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Hybridizing Convolutional Neural Network for Classification of Lung Diseases

Author

Listed:
  • Mukesh Soni

    (Jagran Lakecity University, India)

  • S. Gomathi

    (UK International Qualifications, Ltd., India)

  • Pankaj Kumar

    (Noida Institute of Engineering and Technology, Greater Noida, India)

  • Prathamesh P. Churi

    (NMIMS University, India)

  • Mazin Abed Mohammed

    (University of Anbar, Iraq)

  • Akbal Omran Salman

    (Middle Technical University, Iraq)

Abstract

Pulmonary disease is widespread worldwide. There is persistent blockage of the lungs, pneumonia, asthma, TB, etc. It is essential to diagnose the lungs promptly. For this reason, machine learning models were developed. For lung disease prediction, many deep learning technologies, including the CNN, and the capsule network, are used. The fundamental CNN has low rotating, inclined, or other irregular image orientation efficiency. Therefore by integrating the space transformer network (STN) with CNN, we propose a new hybrid deep learning architecture named STNCNN. The new model is implemented on the dataset from the Kaggle repository for an NIH chest X-ray image. STNCNN has an accuracy of 69% in respect of the entire dataset, while the accuracy values of vanilla grey, vanilla RGB, hybrid CNN are 67.8%, 69.5%, and 63.8%, respectively. When the sample data set is applied, STNCNN takes much less time to train at the cost of a slightly less reliable validation. Therefore both specialists and physicians are simplified by the proposed STNCNN System for the diagnosis of lung disease.

Suggested Citation

  • Mukesh Soni & S. Gomathi & Pankaj Kumar & Prathamesh P. Churi & Mazin Abed Mohammed & Akbal Omran Salman, 2022. "Hybridizing Convolutional Neural Network for Classification of Lung Diseases," International Journal of Swarm Intelligence Research (IJSIR), IGI Global, vol. 13(2), pages 1-15, April.
  • Handle: RePEc:igg:jsir00:v:13:y:2022:i:2:p:1-15
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