35 results on '"Gouraud W"'
Search Results
2. Minor clone provides a reservoir for relapse in multiple myeloma
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Magrangeas, F, Avet-Loiseau, H, Gouraud, W, Lodé, L, Decaux, O, Godmer, P, Garderet, L, Voillat, L, Facon, T, Stoppa, A M, Marit, G, Hulin, C, Casassus, P, Tiab, M, Voog, E, Randriamalala, E, Anderson, K C, Moreau, P, Munshi, N C, and Minvielle, S
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- 2013
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3. Abstract P3-07-10: Triple negative breast cancer tumors subtyping by means of integrated transcriptome and proteome analyses
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Campone, M, primary, Guette, C, additional, Lasla, H, additional, Gouraud, W, additional, Guérin-Charbonnel, C, additional, and Jézéquel, P, additional
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- 2019
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4. bc-GenExMiner 3.0: new mining module computes breast cancer gene expression correlation analyses
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Jezequel, P., primary, Frenel, J.-S., additional, Campion, L., additional, Guerin-Charbonnel, C., additional, Gouraud, W., additional, Ricolleau, G., additional, and Campone, M., additional
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- 2013
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5. Minor clone provides a reservoir for relapse in multiple myeloma
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Magrangeas, F, primary, Avet-Loiseau, H, additional, Gouraud, W, additional, Lodé, L, additional, Decaux, O, additional, Godmer, P, additional, Garderet, L, additional, Voillat, L, additional, Facon, T, additional, Stoppa, A M, additional, Marit, G, additional, Hulin, C, additional, Casassus, P, additional, Tiab, M, additional, Voog, E, additional, Randriamalala, E, additional, Anderson, K C, additional, Moreau, P, additional, Munshi, N C, additional, and Minvielle, S, additional
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- 2012
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6. mTORC1 Activity Contributes to the Mcl-1 Dependence of HER2 Amplified Breast Cancer Cells.
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Campone, M., primary, Campone, M., additional, Noel, B., additional, Gouraud, W., additional, Jézéquel, P., additional, Barillé-Nion, S., additional, and Juin, P., additional
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- 2009
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7. Validation of UBE2C protein as a prognostic marker in node-positive breast cancer
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Loussouarn, D, primary, Campion, L, additional, Leclair, F, additional, Campone, M, additional, Charbonnel, C, additional, Ricolleau, G, additional, Gouraud, W, additional, Bataille, R, additional, and Jézéquel, P, additional
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- 2009
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8. Use of high-density SNP-array analysis to identify novel chromosomal abnormalities that predict survival in multiple myeloma
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Avet-Loiseau, H., primary, Munshi, N., additional, LI, C., additional, Magrangeas, F., additional, Gouraud, W., additional, Charbonnel, C., additional, Anderson, K. C., additional, Moreau, P., additional, Campion, L., additional, and Minvielle, S., additional
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- 2008
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9. Comparaison du profil d'expression génique des principales néoplasies B matures et de leurs équivalents cellulaires et anatomiques normaux: identification de gènes candidats potentiellement impliqués dans la lymphomagenèse
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Blin, N., primary, Bossard, C., additional, Harousseau, J.-L., additional, Gouraud, W., additional, Charbonnel, C., additional, Campion, L., additional, Magrangeas, F., additional, Minvielle, S., additional, and Avet-Loiseau, H., additional
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- 2007
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10. Pharmacogénomique du bortezomib: recherche de voies de signalisation impliquées dans la résistance au bortezomib
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Decaux, O., primary, Lodé, L., additional, Magrangeas, F., additional, Clément, M., additional, Charbonnel, C., additional, Gouraud, W., additional, Bataille, R., additional, Avet-Loiseau, H., additional, and Minvielle, S., additional
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- 2007
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11. Pronostic moléculaire dans le myélome multiple: l'expérience de l'IFM
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Decaux, O., primary, Lodé, L., additional, Magrangeas, F., additional, Gouraud, W., additional, Charbonnel, C., additional, Jezequel, P., additional, Moreau, P., additional, Harousseau, J.-L., additional, Bataille, R., additional, Campion, L., additional, Avet-Loiseau, H., additional, and Minvielle, S., additional
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- 2007
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12. Prognostic significance of copy-number alterations in multiple myeloma.
