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Evaluation and integration of 49 genome-wide experiments and the prediction of previously unknown obesity-related genes.


ABSTRACT:

Motivation

Genome-wide experiments only rarely show resounding success in yielding genes associated with complex polygenic disorders. We evaluate 49 obesity-related genome-wide experiments with publicly available findings including microarray, genetics, proteomics and gene knock-down from human, mouse, rat and worm, in terms of their ability to rediscover a comprehensive set of genes previously found to be causally associated or having variants associated with obesity.

Results

Individual experiments show poor predictive ability for rediscovering known obesity-associated genes. We show that intersecting the results of experiments significantly improves the sensitivity, specificity and precision of the prediction of obesity-associated genes. We create an integrative model that statistically significantly outperforms all 49 individual genome-wide experiments. We find that genes known to be associated with obesity are significantly implicated in more obesity-related experiments and use this to provide a list of genes that we predict to have the highest likelihood of association for obesity. The approach described here can include any number and type of genome-wide experiments and might be useful for other complex polygenic disorders as well.

SUBMITTER: English SB 

PROVIDER: S-EPMC2839901 | biostudies-literature | 2007 Nov

REPOSITORIES: biostudies-literature

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Publications

Evaluation and integration of 49 genome-wide experiments and the prediction of previously unknown obesity-related genes.

English Sangeeta B SB   Butte Atul J AJ  

Bioinformatics (Oxford, England) 20071005 21


<h4>Motivation</h4>Genome-wide experiments only rarely show resounding success in yielding genes associated with complex polygenic disorders. We evaluate 49 obesity-related genome-wide experiments with publicly available findings including microarray, genetics, proteomics and gene knock-down from human, mouse, rat and worm, in terms of their ability to rediscover a comprehensive set of genes previously found to be causally associated or having variants associated with obesity.<h4>Results</h4>Ind  ...[more]

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