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Semantic Data and Models Sharing in Systems Biology: The Just Enough Results Model and the SEEK Platform

机译:系统生物学中的语义数据和模型共享:足够结果模型和SEEK平台

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Research in Systems Biology involves integrating data and knowledge about the dynamic processes in biological systems in order to understand and model them. Semantic web technologies should be ideal for exploring the complex networks of genes, proteins and metabolites that interact, but much of this data is not natively available to the semantic web. Data is typically collected and stored with free-text annotations in spreadsheets, many of which do not conform to existing metadata standards and are often not publically released. Along with initiatives to promote more data sharing, one of the main challenges is therefore to semantically annotate and extract this data so that it is available to the research community. Data annotation and curation are expensive and undervalued tasks that have enormous benefits to the discipline as a whole, but fewer benefits to the individual data producers. By embedding semantic annotation into spreadsheets, however, and automatically extracting this data into RDF at the time of repository submission, the process of producing standards-compliant data, that is available for semantic web querying, can be achieved without adding additional overheads to laboratory data management. This paper describes these strategies in the context of semantic data management in the SEEK. The SEEK is a web-based resource for sharing and exchanging Systems Biology data and models that is underpinned by the JERM ontology (Just Enough Results Model), which describes the relationships between data, models, protocols and experiments. The SEEK was originally developed for SysMO, a large European Systems Biology consortium studying micro-organisms, but it has since had widespread adoption across European Systems Biology.
机译:系统生物学研究涉及整合有关生物系统动态过程的数据和知识,以便对其进行理解和建模。对于探索相互作用的基因,蛋白质和代谢物的复杂网络,语义网技术应该是理想的选择,但是语义网本身并不能获得许多此类数据。通常会收集数据并将其与自由文本注释一起存储在电子表格中,其中许多不符合现有的元数据标准,并且通常不会公开发布。因此,除了促进更多数据共享的举措外,主要挑战之一是对这些数据进行语义注释和提取,以便研究社区可以使用它们。数据注释和管理是昂贵且被低估的任务,它们对整个学科有巨大的好处,但对单个数据生产者的好处却更少。但是,通过将语义注释嵌入电子表格中,并在提交存储库时自动将这些数据提取到RDF中,可以实现生成可用于语义Web查询的符合标准的数据的过程,而不会增加实验室数据的额外开销管理。本文在SEEK的语义数据管理上下文中描述了这些策略。 SEEK是一个基于Web的资源,用于共享和交换系统生物学数据和模型,该资源以JERM本体(仅足够的结果模型)为基础,该模型描述了数据,模型,协议和实验之间的关系。 SEEK最初是为SysMO开发的,SysMO是一个研究微生物的大型欧洲系统生物学联盟,但此后在欧洲系统生物学中得到了广泛的采用。

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