AliBaba: PubMed as a graph
Open Access
- 26 July 2006
- journal article
- research article
- Published by Oxford University Press (OUP) in Bioinformatics
- Vol. 22 (19) , 2444-2445
- https://doi.org/10.1093/bioinformatics/btl408
Abstract
The biomedical literature contains a wealth of information on associations between many different types of objects, such as protein–protein interactions, gene–disease associations and subcellular locations of proteins. When searching such information using conventional search engines, e.g. PubMed, users see the data only one-abstract at a time and ‘hidden’ in natural language text. AliBaba is an interactive tool for graphical summarization of search results. It parses the set of abstracts that fit a PubMed query and presents extracted information on biomedical objects and their relationships as a graphical network. AliBaba extracts associations between cells, diseases, drugs, proteins, species and tissues. Several filter options allow for a more focused search. Thus, researchers can grasp complex networks described in various articles at a glance. Availability: Contact:hakenberg@informatik.hu-berlin.deKeywords
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