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<title>Finding transcriptional regulatory networks from gene expression data</title>
<link>http://www.scientistsolutions.com/t9224-finding+transcriptional+regulatory+networks+from+gene+expression+data.html</link>
<description> Life Science Discussion</description>
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<title>Finding transcriptional regulatory networks from gene expression data</title>
<link>http://www.scientistsolutions.com/t9224-finding+transcriptional+regulatory+networks+from+gene+expression+data.html</link>
<description><![CDATA[I have a list of close to 1000 differentially expressed genes from an experiment.  I am wondering if there is an approach that will allow me to discern whether some of this differential expression is due to one or a few transcription factors.  Does anybody know of such an approach?  By the way, I am working in human cells.<br />Thanks]]></description>
<pubDate>Wed, 25 Feb 2009 15:17:21 GMT</pubDate>
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