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Article
Nature 462, 65-70 (5 November 2009) | doi:10.1038/nature08531; Received 21 July 2009; Accepted 22 September 2009
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Combinatorial binding predicts spatio-temporal cis-regulatory activity
Robert P. Zinzen1,2, Charles Girardot1,2, Julien Gagneur1,2, Martina Braun1 & Eileen E. M. Furlong1
- European Molecular Biology Laboratory, D-69117 Heidelberg, Germany
- These authors contributed equally to this work.
Correspondence to: Eileen E. M. Furlong1 Correspondence and requests for materials should be addressed to E.E.M.F. (Email: furlong@embl.de).
Abstract
Development requires the establishment of precise patterns of gene expression, which are primarily controlled by transcription factors binding to cis-regulatory modules. Although transcription factor occupancy can now be identified at genome-wide scales, decoding this regulatory landscape remains a daunting challenge. Here we used a novel approach to predict spatio-temporal cis-regulatory activity based only on in vivo transcription factor binding and enhancer activity data. We generated a high-resolution atlas of cis-regulatory modules describing their temporal and combinatorial occupancy during Drosophila mesoderm development. The binding profiles of cis-regulatory modules with characterized expression were used to train support vector machines to predict five spatio-temporal expression patterns. In vivo transgenic reporter assays demonstrate the high accuracy of these predictions and reveal an unanticipated plasticity in transcription factor binding leading to similar expression. This data-driven approach does not require previous knowledge of transcription factor sequence affinity, function or expression, making it widely applicable.
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