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Discovering functional relationships between RNA expression and chemotherapeutic susceptibility using relevance networks
Journal Article
Reference:
A. J. Butte, P. Tamayo, D. Slonim, T. R. Golub, I. S. Kohane. Proceedings of the National Academy of Sciences, PNAS, 97, 22, 12182-6. Published in 2000.
Abstract:

In an effort to find gene regulatory networks and clusters of genes that affect cancer susceptibility to anticancer agents, we joined a database with baseline expression levels of 7,245 genes measured by using microarrays in 60 cancer cell lines, to a database with the amounts of 5,084 anticancer agents needed to inhibit growth of those same cell lines. Comprehensive pair-wise correlations were calculated between gene expression and measures of agent susceptibility. Associations weaker than a threshold strength were removed, leaving networks of highly correlated genes and agents called relevance networks. Hypotheses for potential single-gene determinants of anticancer agent susceptibility were constructed. The effect of random chance in the large number of calculations performed was empirically determined by repeated random permutation testing; only associations stronger than those seen in multiply permuted data were used in clustering. We discuss the advantages of this methodology over alternative approaches, such as phylogenetic-type tree clustering and self-organizing maps.

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Information last updated: Mon Feb 11 2008
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Stanford School of Medicine