About

Log in?

DTU users get better search results including licensed content and discounts on order fees.

Anyone can log in and get personalized features such as favorites, tags and feeds.

Log in as DTU user Log in as non-DTU user No thanks

DTU Findit

Conference paper · Journal article

Literature classification for semi-automated updating of biological knowledgebases

From

University of Copenhagen1

Technical University of Denmark2

Department of Applied Mathematics and Computer Science, Technical University of Denmark3

Boston University4

Background: As the output of biological assays increase in resolution and volume, the body of specialized biological data, such as functional annotations of gene and protein sequences, enables extraction of higher-level knowledge needed for practical application in bioinformatics. Whereas common types of biological data, such as sequence data, are extensively stored in biological databases, functional annotations, such as immunological epitopes, are found primarily in semi-structured formats or free text embedded in primary scientific literature.

Results: We defined and applied a machine learning approach for literature classification to support updating of TANTIGEN, a knowledgebase of tumor T-cell antigens. Abstracts from PubMed were downloaded and classified as either "relevant" or "irrelevant" for database update. Training and five-fold cross-validation of a k-NN classifier on 310 abstracts yielded classification accuracy of 0.95, thus showing significant value in support of data extraction from the literature.

Conclusion: We here propose a conceptual framework for semi-automated extraction of epitope data embedded in scientific literature using principles from text mining and machine learning. The addition of such data will aid in the transition of biological databases to knowledgebases.

Language: English
Publisher: BioMed Central
Year: 2013
Pages: S14
Proceedings: Asia Pacific Bioinformatics Network (APBioNet) Twelfth International Conference on Bioinformatics (InCoB2013)
ISSN: 14712164
Types: Conference paper and Journal article
DOI: 10.1186/1471-2164-14-S5-S14
ORCIDs: 0000-0002-1966-3205

DTU users get better search results including licensed content and discounts on order fees.

Log in as DTU user

Access

Analysis