Deep Learning Based COVID-19 Detection Using Medical Images: Is Insufficient Data Handled Well?

Journal: Current medical imaging
Published Date:

Abstract

Deep learning is a prominent method for automatic detection of COVID-19 disease using a medical dataset. This paper aims to give a perspective on the data insufficiency issue that exists in COVID-19 detection associated with deep learning. The extensive study of the available datasets comprising CT and X-ray images is presented in this paper, which can be very much useful in the context of a deep learning framework for COVID-19 detection. Moreover, various data handling techniques that are very essential in deep learning models are discussed in detail. Advanced data handling techniques and approaches to modify deep learning models are suggested to handle the data insufficiency problem in deep learning based on COVID-19 detection.

Authors

  • Caren Babu
    Department of Electronics and Communication Engineering, Christ College of Engineering, Irinjalakuda, India.
  • Rahul Manohar O
    Department of Electronics and Communication Engineering, Christ College of Engineering, Irinjalakuda, India.
  • D Abraham Chandy
    Department of Electronics and Communication Engineering, Karunya Institute of Technology and Sciences, Coimbatore, Tamil Nadu 641114, India.