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Discovering the symptom patterns of COVID-19 from recovered and deceased patients using Apriori association rule mining

Mohammad Amin Dehghani, Zahra Yazdanparast

2023Informatics in Medicine Unlocked18 citationsDOIOpen Access PDF

Abstract

The COVID-19 pandemic has a devastating impact globally, claiming millions of lives and causing significant social and economic disruptions. In order to optimize decision-making and allocate limited resources, it is essential to identify COVID-19 symptoms and determine the severity of each case. Machine learning algorithms offer a potent tool in the medical field, particularly in mining clinical datasets for useful information and guiding scientific decisions. Association rule mining is a machine learning technique for extracting hidden patterns from data. This paper presents an application of association rule mining based Apriori algorithm to discover symptom patterns from COVID-19 patients. The study, using 2875 patient's records, identified the most common signs and symptoms as apnea (72%), cough (64%), fever (59%), weakness (18%), myalgia (14.5%), and sore throat (12%). The proposed method provides clinicians with valuable insight into disease that can assist them in managing and treating it effectively.

Topics & Concepts

Association rule learningApriori algorithmSore throatmyalgiaData miningField (mathematics)Computer scienceCoronavirus disease 2019 (COVID-19)Association (psychology)MedicineDiseaseArtificial intelligenceData sciencePsychologyInfectious disease (medical specialty)PathologyMathematicsPure mathematicsSurgeryPsychotherapistImmunologyArtificial Intelligence in HealthcareMachine Learning in HealthcareTraditional Chinese Medicine Studies
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