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Tanya Z. Berardini

Researcher at Carnegie Institution for Science

Publications -  60
Citations -  18048

Tanya Z. Berardini is an academic researcher from Carnegie Institution for Science. The author has contributed to research in topics: Ontology (information science) & The Arabidopsis Information Resource. The author has an hindex of 33, co-authored 57 publications receiving 14620 citations. Previous affiliations of Tanya Z. Berardini include University of Manchester & Wellcome Trust.

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The Gene Ontology (GO) database and informatics resource.

Midori A. Harris, +96 more
TL;DR: The Gene Ontology (GO) project as discussed by the authors provides structured, controlled vocabularies and classifications that cover several domains of molecular and cellular biology and are freely available for community use in the annotation of genes, gene products and sequences.
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The Gene Ontology Resource: 20 years and still GOing strong

Seth Carbon, +192 more
TL;DR: GO-CAM, a new framework for representing gene function that is more expressive than standard GO annotations, has been released, and users can now explore the growing repository of these models.
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The Gene Ontology resource: enriching a GOld mine

Seth Carbon, +179 more
TL;DR: A historical archive covering the past 15 years of GO data with a consistent format and file structure for both the ontology and annotations is made available to maintain consistency with other ontologies.
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The Arabidopsis Information Resource (TAIR): improved gene annotation and new tools

TL;DR: Recent developments include several new genome releases, progress on functional annotation of the genome and the release of several new tools including Textpresso for Arabidopsis which provides the capability to carry out full text searches on a large body of research literature.
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The Arabidopsis Information Resource (TAIR): gene structure and function annotation.

TL;DR: A combination of manual and computational methods were used to generate this release, which contains 27 029 protein-coding genes, 3889 pseudogenes or transposable elements and 1123 ncRNAs (32 041 genes in all, 37 019 gene models).