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Avet-Loiseau H, Li C, Magrangeas F, Gouraud W, Charbonnel C, Harousseau JL, Attal M, Marit G, Mathiot C, Facon T, Moreau P, Anderson KC, Campion L, Munshi NC, Minvielle S, Avet-Loiseau, Hervé, Li, Cheng, Magrangeas, Florence, Gouraud, Wilfried, and Charbonnel, Catherine
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- 2009
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13. Prediction of survival in multiple myeloma based on gene expression profiles reveals cell cycle and chromosomal instability signatures in high-risk patients and hyperdiploid signatures in low-risk patients: a study of the intergroup francophone du...
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Decaux O, Lodé L, Magrangeas F, Charbonnel C, Gouraud W, Jézéquel P, Attal M, Harousseau JL, Moreau P, Bataille R, Campion L, Avet-Loiseau H, and Minivielle S
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- 2008
14. Gene Expression Profiles Discriminate between Pathological Complete Response and Resistance to Neoadjuvant FEC100 in Breast Cancer
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Millour M, Charbonnel C, Florencce Magrangeas, Minvielle S, Campion L, Gouraud W, Campone M, Déporte-Féty R, Yj, Bignon, Penault-Llorca F, and Jézéquel P
15. c-Myc dependent expression of pro-apoptotic Bim renders HER2-overexpressing breast cancer cells dependent on anti-apoptotic Mcl-1
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Jézéquel Pascal, Campion Loïc, Charbonnel Catherine, Gouraud Wilfried, Gautier Fabien, Guillemin Yannis, Grau Morgan, Couriaud Cécile, Noël Bélinda, Campone Mario, Braun Frédérique, Barré Benjamin, Coqueret Olivier, Barillé-Nion Sophie, and Juin Philippe
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Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Abstract
Abstract Background Anti-apoptotic signals induced downstream of HER2 are known to contribute to the resistance to current treatments of breast cancer cells that overexpress this member of the EGFR family. Whether or not some of these signals are also involved in tumor maintenance by counteracting constitutive death signals is much less understood. To address this, we investigated what role anti- and pro-apoptotic Bcl-2 family members, key regulators of cancer cell survival, might play in the viability of HER2 overexpressing breast cancer cells. Methods We used cell lines as an in vitro model of HER2-overexpressing cells in order to evaluate how anti-apoptotic Bcl-2, Bcl-xL and Mcl-1, and pro-apoptotic Puma and Bim impact on their survival, and to investigate how the constitutive expression of these proteins is regulated. Expression of the proteins of interest was confirmed using lysates from HER2-overexpressing tumors and through analysis of publicly available RNA expression data. Results We show that the depletion of Mcl-1 is sufficient to induce apoptosis in HER2-overexpressing breast cancer cells. This Mcl-1 dependence is due to Bim expression and it directly results from oncogenic signaling, as depletion of the oncoprotein c-Myc, which occupies regions of the Bim promoter as evaluated in ChIP assays, decreases Bim levels and mitigates Mcl-1 dependence. Consistently, a reduction of c-Myc expression by inhibition of mTORC1 activity abrogates occupancy of the Bim promoter by c-Myc, decreases Bim expression and promotes tolerance to Mcl-1 depletion. Western blot analysis confirms that naïve HER2-overexpressing tumors constitutively express detectable levels of Mcl-1 and Bim, while expression data hint on enrichment for Mcl-1 transcripts in these tumors. Conclusions This work establishes that, in HER2-overexpressing tumors, it is necessary, and maybe sufficient, to therapeutically impact on the Mcl-1/Bim balance for efficient induction of cancer cell death.
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- 2011
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16. Mesenchymal-like immune-altered is the fourth robust triple-negative breast cancer molecular subtype.
