2022
DOI: 10.3233/idt-220017
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A systematic comparison of transfer learning models for COVID-19 prediction

Abstract: The pandemic COVID-19 is already in its third year and there is no sign of ebbing. The world continues to be in a never-ending cycle of disease outbreaks. Since the introduction of Omicron-the most mutated and transmissible of the five variants of COVID-19 – fear and instability have grown. Many papers have been written on this topic, as early detection of COVID-19 infection is crucial. Most studies have used X-rays and CT images as these are highly sensitive to detect early lung changes. However, for privacy … Show more

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Cited by 2 publications
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