论文标题

CODO:用于收集和分析COVID-19数据的本体论

CODO: An Ontology for Collection and Analysis of Covid-19 Data

论文作者

Dutta, B., DeBellis, M.

论文摘要

病例和患者信息(CODO)的COVID-19本体论提供了一个模型,用于收集和分析有关COVID-19的大流行的数据。本体论提供了基于标准的开源模型,可促进来自异质数据源的数据集成。本体论是通过分析数据集,文献,服务等不同的COVID-19数据来源设计的。本体论遵循词汇的最佳实践,通过重新使用其他领先词汇表的概念,并使用W3C标准标准RDF RDF,OWL,SWRL和SPARQL。本体论已经拥有一个独立的用户,并纳入了印度政府的现实世界数据。

The COviD-19 Ontology for cases and patient information (CODO) provides a model for the collection and analysis of data about the COVID-19 pandemic. The ontology provides a standards-based open-source model that facilitates the integration of data from heterogeneous data sources. The ontology was designed by analysing disparate COVID-19 data sources such as datasets, literature, services, etc. The ontology follows the best practices for vocabularies by re-using concepts from other leading vocabularies and by using the W3C standards RDF, OWL, SWRL, and SPARQL. The ontology already has one independent user and has incorporated real-world data from the government of India.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源