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HGF/c-Met axis drives cancer aggressiveness in the neo-adjuvant setting of ovarian cancer

Ovarian cancer is the most lethal gynecologic malignancy. Recently, NACT (Neo Adjuvant Chemotherapy) has been tested as alternative approach for the management of ovarian cancer patients. A biological predictor helpful in selecting patients for NACT would be desirable. This study was aimed at identi...

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Autores principales: Mariani, Marisa, McHugh, Mark, Petrillo, Marco, Sieber, Steven, He, Shiquan, Andreoli, Mirko, Wu, Zheyang, Fiedler, Paul, Scambia, Giovanni, Shahabi, Shohreh, Ferlini, Cristiano
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Impact Journals LLC 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4148105/
https://www.ncbi.nlm.nih.gov/pubmed/24952592
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author Mariani, Marisa
McHugh, Mark
Petrillo, Marco
Sieber, Steven
He, Shiquan
Andreoli, Mirko
Wu, Zheyang
Fiedler, Paul
Scambia, Giovanni
Shahabi, Shohreh
Ferlini, Cristiano
author_facet Mariani, Marisa
McHugh, Mark
Petrillo, Marco
Sieber, Steven
He, Shiquan
Andreoli, Mirko
Wu, Zheyang
Fiedler, Paul
Scambia, Giovanni
Shahabi, Shohreh
Ferlini, Cristiano
author_sort Mariani, Marisa
collection PubMed
description Ovarian cancer is the most lethal gynecologic malignancy. Recently, NACT (Neo Adjuvant Chemotherapy) has been tested as alternative approach for the management of ovarian cancer patients. A biological predictor helpful in selecting patients for NACT would be desirable. This study was aimed at identifying actionable mechanisms of resistance to NACT. Expression of a panel of microRNAs was screened in a discovery set of 85 patients. Analysis of the potential targets was conducted in the same RNAs by calculating significant correlations between microRNAs and genes. Quantitative fluorescent immunohistochemistry was employed in a validation set of 109 patients. MiR-193a-5p was significantly overexpressed in the NACT setting. Analysis of its potential targets demonstrated that this microRNA is also significantly correlated with HGF and MET genes. Analysis of protein expression in samples taken before and after NACT demonstrated that both HGF and c-Met are increased after NACT. Patients who relapse shortly after NACT exhibited the highest relative basal expression of both HGF and c-Met, while the opposite phenomenon was observed in the best responders. Mir-193a-5p, HGF and c-Met expression may help select eligible patients for this modality of treatment. Moreover, inhibitors of this pathway may improve the efficacy of NACT.
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spelling pubmed-41481052014-08-29 HGF/c-Met axis drives cancer aggressiveness in the neo-adjuvant setting of ovarian cancer Mariani, Marisa McHugh, Mark Petrillo, Marco Sieber, Steven He, Shiquan Andreoli, Mirko Wu, Zheyang Fiedler, Paul Scambia, Giovanni Shahabi, Shohreh Ferlini, Cristiano Oncotarget Research Paper Ovarian cancer is the most lethal gynecologic malignancy. Recently, NACT (Neo Adjuvant Chemotherapy) has been tested as alternative approach for the management of ovarian cancer patients. A biological predictor helpful in selecting patients for NACT would be desirable. This study was aimed at identifying actionable mechanisms of resistance to NACT. Expression of a panel of microRNAs was screened in a discovery set of 85 patients. Analysis of the potential targets was conducted in the same RNAs by calculating significant correlations between microRNAs and genes. Quantitative fluorescent immunohistochemistry was employed in a validation set of 109 patients. MiR-193a-5p was significantly overexpressed in the NACT setting. Analysis of its potential targets demonstrated that this microRNA is also significantly correlated with HGF and MET genes. Analysis of protein expression in samples taken before and after NACT demonstrated that both HGF and c-Met are increased after NACT. Patients who relapse shortly after NACT exhibited the highest relative basal expression of both HGF and c-Met, while the opposite phenomenon was observed in the best responders. Mir-193a-5p, HGF and c-Met expression may help select eligible patients for this modality of treatment. Moreover, inhibitors of this pathway may improve the efficacy of NACT. Impact Journals LLC 2014-06-01 /pmc/articles/PMC4148105/ /pubmed/24952592 Text en Copyright: © 2014 Mariani et al. http://creativecommons.org/licenses/by/2.5/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Paper
Mariani, Marisa
McHugh, Mark
Petrillo, Marco
Sieber, Steven
He, Shiquan
Andreoli, Mirko
Wu, Zheyang
Fiedler, Paul
Scambia, Giovanni
Shahabi, Shohreh
Ferlini, Cristiano
HGF/c-Met axis drives cancer aggressiveness in the neo-adjuvant setting of ovarian cancer
title HGF/c-Met axis drives cancer aggressiveness in the neo-adjuvant setting of ovarian cancer
title_full HGF/c-Met axis drives cancer aggressiveness in the neo-adjuvant setting of ovarian cancer
title_fullStr HGF/c-Met axis drives cancer aggressiveness in the neo-adjuvant setting of ovarian cancer
title_full_unstemmed HGF/c-Met axis drives cancer aggressiveness in the neo-adjuvant setting of ovarian cancer
title_short HGF/c-Met axis drives cancer aggressiveness in the neo-adjuvant setting of ovarian cancer
title_sort hgf/c-met axis drives cancer aggressiveness in the neo-adjuvant setting of ovarian cancer
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4148105/
https://www.ncbi.nlm.nih.gov/pubmed/24952592
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