Ali Najib M, Khan Haris A, Then Amy Y-Hui, Ving Ching Chong, Gaur Manas, Dhillon Sarinder Kaur
Institute of Biological Sciences, Faculty of Science, University of Malaya, Kuala Lumpur, Malaysia.
Wright State University, Kno.e.sis Center, Dayton, OH, United States of America.
PeerJ. 2017 Sep 15;5:e3811. doi: 10.7717/peerj.3811. eCollection 2017.
Life science ontologies play an important role in Semantic Web. Given the diversity in fish species and the associated wealth of information, it is imperative to develop an ontology capable of linking and integrating this information in an automated fashion. As such, we introduce the Fish Ontology (FO), an automated classification architecture of existing fish taxa which provides taxonomic information on unknown fish based on metadata restrictions. It is designed to support knowledge discovery, provide semantic annotation of fish and fisheries resources, data integration, and information retrieval. Automated classification for unknown specimens is a unique feature that currently does not appear to exist in other known ontologies. Examples of automated classification for major groups of fish are demonstrated, showing the inferred information by introducing several restrictions at the species or specimen level. The current version of FO has 1,830 classes, includes widely used fisheries terminology, and models major aspects of fish taxonomy, grouping, and character. With more than 30,000 known fish species globally, the FO will be an indispensable tool for fish scientists and other interested users.
生命科学本体论在语义网中发挥着重要作用。鉴于鱼类物种的多样性以及相关的丰富信息,开发一种能够以自动化方式链接和整合这些信息的本体论势在必行。因此,我们引入了鱼类本体论(FO),这是一种现有鱼类分类单元的自动分类架构,它基于元数据限制为未知鱼类提供分类信息。它旨在支持知识发现,为鱼类及渔业资源提供语义注释、数据集成和信息检索。对未知标本进行自动分类是一个独特的功能,目前在其他已知本体论中似乎并不存在。文中展示了主要鱼类群体的自动分类示例,通过在物种或标本层面引入若干限制来显示推断出的信息。FO的当前版本有1830个类别,包括广泛使用的渔业术语,并对鱼类分类学、分组和特征的主要方面进行了建模。全球已知鱼类物种超过30000种,FO将成为鱼类科学家和其他感兴趣用户不可或缺的工具。