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arxiv: 2110.06397 · v1 · pith:KDI2IGTL · submitted 2021-10-12 · cs.SE · cs.CL· cs.SC

An Overview of Ontologies and Tool Support for COVID-19 Analytics

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classification cs.SE cs.CLcs.SC
keywords covid-19dataanalyticspandemicontologiessystemsadvantagesbackend
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The outbreak of the SARS-CoV-2 pandemic of the new COVID-19 disease (COVID-19 for short) demands empowering existing medical, economic, and social emergency backend systems with data analytics capabilities. An impediment in taking advantages of data analytics in these systems is the lack of a unified framework or reference model. Ontologies are highlighted as a promising solution to bridge this gap by providing a formal representation of COVID-19 concepts such as symptoms, infections rate, contact tracing, and drug modelling. Ontology-based solutions enable the integration of diverse data sources that leads to a better understanding of pandemic data, management of smart lockdowns by identifying pandemic hotspots, and knowledge-driven inference, reasoning, and recommendations to tackle surrounding issues.

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