Abstract
Pneumonia is a common disease that occurs in many countries, more specifically, in poor countries. This disease is an obstructive pneumonia which has the same impression on pulmonary radiographs as other pulmonary diseases, which makes it hard to distinguish even for medical radiologists. Lately, image processing and deep learning models are established to rapidly and precisely diagnose pneumonia disease. In this research, we have predicted pneumonia diseases dependably from the X-ray images, employing image segmentation and machine learning models. A public labelled database is utilized with 4000 pneumonia disease X-rays and 4000 healthy X-rays. ImgNet and SqueezeNet are utilized for transfer learning from their previous computed weights. The proposed deep learning models are trained for classifying pneumonia and non-pneumonia cases. The following processes are presented in this paper: X-ray segmentation utilizing BoxENet architecture, X-ray classification utilizing the segmented chest images. We propose the improved BoxENet model by incorporating transfer learning from both ImgNet and SqueezeNet using a majority fusion model. Performance metrics such as accuracy, specificity, sensitivity and Dice are evaluated. The proposed Improved BoxENet model outperforms the other models in binary and multi-classification models. Additionally, the Improved BoxENet has higher speed compared to other models in both training and classification.
Subject
Health Information Management,Health Informatics,Health Policy,Leadership and Management
Reference29 articles.
1. Laboratory diagnosis of coronavirus disease-2019 (COVID-19)
2. Clinical features of patients infected with 2019 novel coronavirus in Wuhan, China
3. COVID-19 Worldwide Statistics
https://www.worldometers.info/coronavirus/
4. COVID-19 Testing
5. Users Guides to the Medical Literature: A Manual for Evidence-Based Clinical Practice;Guyatt,2002
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