive Bayes; Deep learning multimodal fusion

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This study aims to develop a deep learning-based model for COVID-19 diagnosis and classification from CT images, showing superior performance in experimental validation with high accuracy and sensitivity.
Recently, the COVID-19 pandemic becomes increased in a drastic way, with the availability of a limited quantity of rapid testing kits. Therefore, automated COVID-19 diagnosis models are essential to identify the existence of disease from radiological images. Earlier studies have focused on the development of Artificial Intelligence (AI) techniques using X-ray images on COVID-19 diagnosis. This paper aims to develop a Deep Learning Based MultiModal Fusion technique called DLMMF for COVID-19 diagnosis and classification from Computed Tomography (CT) images. The proposed DLMMF model operates on three main processes namely Weiner Filtering (WF) based pre-processing, feature extraction and classification. The proposed model incorporates the fusion of deep features using VGG16 and Inception v4 models. Finally, Gaussian Naive Bayes (GNB) based classifier is applied for identifying and classifying the test CT images into distinct class labels. The experimental validation of the DLMMF model takes place using open-source COVID-CT dataset, which comprises a total of 760 CT images. The experimental outcome defined the superior performance with the maximum sensitivity of 96.53%, specificity of 95.81%, accuracy of 96.81% and F-score of 96.73%.

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