The Inferelator: an algorithm for learning parsimonious regulatory networks from systems-biology data sets de novo

Richard Bonneau(Courant Institute of Mathematical Sciences), David J. Reiss(Institute for Systems Biology), Paul Shannon(Institute for Systems Biology), Marc T. Facciotti(Institute for Systems Biology), Leroy Hood(Institute for Systems Biology), Nitin S. Baliga(Institute for Systems Biology), Vésteinn Thórsson(Institute for Systems Biology)
Genome biology
May 10, 2006
Cited by 545Open Access
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Abstract

We present a method (the Inferelator) for deriving genome-wide transcriptional regulatory interactions, and apply the method to predict a large portion of the regulatory network of the archaeon Halobacterium NRC-1. The Inferelator uses regression and variable selection to identify transcriptional influences on genes based on the integration of genome annotation and expression data. The learned network successfully predicted Halobacterium's global expression under novel perturbations with predictive power similar to that seen over training data. Several specific regulatory predictions were experimentally tested and verified.


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