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Jézéquel P, Lasla H, Gouraud W, Basseville A, Michel B, Frenel JS, Juin PP, Ben Azzouz F, and Campone M
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- Humans, Female, Biomarkers, Tumor metabolism, Middle Aged, Mesenchymal Stem Cells immunology, Mesenchymal Stem Cells metabolism, Receptors, Androgen metabolism, Gene Expression Profiling, Immune Checkpoint Inhibitors therapeutic use, Prognosis, Adult, Aged, Precision Medicine methods, Triple Negative Breast Neoplasms immunology, Triple Negative Breast Neoplasms pathology, Triple Negative Breast Neoplasms therapy, Triple Negative Breast Neoplasms genetics
- Abstract
Background: Robust molecular subtyping of triple-negative breast cancer (TNBC) is a prerequisite for the success of precision medicine. Today, there is a clear consensus on three TNBC molecular subtypes: luminal androgen receptor (LAR), basal-like immune-activated (BLIA), and basal-like immune-suppressed (BLIS). However, the debate about the robustness of other subtypes is still open., Methods: An unprecedented number (n = 1942) of TNBC patient data was collected. Microarray- and RNAseq-based cohorts were independently investigated. Unsupervised analyses were conducted using k-means consensus clustering. Clusters of patients were then functionally annotated using different approaches. Prediction of response to chemotherapy and targeted therapies, immune checkpoint blockade, and radiotherapy were also screened for each TNBC subtype., Results: Four TNBC subtypes were identified in the cohort: LAR (19.36%); mesenchymal stem-like (MSL/MES) (17.35%); BLIA (31.06%); and BLIS (32.23%). Regarding the MSL/MES subtype, we suggest renaming it to mesenchymal-like immune-altered (MLIA) to emphasize its specific histological background and nature of immune response. Treatment response prediction results show, among other things, that despite immune activation, immune checkpoint blockade is probably less or completely ineffective in MLIA, possibly caused by mesenchymal background and/or an enrichment in dysfunctional cytotoxic T lymphocytes. TNBC subtyping results were included in the bc-GenExMiner v5.0 webtool ( http://bcgenex.ico.unicancer.fr )., Conclusion: The mesenchymal TNBC subtype is characterized by an exhausted and altered immune response, and resistance to immune checkpoint inhibitors. Consensus for molecular classification of TNBC subtyping and prediction of cancer treatment responses helps usher in the era of precision medicine for TNBC patients., (© 2024. The Author(s), under exclusive licence to The Japanese Breast Cancer Society.)
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- 2024
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17. Brain Neural Progenitors are New Predictive Biomarkers for Breast Cancer Hormonotherapy.
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Basseville A, Cordier C, Ben Azzouz F, Gouraud W, Lasla H, Panloup F, Campone M, and Jézéquel P
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- Humans, Female, Gene Expression Profiling, Biomarkers, Tumor genetics, Brain metabolism, Nervous System metabolism, Tumor Microenvironment genetics, Breast Neoplasms drug therapy
- Abstract
Heterogeneity of the tumor microenvironment (TME) is one of the major causes of treatment resistance in breast cancer. Among TME components, nervous system role in clinical outcome has been underestimated. Identifying neuronal signatures associated with treatment response will help to characterize neuronal influence on tumor progression and identify new treatment targets. The search for hormonotherapy-predictive biomarkers was implemented by supervised machine learning (ML) analysis on merged transcriptomics datasets from public databases. ML-derived genes were investigated by pathway enrichment analysis, and potential gene signatures were curated by removing the variables that were not strictly nervous system specific. The predictive and prognostic abilities of the generated signatures were examined by Cox models, in the initial cohort and seven external cohorts. Generated signature performances were compared with 14 other published signatures, in both the initial and external cohorts. Underlying biological mechanisms were explored using deconvolution tools (CIBERSORTx and xCell). Our pipeline generated two nervous system-related signatures of 24 genes and 97 genes (NervSign24 and NervSign97). These signatures were prognostic and hormonotherapy-predictive, but not chemotherapy-predictive. When comparing their predictive performance with 14 published risk signatures in six hormonotherapy-treated cohorts, NervSign97 and NervSign24 were the two best performers. Pathway enrichment score and deconvolution analysis identified brain neural progenitor presence and perineural invasion as nervous system-related mechanisms positively associated with NervSign97 and poor clinical prognosis in hormonotherapy-treated patients. Transcriptomic profiling has identified two nervous system-related signatures that were validated in clinical samples as hormonotherapy-predictive signatures, meriting further exploration of neuronal component involvement in tumor progression., Significance: The development of personalized and precision medicine is the future of cancer therapy. With only two gene expression signatures approved by FDA for breast cancer, we are in need of new ones that can reliably stratify patients for optimal treatment. This study provides two hormonotherapy-predictive and prognostic signatures that are related to nervous system in TME. It highlights tumor neuronal components as potential new targets for breast cancer therapy., Competing Interests: A. Basseville reports grants from European Commission during the conduct of the study. C. Cordier reports grants from la Ligue Nationale Contre le Cancer during the conduct of the study. M. Campone reports grants from AstraZeneca, Novartis, Abbvie, Sanofi, Lilly, Pfizer, Sandoz, Accord, G1 Therapeutics, Seagen, Gilead, Daiichi-Sankyo, Servier, Pet-Therapy, and Roche outside the submitted work. No disclosures were reported by the other authors., (© 2022 The Authors; Published by the American Association for Cancer Research.)
