Deep Convolutional Neural Networks for Chest Diseases Detection

Journal of Healthcare Engineering
Rahib H Abiyev, Mohammad Khaleel Sallam Ma'aitah

Abstract

Chest diseases are very serious health problems in the life of people. These diseases include chronic obstructive pulmonary disease, pneumonia, asthma, tuberculosis, and lung diseases. The timely diagnosis of chest diseases is very important. Many methods have been developed for this purpose. In this paper, we demonstrate the feasibility of classifying the chest pathologies in chest X-rays using conventional and deep learning approaches. In the paper, convolutional neural networks (CNNs) are presented for the diagnosis of chest diseases. The architecture of CNN and its design principle are presented. For comparative purpose, backpropagation neural networks (BPNNs) with supervised learning, competitive neural networks (CpNNs) with unsupervised learning are also constructed for diagnosis chest diseases. All the considered networks CNN, BPNN, and CpNN are trained and tested on the same chest X-ray database, and the performance of each network is discussed. Comparative results in terms of accuracy, error rate, and training time between the networks are presented.

References

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Citations

Dec 25, 2019·Journal of Ultrasound in Medicine : Official Journal of the American Institute of Ultrasound in Medicine·Michael Blaivas, Laura Blaivas
May 16, 2020·Frontiers in Public Health·Stefano TribertiGabriella Pravettoni
Aug 25, 2020·Machine Vision and Applications·Hanan FarhatRima Kilany
Oct 2, 2020·Journal of the American College of Emergency Physicians Open·Michael BlaivasMatthew White
Jul 10, 2019·Computational Intelligence and Neuroscience·Awwal Muhammad DawudHuseyin Oztoprak
Jan 10, 2020·Journal of Healthcare Engineering·Santiago Tello-MijaresFrancisco Flores
Jun 25, 2020·Diagnostics·Mohammad Farukh HashmiZong Woo Geem
Sep 15, 2020·Biocybernetics and Biomedical Engineering·Govardhan JainMadhup K Mittal
Nov 19, 2020·International Journal of Environmental Research and Public Health·Dima M AlalharithKasumi K Barouch
Jan 26, 2021·Computational Intelligence and Neuroscience·Fareed AhmadMuhammad Usman Ghani
Apr 17, 2021·The British Journal of Radiology·Mohammad SalehiReza Reiazi
May 11, 2021·Computational and Mathematical Methods in Medicine·Shangjie YaoRongxin Jiang
May 26, 2021·Molecular Diversity·Joel Markus Vaz, S Balaji
May 20, 2021·Computers in Biology and Medicine·Fareed AhmadKashif Javed
Jul 8, 2021·Journal of Medical Imaging and Radiation Oncology·Daniel A Moses
Nov 26, 2021·Journal of Ultrasound in Medicine : Official Journal of the American Institute of Ultrasound in Medicine·Michael BlaivasYiju Teresa Liu

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Methods Mentioned

BETA
X-ray

Software Mentioned

GIST
VGG19
VGG16
Image Net
CpNN2

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