Literature DB >> 19723642

Candidate biomarkers of response to an experimental cancer drug identified through a large-scale RNA interference genetic screen.

Jasper Mullenders1, Wolfgang von der Saal, Miranda M W van Dongen, Ulrike Reiff, Rogier van Willigen, Roderick L Beijersbergen, Georg Tiefenthaler, Christian Klein, René Bernards.   

Abstract

PURPOSE: A major impediment in the optimal selection of cancer patients for the most effective therapy is the lack of suitable biomarkers that foretell the response of a patient to a given drug. In the present study, we have used large-scale RNA interference-based genetic screens to find candidate biomarkers of resistance to a new acyl sulfonamide derivative, R3200. This compound inhibits the proliferation of tumor cells in vitro and in vivo, but its mechanism of action is unknown. EXPERIMENTAL
DESIGN: We used a large-scale RNA interference genetic screen to identify modulators of the efficacy of R3200. We searched for genes whose suppression in an in vitro cell system could cause resistance to the anticancer effects of R3200.
RESULTS: We report here that knockdown of either RBX1 or DDB1 causes resistance to the anticancer effects of R3200, raising the possibility that these two genes may have utility as biomarkers of response to this drug in a clinical setting. Interestingly, both RBX1 and DDB1 are part of an E3 ubiquitin ligase complex.
CONCLUSIONS: We propose that suppression of the activity of a RBX1 and DDB1-containing E3 ligase complex leads to the stabilization of certain proteins, the increased abundance of which is in turn responsible for resistance to R3200. Moreover, our data suggest that RBX1 and DDB1 could potentially be developed into biomarkers of resistance to acyl sulfonamide-based cancer drugs. This will require clinical validation in a series of patients treated with R3200.

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Year:  2009        PMID: 19723642     DOI: 10.1158/1078-0432.CCR-09-0261

Source DB:  PubMed          Journal:  Clin Cancer Res        ISSN: 1078-0432            Impact factor:   12.531


  6 in total

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4.  Genome-wide functional genomic and transcriptomic analyses for genes regulating sensitivity to vorinostat.

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6.  FusionHub: A unified web platform for annotation and visualization of gene fusion events in human cancer.

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  6 in total

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