Beyond the FAIRness of COVID-19 Data: What about Quality?

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Abstract

Different datasets have been deployed at national level to share data on COVID-19 already at the beginning of the epidemic spread in early 2020. They distribute daily updated information aggregated at local, gender and age levels. To facilitate the reuse of such data, FAIR principles should be applied to optimally find, access, understand and exchange them, to define intra- and inter-country analyses for different purposes, such as statistical. However, another aspect to be considered when analyzing these datasets is data quality. In this paper we link these two perspectives to analyze to what extent datasets published by national institutions to monitor diffusion of COVID-19 are reusable for scientific purposes, such as tracing the spread of the virus.

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APA

Pecoraro, F., & Luzi, D. (2021). Beyond the FAIRness of COVID-19 Data: What about Quality? In Studies in Health Technology and Informatics (Vol. 287, pp. 68–72). IOS Press BV. https://doi.org/10.3233/SHTI210816

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