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Article abstract
REFERENCE
Generating Genome-Scale Candidate Gene Lists for Pharmacogenomics.
Hansen N, Brunak S, Altman R.
Clin Pharmacol Ther. Apr 15, 2009. [Epub ahead of print]
1Center for Biological Sequence Analysis, Department of Systems Biology,
Technical University of Denmark, DK-2800 Lyngby, Denmark
2Stanford University, 318 Campus Drive S172, CA 94304, United states
PMID: 19369935
ABSTRACT
A critical task in pharmacogenomics is identifying genes that may be important
modulators of drug response. High-throughput experimental methods are often
plagued by false positives and do not take advantage of existing knowledge.
Candidate gene lists can usefully summarize existing knowledge, but they are
expensive to generate manually and may therefore have incomplete coverage. We
have developed a method that ranks 12,460 genes in the human genome on the
basis of their potential relevance to a specific query drug and its putative
indications. Our method uses known gene-drug interactions, networks of
gene-gene interactions, and available measures of drug-drug similarity. It
ranks genes by building a local network of known interactions and assessing the
similarity of the query drug (by both structure and indication) with drugs that
interact with gene products in the local network. In a comprehensive benchmark,
our method achieves an overall area under the curve of 0.82. To showcase our
method, we found novel gene candidates for warfarin, gefitinib, carboplatin,
and gemcitabine, and we provide the molecular hypotheses for these
predictions.Clinical Pharmacology & Therapeutics (2009); advance online
publication 15 April 2009. doi:10.1038/clpt.2009.42.
CORRESPONDENCE
Søren Brunak,
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