The purpose of this research is the segmentation of lungs computed tomography (CT) scan for the diagnosis of COVID-19 by using machine learning methods. Our dataset contains data from patients who are prone to the epidemic. It contains three types of lungs CT images (Normal, Pneumonia, and COVID-19) collected from two different sources; the first one is the Radiology Department of Nishtar Hospital Multan and Civil Hospital Bahawalpur, Pakistan, and the second one is a publicly free available medical imaging database known as Radiopaedia. For the preprocessing, a novel fuzzy c-mean automated region-growing segmentation approach is deployed to take an automated region of interest (ROIs) and acquire 52 hybrid statistical features for each ROIs. Also, 12 optimized statistical features are selected via the chi-square feature reduction technique. For the classification, five machine learning classifiers named as deep learning J4, multilayer perceptron, support vector machine, random forest, and naive Bayes are deployed to optimize the hybrid statistical features dataset. It is observed that the deep learning J4 has promising results (sensitivity and specificity: 0.987; accuracy: 98.67%) among all the deployed classifiers.As a complementary study, a statisticalwork is devoted to the use of a new statistical model to fit the main datasets of COVID-19 collected in Pakistan.
CITATION STYLE
Ali, A., KhanMashwani, W., Naeem, S., Uddin, M. I., Kumam, W., Kumam, P., … Chesneau, C. (2021). COVID-19 Infected Lung Computed Tomography Segmentation and Supervised Classification Approach. Computers, Materials and Continua, 68(1), 391–407. https://doi.org/10.32604/cmc.2021.016037
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