| Literature DB >> 21047206 |
Yael Garten1, Adrien Coulet, Russ B Altman.
Abstract
The biomedical literature holds our understanding of pharmacogenomics, but it is dispersed across many journals. In order to integrate our knowledge, connect important facts across publications and generate new hypotheses we must organize and encode the contents of the literature. By creating databases of structured pharmocogenomic knowledge, we can make the value of the literature much greater than the sum of the individual reports. We can, for example, generate candidate gene lists or interpret surprising hits in genome-wide association studies. Text mining automatically adds structure to the unstructured knowledge embedded in millions of publications, and recent years have seen a surge in work on biomedical text mining, some specific to pharmacogenomics literature. These methods enable extraction of specific types of information and can also provide answers to general, systemic queries. In this article, we describe the main tasks of text mining in the context of pharmacogenomics, summarize recent applications and anticipate the next phase of text mining applications.Entities:
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Year: 2010 PMID: 21047206 PMCID: PMC3035632 DOI: 10.2217/pgs.10.136
Source DB: PubMed Journal: Pharmacogenomics ISSN: 1462-2416 Impact factor: 2.533