| Literature DB >> 18552845 |
Jun Zhu1, Bin Zhang, Erin N Smith, Becky Drees, Rachel B Brem, Leonid Kruglyak, Roger E Bumgarner, Eric E Schadt.
Abstract
A key goal of biology is to construct networks that predict complex system behavior. We combine multiple types of molecular data, including genotypic, expression, transcription factor binding site (TFBS), and protein-protein interaction (PPI) data previously generated from a number of yeast experiments, in order to reconstruct causal gene networks. Networks based on different types of data are compared using metrics devised to assess the predictive power of a network. We show that a network reconstructed by integrating genotypic, TFBS and PPI data is the most predictive. This network is used to predict causal regulators responsible for hot spots of gene expression activity in a segregating yeast population. We also show that the network can elucidate the mechanisms by which causal regulators give rise to larger-scale changes in gene expression activity. We then prospectively validate predictions, providing direct experimental evidence that predictive networks can be constructed by integrating multiple, appropriate data types.Entities:
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Year: 2008 PMID: 18552845 PMCID: PMC2573859 DOI: 10.1038/ng.167
Source DB: PubMed Journal: Nat Genet ISSN: 1061-4036 Impact factor: 38.330