Fish Ontology framework for taxonomy-based fish recognition

PeerJ. 2017 Sep 15:5:e3811. doi: 10.7717/peerj.3811. eCollection 2017.

Abstract

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.

Keywords: Biodiversity; Bioinformatics; Fish Ontology; Fisheries; Life data technology; Semantic Web; Taxonomy.

Grants and funding

This research was supported by the Ministry of Higher Education Malaysia’s Fundamental Research Grant Scheme (FP032-2014B), University Malaya’s Grant (BK018-2015) and University of Malaya’s Postgraduate Research Grants (PG130-2013A, PG212-2014B). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.