Developing a vocabulary and ontology for modeling insect natural history data: example data, use cases, and competency questions

Author:

Stucky Brian,Balhoff JamesORCID,Barve Narayani,Barve VijayORCID,Brenskelle Laura,Brush Matthew,Dahlem Gregory,Gilbert James,Kawahara AkitoORCID,Keller Oliver,Lucky Andrea,Mayhew Peter,Plotkin DavidORCID,Seltmann KatjaORCID,Talamas Elijah,Vaidya Gaurav,Walls RamonaORCID,Yoder MattORCID,Zhang GuanyangORCID,Guralnick Rob

Abstract

Insects are possibly the most taxonomically and ecologically diverse class of multicellular organisms on Earth. Consequently, they provide nearly unlimited opportunities to develop and test ecological and evolutionary hypotheses. Currently, however, large-scale studies of insect ecology, behavior, and trait evolution are impeded by the difficulty in obtaining and analyzing data derived from natural history observations of insects. These data are typically highly heterogeneous and widely scattered among many sources, which makes developing robust information systems to aggregate and disseminate them a significant challenge. As a step towards this goal, we report initial results of a new effort to develop a standardized vocabulary and ontology for insect natural history data. In particular, we describe a new database of representative insect natural history data derived from multiple sources (but focused on data from specimens in biological collections), an analysis of the abstract conceptual areas required for a comprehensive ontology of insect natural history data, and a database of use cases and competency questions to guide the development of data systems for insect natural history data. We also discuss data modeling and technology-related challenges that must be overcome to implement robust integration of insect natural history data.

Funder

National Science Foundation

Publisher

Pensoft Publishers

Subject

Ecology,Ecology, Evolution, Behavior and Systematics

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