Enhancing COVID-19 Diagnosis through Fuzzy Logic Framework-A Comprehensive Approach
Keywords:
Fuzzy Logic, Artificial intelligence, Expert system, Medical diagnosis, COVID-19Abstract
COVID-19 is caused by a dangerous novel coronavirus known as severe acute respiratory syndrome corona-virus 2, first identified in the City of Wuhan in China. Since then, it has been declared a global pandemic by the World Health Organization. The late diagnosis of COVID-19 patients caused the fast spreading of the virus worldwide. This paper discusses how fuzzy logic and a rule-based expert system can help diagnose or detect COVID–19 in the early stages and get the result immediately without any delay.
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