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- 2022
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18. [Interest of the bc-GenExMiner web tool in oncology].
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Jézéquel P, Gouraud W, Azzouz FB, Basseville A, Juin PP, Lasla H, and Campone M
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- Breast Neoplasms chemistry, Female, Genetic Markers, Humans, Internet-Based Intervention, Prognosis, Time Factors, Transcriptome, Breast Neoplasms genetics, Data Mining methods, Databases, Genetic statistics & numerical data, Gene Expression Profiling methods
- Abstract
We are taking advantage of the launch of the latest version (v4.6) of our web-based data mining tool "breast cancer gene-expression miner" (bc-GenExMiner) to take stock of its position within the oncology research landscape and to present an activity report ten years after its establishment (http://bcgenex.ico.unicancer.fr). bc-GenExMiner is an open-access, user-friendly tool for statistical mining on breast tumor transcriptomes, annotated with more than 20 clinicopathologic and molecular characteristics. The database comprises more than 16,000 patients from 64 cohorts - including TCGA, METABRIC and SCAN-B - for whom several thousands of genes have been quantified by microarrays or RNA-seq. Correlation, expression and prognostic analyses are available for targeted, exhaustive or customized explorations of queried genes. bc-GenExMiner facilitates the validation, investigation, and prioritization of discoveries and hypotheses on genes of interest. It allows users to analyse large databases, create data visualizations, and obtain robust statistical analysis, thereby accelerating biomarker discovery. Ten years after its launch, judging by the number of visits, analyses, and scientific citations of bc-GenExMiner, we conclude that this web resource serves its purpose in the international scientific community working in breast cancer research, with a never-ending rise in its use., (Copyright © 2021 Société Française du Cancer. Published by Elsevier Masson SAS. All rights reserved.)
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- 2021
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19. bc-GenExMiner 4.5: new mining module computes breast cancer differential gene expression analyses.
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Jézéquel P, Gouraud W, Ben Azzouz F, Guérin-Charbonnel C, Juin PP, Lasla H, and Campone M
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- Biomarkers, Tumor, Computational Biology, Female, Gene Expression Regulation, Neoplastic, Humans, Transcriptome, Breast Neoplasms genetics
- Abstract
'Breast cancer gene-expression miner' (bc-GenExMiner) is a breast cancer-associated web portal (http://bcgenex.ico.unicancer.fr). Here, we describe the development of a new statistical mining module, which permits several differential gene expression analyses, i.e. 'Expression' module. Sixty-two breast cancer cohorts and one healthy breast cohort with their corresponding clinicopathological information are included in bc-GenExMiner v4.5 version. Analyses are based on microarray or RNAseq transcriptomic data. Thirty-nine differential gene expression analyses, grouped into 13 categories, according to clinicopathological and molecular characteristics ('Targeted' and 'Exhaustive') and gene expression ('Customized'), have been developed. Output results are visualized in four forms of plots. This new statistical mining module offers, among other things, the possibility to compare gene expression in healthy (cancer-free), tumour-adjacent and tumour tissues at once and in three triple-negative breast cancer subtypes (i.e. C1: molecular apocrine tumours; C2: basal-like tumours infiltrated by immune suppressive cells and C3: basal-like tumours triggering an ineffective immune response). Several validation tests showed that bioinformatics process did not alter the pathobiological information contained in the source data. In this work, we developed and demonstrated that bc-GenExMiner 'Expression' module can be used for exploratory and validation purposes. Database URL: http://bcgenex.ico.unicancer.fr., (© The Author(s) 2021. Published by Oxford University Press.)
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- 2021
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20. Development of an absolute assignment predictor for triple-negative breast cancer subtyping using machine learning approaches.
