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A novel method to identify pneumonia through analyzing chest radiographs employing a multichannel convolutional neural network

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journal contribution
posted on 2020-06-01, 00:00 authored by A A Nahid, N Sikder, A K Bairagi, M A Razzaque, M Masud, Abbas KouzaniAbbas Kouzani, M A Parvez Mahmud
Pneumonia is a virulent disease that causes the death of millions of people around the world. Every year it kills more children than malaria, AIDS, and measles combined and it accounts for approximately one in five child-deaths worldwide. The invention of antibiotics and vaccines in the past century has notably increased the survival rate of Pneumonia patients. Currently, the primary challenge is to detect the disease at an early stage and determine its type to initiate the appropriate treatment. Usually, a trained physician or a radiologist undertakes the task of diagnosing Pneumonia by examining the patient’s chest X-ray. However, the number of such trained individuals is nominal when compared to the 450 million people who get affected by Pneumonia every year. Fortunately, this challenge can be met by introducing modern computers and improved Machine Learning techniques in Pneumonia diagnosis. Researchers have been trying to develop a method to automatically detect Pneumonia using machines by analyzing and the symptoms of the disease and chest radiographic images of the patients for the past two decades. However, with the development of cogent Deep Learning algorithms, the formation of such an automatic system is very much within the realms of possibility. In this paper, a novel diagnostic method has been proposed while using Image Processing and Deep Learning techniques that are based on chest X-ray images to detect Pneumonia. The method has been tested on a widely used chest radiography dataset, and the obtained results indicate that the model is very much potent to be employed in an automatic Pneumonia diagnosis scheme.

History

Journal

Sensors

Volume

20

Issue

12

Article number

3482

Pagination

1 - 18

Publisher

MDPI

Location

Basel, Switzerland

ISSN

1424-8220

Language

eng

Publication classification

C1 Refereed article in a scholarly journal