Curating, Enriching and FAIRifying Datasets from the Brazilian COVID-19 Vaccination

Authors

  • Marcus Vinicius Ferreira Gonçalves Universidade Federal do Rio de Janeiro / Fundação Oswaldo Cruz
  • Jamile Santos dos Santos Universidade Federal do Rio de Janeiro
  • Caio Zava Ferreira Universidade Federal do Rio de Janeiro
  • Jorge Zavaleta Universidade Federal do Rio de Janeiro
  • Sérgio Manuel Serra da Cruz Universidade Federal do Rio de Janeiro / Universidade Federal Rural do Rio de Janeiro
  • Jonice Oliveira Sampaio Universidade Federal do Rio de Janeiro

DOI:

https://doi.org/10.5753/jidm.2022.2356

Keywords:

Data Science, COVID-19, Data Provenance, FAIR Pipelines, Data paper

Abstract

As the world struggles to face the challenges of vaccination against COVID-19, more attention needs to be paid to the issues related to the lack of transparency and accessibility of curated vaccination datasets. Among the strategies to combat COVID-19, vaccination and data-centered epidemiological investigations are the best ones. This paper presents the process of building cured and annotated datasets with provenance metadata. The primary dataset is based on the registration data of the Vaccination Campaign against COVID-19 in Brazil. The dataset contains thousands of records processed up to March 2021. The data were analyzed, treated, cross-checked, and linked with other sources to correct and complement them, resulting in cured datasets and aligned to the FAIR Data principles.

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Author Biography

Jorge Zavaleta, Universidade Federal do Rio de Janeiro

Pesquisador. Pós-Doutorado. (Instituto de Matemática)

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Published

2022-08-15

How to Cite

Ferreira Gonçalves, M. V., Santos dos Santos, J., Zava Ferreira, C., Zavaleta, J., Manuel Serra da Cruz, S., & Oliveira Sampaio, J. (2022). Curating, Enriching and FAIRifying Datasets from the Brazilian COVID-19 Vaccination. Journal of Information and Data Management, 13(1). https://doi.org/10.5753/jidm.2022.2356

Issue

Section

Dataset Showcase Workshop 2021 - Extended Papers