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Establishment of a pancreatic adenocarcinoma molecular gradient (PAMG) that predicts the clinical outcome of pancreatic cancer

BACKGROUND: A significant gap in pancreatic ductal adenocarcinoma (PDAC) patient's care is the lack of molecular parameters characterizing tumours and allowing a personalized treatment. METHODS: Patient-derived xenografts (PDX) were obtained from 76 consecutive PDAC and classified according to...

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Autores principales: Nicolle, Rémy, Blum, Yuna, Duconseil, Pauline, Vanbrugghe, Charles, Brandone, Nicolas, Poizat, Flora, Roques, Julie, Bigonnet, Martin, Gayet, Odile, Rubis, Marion, Elarouci, Nabila, Armenoult, Lucile, Ayadi, Mira, de Reyniès, Aurélien, Giovannini, Marc, Grandval, Philippe, Garcia, Stephane, Canivet, Cindy, Cros, Jérôme, Bournet, Barbara, Moutardier, Vincent, Gilabert, Marine, Iovanna, Juan, Dusetti, Nelson, Buscail, Louis
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7334821/
https://www.ncbi.nlm.nih.gov/pubmed/32629389
http://dx.doi.org/10.1016/j.ebiom.2020.102858
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author Nicolle, Rémy
Blum, Yuna
Duconseil, Pauline
Vanbrugghe, Charles
Brandone, Nicolas
Poizat, Flora
Roques, Julie
Bigonnet, Martin
Gayet, Odile
Rubis, Marion
Elarouci, Nabila
Armenoult, Lucile
Ayadi, Mira
de Reyniès, Aurélien
Giovannini, Marc
Grandval, Philippe
Garcia, Stephane
Canivet, Cindy
Cros, Jérôme
Bournet, Barbara
Moutardier, Vincent
Gilabert, Marine
Iovanna, Juan
Dusetti, Nelson
Buscail, Louis
author_facet Nicolle, Rémy
Blum, Yuna
Duconseil, Pauline
Vanbrugghe, Charles
Brandone, Nicolas
Poizat, Flora
Roques, Julie
Bigonnet, Martin
Gayet, Odile
Rubis, Marion
Elarouci, Nabila
Armenoult, Lucile
Ayadi, Mira
de Reyniès, Aurélien
Giovannini, Marc
Grandval, Philippe
Garcia, Stephane
Canivet, Cindy
Cros, Jérôme
Bournet, Barbara
Moutardier, Vincent
Gilabert, Marine
Iovanna, Juan
Dusetti, Nelson
Buscail, Louis
author_sort Nicolle, Rémy
collection PubMed
description BACKGROUND: A significant gap in pancreatic ductal adenocarcinoma (PDAC) patient's care is the lack of molecular parameters characterizing tumours and allowing a personalized treatment. METHODS: Patient-derived xenografts (PDX) were obtained from 76 consecutive PDAC and classified according to their histology into five groups. A PDAC molecular gradient (PAMG) was constructed from PDX transcriptomes recapitulating the five histological groups along a continuous gradient. The prognostic and predictive value for PMAG was evaluated in: i/ two independent series (n = 598) of resected tumours; ii/ 60 advanced tumours obtained by diagnostic EUS-guided biopsy needle flushing and iii/ on 28 biopsies from mFOLFIRINOX treated metastatic tumours. FINDINGS: A unique transcriptomic signature (PAGM) was generated with significant and independent prognostic value. PAMG significantly improves the characterization of PDAC heterogeneity compared to non-overlapping classifications as validated in 4 independent series of tumours (e.g. 308 consecutive resected PDAC, uHR=0.321 95% CI [0.207–0.5] and 60 locally-advanced or metastatic PDAC, uHR=0.308 95% CI [0.113–0.836]). The PAMG signature is also associated with progression under mFOLFIRINOX treatment (Pearson correlation to tumour response: -0.67, p-value < 0.001). INTERPRETATION: PAMG unify all PDAC pre-existing classifications inducing a shift in the actual paradigm of binary classifications towards a better characterization in a gradient. FUNDING: Project funding was provided by INCa (Grants number 2018–078 and 2018–079, BACAP BCB INCa_6294), Canceropole PACA, DGOS (labellisation SIRIC), Amidex Foundation, Fondation de France, INSERM and Ligue Contre le Cancer.
