A Review on Deep Learning Techniques for the Diagnosis of Novel
Coronavirus (COVID-19)
- URL: http://arxiv.org/abs/2008.04815v1
- Date: Sun, 9 Aug 2020 02:37:50 GMT
- Title: A Review on Deep Learning Techniques for the Diagnosis of Novel
Coronavirus (COVID-19)
- Authors: Md. Milon Islam, Fakhri Karray, Reda Alhajj, Jia Zeng
- Abstract summary: The prevalence rate of COVID-19 is rapidly rising every day throughout the globe.
Deep learning techniques proved themselves to be a powerful tool in the arsenal used by clinicians for the automatic diagnosis of COVID-19.
- Score: 9.750971289236826
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Novel coronavirus (COVID-19) outbreak, has raised a calamitous situation all
over the world and has become one of the most acute and severe ailments in the
past hundred years. The prevalence rate of COVID-19 is rapidly rising every day
throughout the globe. Although no vaccines for this pandemic have been
discovered yet, deep learning techniques proved themselves to be a powerful
tool in the arsenal used by clinicians for the automatic diagnosis of COVID-19.
This paper aims to overview the recently developed systems based on deep
learning techniques using different medical imaging modalities like Computer
Tomography (CT) and X-ray. This review specifically discusses the systems
developed for COVID-19 diagnosis using deep learning techniques and provides
insights on well-known data sets used to train these networks. It also
highlights the data partitioning techniques and various performance measures
developed by researchers in this field. A taxonomy is drawn to categorize the
recent works for proper insight. Finally, we conclude by addressing the
challenges associated with the use of deep learning methods for COVID-19
detection and probable future trends in this research area. This paper is
intended to provide experts (medical or otherwise) and technicians with new
insights into the ways deep learning techniques are used in this regard and how
they potentially further works in combatting the outbreak of COVID-19.
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