Expression Proteomics Predicts Loss of RXR-γ during Progression of Epithelial Ovarian Cancer

Samant, Rajeev ; Kalra, Rajkumar S. ; Bapat, Sharmila A. (2013) Expression Proteomics Predicts Loss of RXR-γ during Progression of Epithelial Ovarian Cancer PLoS One, 8 (8). e70398. ISSN 1932-6203

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Official URL: http://doi.org/10.1371/journal.pone.0070398

Related URL: http://dx.doi.org/10.1371/journal.pone.0070398

Abstract

The process of cellular transformation involves cascades of molecular changes that are modulated through altered epigenetic, transcription, post-translational and protein regulatory networks. Thus, identification of transformation-associated protein alterations can provide an insight into major regulatory pathways activated during disease progression. In the present protein expression profiling approach, we identified differential sets of proteins in a two-dimensional gel electrophoresis screen of a serous ovarian adenocarcinoma progression model. Function-based categorization of the proteins exclusively associated with pre-transformed cells identified four cellular processes of which RXR-γ is known to modulate cellular differentiation and apoptosis. We thus probed the functional relevance of RXR-γ expression and signaling in these two pathways during tumor progression. RXR-γ expression was observed to modulate cellular differentiation and apoptosis in steady-state pre-transformed cells. Interestingly, retinoid treatment was found to enhance RXR-γ expression in transformed cells and sensitize them towards apoptosis in vitro, and also reduce growth of xenografts derived from transformed cells. Our findings emphasize that loss of RXR-γ levels appears to provide mechanistic benefits to transformed cells towards the acquisition of resistance to apoptosis hallmark of cancer, while effective retinoid treatment may present a viable approach towards sensitization of tumor cells to apoptosis through induction of RXR-γ expression. Figures

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