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Journal Article Finding the Evidence for Protein-Protein Interactions from PubMed Abstracts
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Authors
Hyun Chul Jang, Jae Soo Lim, Joon Ho Lim, Soo Jun Park, Kyu Chul Lee, Seon Hee Park
Issue Date
2006-07
Citation
Bioinformatics, v.22, no.14, pp.e220-e226
ISSN
1367-4803
Publisher
Oxford Univ. Press
Language
English
Type
Journal Article
DOI
https://dx.doi.org/10.1093/bioinformatics/btl203
Abstract
Motivation: Protein-protein interactions play critical roles in biological processes, and many biologists try to find or to predict crucial information concerning these interactions. Before verifying interactions in biological laboratory work, validating them from previous research is necessary. Although many efforts have been made to create databases that store verified information in a structured form, much interaction information still remains as unstructured text. As the amount of new publications has increased rapidly, a large amount of research has sought to extract interactions from the text automatically. However, there remain various difficulties associated with the process of applying automatically generated results into manually annotated databases. For interactions that are not found in manually stored databases, researchers attempt to search for abstracts or full papers. Results: As a result of a search for two proteins, PubMed frequently returns hundreds of abstracts. In this paper, a method is introduced that validates protein-protein interactions from PubMed abstracts. A query is generated from two given proteins automatically and abstracts are then collected from PubMed. Following this, target proteins and their synonyms are recognized and their interaction information is extracted from the collection. It was found that 67.37% of the interactions from DIP-PPI corpus were found from the PubMed abstracts and 87.37% of interactions were found from the given full texts. © 2006 Oxford University Press.
KSP Keywords
Biological Processes, Laboratory work, Structured form, Unstructured text, interaction information, protein-protein interaction