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spelling pubmed-73348212020-07-07 Establishment of a pancreatic adenocarcinoma molecular gradient (PAMG) that predicts the clinical outcome of pancreatic cancer Nicolle, Rémy Blum, Yuna Duconseil, Pauline Vanbrugghe, Charles Brandone, Nicolas Poizat, Flora Roques, Julie Bigonnet, Martin Gayet, Odile Rubis, Marion Elarouci, Nabila Armenoult, Lucile Ayadi, Mira de Reyniès, Aurélien Giovannini, Marc Grandval, Philippe Garcia, Stephane Canivet, Cindy Cros, Jérôme Bournet, Barbara Moutardier, Vincent Gilabert, Marine Iovanna, Juan Dusetti, Nelson Buscail, Louis EBioMedicine Research paper BACKGROUND: A significant gap in pancreatic ductal adenocarcinoma (PDAC) patient's care is the lack of molecular parameters characterizing tumours and allowing a personalized treatment. METHODS: Patient-derived xenografts (PDX) were obtained from 76 consecutive PDAC and classified according to their histology into five groups. A PDAC molecular gradient (PAMG) was constructed from PDX transcriptomes recapitulating the five histological groups along a continuous gradient. The prognostic and predictive value for PMAG was evaluated in: i/ two independent series (n = 598) of resected tumours; ii/ 60 advanced tumours obtained by diagnostic EUS-guided biopsy needle flushing and iii/ on 28 biopsies from mFOLFIRINOX treated metastatic tumours. FINDINGS: A unique transcriptomic signature (PAGM) was generated with significant and independent prognostic value. PAMG significantly improves the characterization of PDAC heterogeneity compared to non-overlapping classifications as validated in 4 independent series of tumours (e.g. 308 consecutive resected PDAC, uHR=0.321 95% CI [0.207–0.5] and 60 locally-advanced or metastatic PDAC, uHR=0.308 95% CI [0.113–0.836]). The PAMG signature is also associated with progression under mFOLFIRINOX treatment (Pearson correlation to tumour response: -0.67, p-value < 0.001). INTERPRETATION: PAMG unify all PDAC pre-existing classifications inducing a shift in the actual paradigm of binary classifications towards a better characterization in a gradient. FUNDING: Project funding was provided by INCa (Grants number 2018–078 and 2018–079, BACAP BCB INCa_6294), Canceropole PACA, DGOS (labellisation SIRIC), Amidex Foundation, Fondation de France, INSERM and Ligue Contre le Cancer. Elsevier 2020-07-03 /pmc/articles/PMC7334821/ /pubmed/32629389 http://dx.doi.org/10.1016/j.ebiom.2020.102858 Text en © 2020 The Author(s) http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Research paper
Nicolle, Rémy
Blum, Yuna
Duconseil, Pauline
Vanbrugghe, Charles
Brandone, Nicolas
Poizat, Flora
Roques, Julie
Bigonnet, Martin
Gayet, Odile
Rubis, Marion
Elarouci, Nabila
Armenoult, Lucile
Ayadi, Mira
de Reyniès, Aurélien
Giovannini, Marc
Grandval, Philippe
Garcia, Stephane
Canivet, Cindy
Cros, Jérôme
Bournet, Barbara
Moutardier, Vincent
Gilabert, Marine
Iovanna, Juan
Dusetti, Nelson
Buscail, Louis
Establishment of a pancreatic adenocarcinoma molecular gradient (PAMG) that predicts the clinical outcome of pancreatic cancer
title Establishment of a pancreatic adenocarcinoma molecular gradient (PAMG) that predicts the clinical outcome of pancreatic cancer
title_full Establishment of a pancreatic adenocarcinoma molecular gradient (PAMG) that predicts the clinical outcome of pancreatic cancer
title_fullStr Establishment of a pancreatic adenocarcinoma molecular gradient (PAMG) that predicts the clinical outcome of pancreatic cancer
title_full_unstemmed Establishment of a pancreatic adenocarcinoma molecular gradient (PAMG) that predicts the clinical outcome of pancreatic cancer
title_short Establishment of a pancreatic adenocarcinoma molecular gradient (PAMG) that predicts the clinical outcome of pancreatic cancer
title_sort establishment of a pancreatic adenocarcinoma molecular gradient (pamg) that predicts the clinical outcome of pancreatic cancer
topic Research paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7334821/
https://www.ncbi.nlm.nih.gov/pubmed/32629389
http://dx.doi.org/10.1016/j.ebiom.2020.102858
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