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Towards FAIRer Biological Knowledge Networks Using a Hybrid Linked Data and Graph Database Approach

机译:使用混合链接数据和图数据库方法建立FAIRer生物知识网络

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摘要

The speed and accuracy of new scientific discoveries – be it by humans or artificial intelligence – depends on the quality of the underlying data and on the technology to connect, search and share the data efficiently. In recent years, we have seen the rise of graph databases and semi-formal data models such as knowledge graphs to facilitate software approaches to scientific discovery. These approaches extend work based on formalised models, such as the Semantic Web. In this paper, we present our developments to connect, search and share data about genome-scale knowledge networks (GSKN). We have developed a simple application ontology based on OWL/RDF with mappings to standard schemas. We are employing the ontology to power data access services like resolvable URIs, SPARQL endpoints, JSON-LD web APIs and Neo4j-based knowledge graphs. We demonstrate how the proposed ontology and graph databases considerably improve search and access to interoperable and reusable biological knowledge (i.e. the FAIRness data principles).
机译:无论是人类还是人工智能,新科学发现的速度和准确性都取决于基础数据的质量以及有效连接,搜索和共享数据的技术。近年来,我们看到了图数据库和半正式数据模型(例如知识图)的兴起,这些模型促进了科学发现的软件方法。这些方法扩展了基于形式化模型(例如语义网)的工作。在本文中,我们介绍了连接,搜索和共享有关基因组规模知识网络(GSKN)的数据的发展。我们已经开发了基于OWL / RDF的简单应用程序本体,并映射到标准架构。我们正在使用本体来为数据访问服务(例如可解析的URI,SPARQL端点,JSON-LD Web API和基于Neo4j的知识图)提供支持。我们演示了拟议的本体和图形数据库如何显着改善对可互操作和可重用的生物知识(即FAIRness数据原理)的搜索和访问。

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