Nanopublications for exposing experimental data in the life-sciences: a Huntington’s Disease case study

TitleNanopublications for exposing experimental data in the life-sciences: a Huntington’s Disease case study
Publication TypeJournal Article
Year of Publication2015
AuthorsMina, Eleni, Mark Thompson, Rajaram Kaliyaperumal, Jun Zhao, van Eelke der Horst, Zuotian Tatum, Kristina M. Hettne, Erik A. Schultes, Barend Mons, and Marco Roos
JournalJournal of Biomedical Semantics
Volume6
Pagination5
ISSN2041-1480
Abstract

Data from high throughput experiments often produce far more results than can ever appear in the main text or tables of a single research article. In these cases, the majority of new associations are often archived either as supplemental information in an arbitrary format or in publisher-independent databases that can be difficult to find. These data are not only lost from scientific discourse, but are also elusive to automated search, retrieval and processing. Here, we use the nanopublication model to make scientific assertions that were concluded from a workflow analysis of Huntington’s Disease data machine-readable, interoperable, and citable. We followed the nanopublication guidelines to semantically model our assertions as well as their provenance metadata and authorship. We demonstrate interoperability by linking nanopublication provenance to the Research Object model. These results indicate that nanopublications can provide an incentive for researchers to expose data that is interoperable and machine-readable for future use and preservation for which they can get credits for their effort. Nanopublications can have a leading role into hypotheses generation offering opportunities to produce large-scale data integration.

Notes

'Pages 5 in PDF\n - poiril'

URLhttp://dx.doi.org/10.1186/2041-1480-6-5
DOI10.1186/2041-1480-6-5
Short TitleNanopublications for exposing experimental data in the life-sciences
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