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Ben Azzouz F, Michel B, Lasla H, Gouraud W, François AF, Girka F, Lecointre T, Guérin-Charbonnel C, Juin PP, Campone M, and Jézéquel P
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- Algorithms, Computational Biology, Humans, Machine Learning, Triple Negative Breast Neoplasms genetics
- Abstract
Triple-negative breast cancer (TNBC) heterogeneity represents one of the main obstacles to precision medicine for this disease. Recent concordant transcriptomics studies have shown that TNBC could be divided into at least three subtypes with potential therapeutic implications. Although a few studies have been conducted to predict TNBC subtype using transcriptomics data, the subtyping was partially sensitive and limited by batch effect and dependence on a given dataset, which may penalize the switch to routine diagnostic testing. Therefore, we sought to build an absolute predictor (i.e., intra-patient diagnosis) based on machine learning algorithms with a limited number of probes. To that end, we started by introducing probe binary comparison for each patient (indicators). We based the predictive analysis on this transformed data. Probe selection was first involved combining both filter and wrapper methods for variable selection using cross-validation. We tested three prediction models (random forest, gradient boosting [GB], and extreme gradient boosting) using this optimal subset of indicators as inputs. Nested cross-validation consistently allowed us to choose the best model. The results showed that the fifty selected indicators highlighted the biological characteristics associated with each TNBC subtype. The GB based on this subset of indicators performs better than other models., (Copyright © 2020 Elsevier Ltd. All rights reserved.)
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- 2021
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21. iTRAQ-Based Quantitative Proteomic Analysis Strengthens Transcriptomic Subtyping of Triple-Negative Breast Cancer Tumors.
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Jézéquel P, Guette C, Lasla H, Gouraud W, Boissard A, Guérin-Charbonnel C, and Campone M
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- Androgens genetics, Androgens metabolism, Biomarkers, Tumor classification, Biomarkers, Tumor genetics, Computational Biology, Extracellular Matrix genetics, Female, Gene Expression Regulation, Neoplastic genetics, Humans, Neoplasm Proteins classification, Triple Negative Breast Neoplasms classification, Triple Negative Breast Neoplasms pathology, Neoplasm Proteins genetics, Proteomics, Transcriptome genetics, Triple Negative Breast Neoplasms genetics
- Abstract
Heterogeneity and lack of targeted therapies represent the two main impediments to precision treatment of triple-negative breast cancer (TNBC). Therefore, molecular subtyping and identification of therapeutic pathways are required to optimize medical care. The aim of the present study is to define robust TNBC subtypes with clinical relevance by means of proteomics and transcriptomics. As a first step, unsupervised analyses are conducted in parallel on proteomics and transcriptomics data of 83 TNBC tumors. Proteomics data unsupervised analysis did not permit separation of TNBC into different subtypes, whereas transcriptomics data are able to clearly and robustly identify three subtypes: molecular apocrine (C1), basal-like immune-suppressed (C2), and basal-like immune response (C3). Supervised analysis of proteomics data are then conducted based on transcriptomics subtyping. Thirty out of 62 proteins differentially expressed between C1, C2, and C3 belonged to biological categories which characterized these TNBC clusters: luminal and androgen-regulated proteins (C1), basal, invasion, and extracellular matrix (C2), and basal and immune response (interferon pathway and immunoglobulins) (C3). Although proteomics unsupervised analysis of TNBC tumors is unsuccessful at identifying clusters, the integrated approach is promising. Identification and measurement of 30 proteins strengthen subtyping of TNBC based on robust transcriptomics unsupervised analysis., (© 2019 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim.)
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- 2019
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22. Identification of three subtypes of triple-negative breast cancer with potential therapeutic implications.
