Abstract | MOTIVATION: RESULTS: We perform integrative analysis of the 16 DGAP data sets that span multiple tissues, conditions, array types, laboratories, species, genetic backgrounds and study designs. For each data set, we identify differentially expressed genes compared with control. Then, for the combined data, we rank genes according to the frequency with which they were found to be statistically significant across data sets. This analysis reveals RetSat as a widely shared component of mechanisms involved in insulin resistance and sensitivity and adds to the growing importance of the retinol pathway in diabetes, adipogenesis and insulin resistance. Top candidates obtained from our analysis have been confirmed in recent laboratory studies.
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Authors | Peter J Park, Sek Won Kong, Toma Tebaldi, Weil R Lai, Simon Kasif, Isaac S Kohane |
Journal | Bioinformatics (Oxford, England)
(Bioinformatics)
Vol. 25
Issue 23
Pg. 3121-7
(Dec 01 2009)
ISSN: 1367-4811 [Electronic] England |
PMID | 19786482
(Publication Type: Journal Article, Research Support, N.I.H., Extramural)
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Chemical References |
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Topics |
- Computational Biology
(methods)
- Databases, Genetic
- Diabetes Mellitus, Type 2
(genetics, metabolism)
- Gene Expression Profiling
(methods)
- Humans
- Insulin Resistance
(genetics)
- Vitamin A
(metabolism)
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