Developing Convolutional Neural Networks-Based System for Predicting Pneumonia Using X-Radiography Image

Author:

Habib Peter1,Alsamman Alsamman2,Hassanein Sameh3,Hamwieh Aladdin1

Affiliation:

1. Department of Biodiversity and Crop Improvement, International Center for Agriculture Research in the Dry Areas (ICARDA), Giza, Egypt

2. Department of Genome Mapping, Molecular Genetics and Genome Mapping Laboratory, Agricultural Genetic Engineering Research Institute (AGERI), Giza, Egypt

3. Department of Bioinformatics & Computer Networks, AGERI, Agricultural Research Center (ARC), Giza, Egypt

Abstract

Pneumonia is a respiratory disease caused by Streptococcus Pneumoniae infection. It is a life-threatening disease that causes a high mortality rate for children under 5 years of age every year. Under such circumstances, we have a vital need to develop an appropriate and consistent protocol for the identification and diagnosis of pneumonia. The incorporation of computational approaches into the diagnosis of disease is extremely efficient, promising and reliable. Our goal is to integrate these methods into pneumonia routine diagnosis to save countless lives around the world. We used the machine learning algorithm of Convolutional Neural Networks (CNNs) to identify visual symptoms of pneumonia in X-ray radiographic images and make a diagnostic decision. The dataset used to construct the computational model consists of 5844 X-ray images belonging to the pneumonia affected and normal individuals. Our computational model has been successful in identifying pneumonia patients with a diagnosis accuracy of 84%. Our model may increase the efficiency of the pneumonia diagnosis process and accelerate pathogenicity studies of the disease.

Publisher

International Library of Science

Reference19 articles.

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2. Brooks WA. Bacterial Pneumonia. In: Hunter’s Tropical Medicine and Emerging Infectious Diseases. Elsevier; 2020. p. 446–53.

3. UNICEF. UNICEF Annual Reports [Internet]. 2020. Available from: https://www.unicef.org

4. American Lung Association [Internet]. American Lung Association; 2020. Available from: www.lung.org

5. Mattila JT, Fine MJ, Limper AH, Murray PR, Chen BB, Lin PL. Pneumonia. Treatment and diagnosis. Ann Am Thorac Soc. 2014;11(Supplement 4):S189--S192.

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