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RegNetB: Predicting Relevant Regulator-Gene Relationships in Localized Prostate Tumor Samples

By Angel Alvarez and Peter J Woolf
Topics: Research Article
Publisher: BioMed Central
OAI identifier: oai:pubmedcentral.nih.gov:3128037
Provided by: PubMed Central

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