Abstract

UniProt Knowledgebase (UniProtKB) is a publicly available database with access to a vast amount of protein sequence and functional information. To widen the scope of the publications associated with a protein entry, UniProt has introduced the computationally mapped additional bibliography section, which includes literature collected from external sources. In this article, we describe a text mining system, eGenPub, which selects articles that are 'about' specific proteins and allows automatic identification of additional bibliography for given UniProt protein entries. Focusing on plant proteins initially, eGenPub utilizes a gene normalization tool called pGenN, and a trained support vector machine model, which achieves a precision of 95.3%, to predict whether an article, based on its abstract, should be linked to a given UniProt entry. We have conducted a full-scale PubMed processing using eGenPub for eight common plant species. Altogether, 9025 articles are identified as relevant bibliography for 4752 UniProt entries, among which 5252 are additional papers not in the existing publication section. These newly computationally mapped additional bibliography via eGenPub is being integrated in the UniProt production pipeline, and can be accessed via the UniProtKB protein entry publication view.

Keywords

UniProtCentralityComputer scienceInformation retrievalBibliographyWorld Wide WebData scienceLibrary scienceBiology

MeSH Terms

Data MiningDatabasesBibliographicDatabasesProteinPlant ProteinsPlants

Affiliated Institutions

Related Publications

Publication Info

Year
2017
Type
article
Volume
2017
Citations
8
Access
Closed

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

8
OpenAlex
0
Influential
7
CrossRef

Cite This

Ruoyao Ding, Emmanuel Boutet, Damien Lieberherr et al. (2017). eGenPub, a text mining system for extending computationally mapped bibliography for UniProt Knowledgebase by capturing centrality. Database , 2017 . https://doi.org/10.1093/database/bax081

Identifiers

DOI
10.1093/database/bax081
PMID
29220476
PMCID
PMC5691349

Data Quality

Data completeness: 90%