Literature DB >> 15237224

An integrative genomics approach to the reconstruction of gene networks in segregating populations.

J Zhu1, P Y Lum, J Lamb, D GuhaThakurta, S W Edwards, R Thieringer, J P Berger, M S Wu, J Thompson, A B Sachs, E E Schadt.   

Abstract

The reconstruction of genetic networks in mammalian systems is one of the primary goals in biological research, especially as such reconstructions relate to elucidating not only common, polygenic human diseases, but living systems more generally. Here we propose a novel gene network reconstruction algorithm, derived from classic Bayesian network methods, that utilizes naturally occurring genetic variations as a source of perturbations to elucidate the network. This algorithm incorporates relative transcript abundance and genotypic data from segregating populations by employing a generalized scoring function of maximum likelihood commonly used in Bayesian network reconstruction problems. The utility of this novel algorithm is demonstrated via application to liver gene expression data from a segregating mouse population. We demonstrate that the network derived from these data using our novel network reconstruction algorithm is able to capture causal associations between genes that result in increased predictive power, compared to more classically reconstructed networks derived from the same data. Copyright 2004 S. Karger AG, Basel

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Year:  2004        PMID: 15237224     DOI: 10.1159/000078209

Source DB:  PubMed          Journal:  Cytogenet Genome Res        ISSN: 1424-8581            Impact factor:   1.636


  111 in total

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