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Jézéquel P, Kerdraon O, Hondermarck H, Guérin-Charbonnel C, Lasla H, Gouraud W, Canon JL, Gombos A, Dalenc F, Delaloge S, Lemonnier J, Loussouarn D, Verrièle V, and Campone M
- Subjects
- Cluster Analysis, Computational Biology, Female, Gene Expression Profiling, Humans, Immunohistochemistry, Metabolomics methods, Molecular Sequence Annotation, Neoplasm Grading, Neoplasm Staging, Transcriptome, Triple Negative Breast Neoplasms mortality, Triple Negative Breast Neoplasms therapy, Tumor Burden, Biomarkers, Tumor, Triple Negative Breast Neoplasms diagnosis, Triple Negative Breast Neoplasms genetics
- Abstract
Background: Heterogeneity and lack of targeted therapies represent the two main impediments to precision treatment of triple-negative breast cancer (TNBC), and therefore, molecular subtyping and identification of therapeutic pathways are required to optimize medical care. The aim of the present study was to define robust TNBC subtypes with clinical relevance., Methods: Gene expression profiling by means of DNA chips was conducted in an internal TNBC cohort composed of 238 patients. In addition, external data (n = 257), obtained by using the same DNA chip, were used for validation. Fuzzy clustering was followed by functional annotation of the clusters. Immunohistochemistry was used to confirm transcriptomics results: CD138 and CD20 were used to test for plasma cell and B lymphocyte infiltrations, respectively; MECA79 and CD31 for tertiary lymphoid structures; and UCHL1/PGP9.5 and S100 for neurogenesis., Results: We identified three molecular clusters within TNBC: one molecular apocrine (C1) and two basal-like-enriched (C2 and C3). C2 presented pro-tumorigenic immune response (immune suppressive), high neurogenesis (nerve infiltration), and high biological aggressiveness. In contrast, C3 exhibited adaptive immune response associated with complete B cell differentiation that occurs in tertiary lymphoid structures, and immune checkpoint upregulation. External cohort subtyping by means of the same approach proved the robustness of these results. Furthermore, plasma cell and B lymphocyte infiltrates, tertiary lymphoid structures, and neurogenesis were validated at the protein levels by means of histological evaluation and immunohistochemistry., Conclusion: Our work showed that TNBC can be subcategorized in three different subtypes characterized by marked biological features, some of which could be targeted by specific therapies.
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- 2019
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23. Logic programming reveals alteration of key transcription factors in multiple myeloma.
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Miannay B, Minvielle S, Roux O, Drouin P, Avet-Loiseau H, Guérin-Charbonnel C, Gouraud W, Attal M, Facon T, Munshi NC, Moreau P, Campion L, Magrangeas F, and Guziolowski C
- Subjects
- Algorithms, Computational Biology methods, Forkhead Box Protein M1 metabolism, Gene Expression Profiling, Gene Expression Regulation, Neoplastic, Humans, JNK Mitogen-Activated Protein Kinases metabolism, Models, Biological, Multiple Myeloma mortality, Multiple Myeloma pathology, Oncogene Proteins v-fos metabolism, Reproducibility of Results, Software, Transcriptome, Cellular Reprogramming genetics, Multiple Myeloma genetics, Multiple Myeloma metabolism, Transcription Factors metabolism
- Abstract
Innovative approaches combining regulatory networks (RN) and genomic data are needed to extract biological information for a better understanding of diseases, such as cancer, by improving the identification of entities and thereby leading to potential new therapeutic avenues. In this study, we confronted an automatically generated RN with gene expression profiles (GEP) from a cohort of multiple myeloma (MM) patients and normal individuals using global reasoning on the RN causality to identify key-nodes. We modeled each patient by his or her GEP, the RN and the possible automatically detected repairs needed to establish a coherent flow of the information that explains the logic of the GEP. These repairs could represent cancer mutations leading to GEP variability. With this reasoning, unmeasured protein states can be inferred, and we can simulate the impact of a protein perturbation on the RN behavior to identify therapeutic targets. We showed that JUN/FOS and FOXM1 activities are altered in almost all MM patients and identified two survival markers for MM patients. Our results suggest that JUN/FOS-activation has a strong impact on the RN in view of the whole GEP, whereas FOXM1-activation could be an interesting way to perturb an MM subgroup identified by our method.
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- 2017
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24. A Genome-Wide Association Study Identifies a Novel Locus for Bortezomib-Induced Peripheral Neuropathy in European Patients with Multiple Myeloma.
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Magrangeas F, Kuiper R, Avet-Loiseau H, Gouraud W, Guérin-Charbonnel C, Ferrer L, Aussem A, Elghazel H, Suhard J, Sakissian H, Attal M, C Munshi N, Sonneveld P, Dumontet C, Moreau P, van Duin M, Campion L, and Minvielle S
- Subjects
- Antineoplastic Agents therapeutic use, Bortezomib therapeutic use, Chromosomes, Human, Pair 21, Computational Biology, Genotype, Humans, Linkage Disequilibrium, Multiple Myeloma drug therapy, Polymorphism, Single Nucleotide, Antineoplastic Agents adverse effects, Bortezomib adverse effects, Genetic Predisposition to Disease, Genome-Wide Association Study, Multiple Myeloma complications, