An Analysis of New Feature Extraction Methods Based on Machine Learning Methods for Classification Radiological Images.

Journal: Computational intelligence and neuroscience
Published Date:

Abstract

The lungs are COVID-19's most important focus, as it induces inflammatory changes in the lungs that can lead to respiratory insufficiency. Reducing the supply of oxygen to human cells negatively impacts humans, and multiorgan failure with a high mortality rate may, in certain circumstances, occur. Radiological pulmonary evaluation is a vital part of patient therapy for the critically ill patient with COVID-19. The evaluation of radiological imagery is a specialized activity that requires a radiologist. Artificial intelligence to display radiological images is one of the essential topics. Using a deep machine learning technique to identify morphological differences in the lungs of COVID-19-infected patients could yield promising results on digital images of chest X-rays. Minor differences in digital images that are not detectable or apparent to the human eye may be detected using computer vision algorithms. This paper uses machine learning methods to diagnose COVID-19 on chest X-rays, and the findings have been very promising. The dataset includes COVID-19-enhanced X-ray images for disease detection using chest X-ray images. The data were gathered from two publicly accessible datasets. The feature extractions are done using the gray level co-occurrence matrix methods. -nearest neighbor, support vector machine, linear discrimination analysis, naïve Bayes, and convolutional neural network methods are used for the classification of patients. According to the findings, convolutional neural networks' efficiency linked to imaging modalities with fewer human involvements outperforms other traditional machine learning approaches.

Authors

  • Firoozeh Abolhasani Zadeh
    Department of Surgery, Faculty of Medicine, Kerman University of Medical Sciences, Kerman, Iran.
  • Mohammadreza Vazifeh Ardalani
    Robotics Research Laboratory, Center of Excellence in Experimental Solid Mechanics and Dynamics, School of Mechanical Engineering, Iran University of Science and Technology, Tehran, Iran.
  • Ali Rezaei Salehi
    Industrial Engineering Department, Technical and Engineering Faculty, University of Science and Culture, Tehran, Iran.
  • Roza Jalali Farahani
    Department of Electrical Engineering, Islamic Azad University, Tehran, Iran.
  • Mandana Hashemi
    School of Industrial and Information Engineering, Politecnico di Milano University, Milan, Italy.
  • Adil Hussein Mohammed
    Department of Communication and Computer Engineering, Faculty of Engineering, Cihan University-Erbil, Erbil, Kurdistan Region, Iraq.