Expanding Non-Patient COVID-19 Data: Towards the FAIRification of Migrants’ Data in Tunisia, Libya and Niger

IF 1.3 3区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Data Intelligence Pub Date : 2022-08-18 DOI:10.1162/dint_a_00181
M. Ghardallou, Morgane Wirtz, Sakinat Folorunso, Z. Touati, E. Ogundepo, Klara Smits, A. Mtiraoui, M. Reisen
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引用次数: 2

Abstract

Abstract This article describes the FAIRification process (which involves making data Findable, Accessible, Interoperable and Reusable—or FAIR—for both machines and humans) for data related to the impact of COVID-19 on migrants, refugees and asylum seekers in Tunisia, Libya and Niger, according to the scheme adopted by GO FAIR. This process was divided into three phases: pre-FAIRification, FAIRification and post-FAIRification. Each phase consisted of seven steps. In the first phase, 118 in-depth interviews and 565 press articles and research reports were collected by students and researchers at the University of Sousse in Tunisia and researchers in Niger. These interviews, articles and reports constitute the dataset for this research. In the second phase, the data were sorted and converted into a machine actionable format and published on a FAIR Data Point hosted at the University of Sousse. In the third phase, an assessment of the implementation of the FAIR Guidelines was undertaken. Certain barriers and challenges were faced in this process and solutions were found. For FAIR data curation, certain changes need to be made to the technical process. People need to be convinced to make these changes and that the implementation of FAIR will generate a long-term return on investment. Although the implementation of FAIR Guidelines is not straightforward, making our resources FAIR is essential to achieving better science together.
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扩大非患者COVID-19数据:实现突尼斯、利比亚和尼日尔移民数据的公平化
摘要本文描述了根据GO FAIR采用的方案,与新冠肺炎对突尼斯、利比亚和尼日尔移民、难民和寻求庇护者的影响有关的数据的FAIRification过程(包括使机器和人类的数据可查找、可访问、可互操作和可重复使用)。该过程分为三个阶段:FAI前、FAI后和FAI后。每个阶段由七个步骤组成。在第一阶段,突尼斯苏塞大学的学生和研究人员以及尼日尔的研究人员收集了118次深入采访、565篇新闻文章和研究报告。这些访谈、文章和报告构成了本研究的数据集。在第二阶段,数据被分类并转换为机器可操作的格式,并在苏塞大学的FAIR数据点上发布。在第三阶段,对FAIR准则的执行情况进行了评估。在这一过程中遇到了一些障碍和挑战,并找到了解决办法。对于FAIR数据管理,需要对技术流程进行某些更改。人们需要被说服做出这些改变,并且FAIR的实施将产生长期的投资回报。尽管FAIR指南的实施并不简单,但使我们的资源成为FAIR对于共同实现更好的科学至关重要。
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来源期刊
Data Intelligence
Data Intelligence COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
6.50
自引率
15.40%
发文量
40
审稿时长
8 weeks
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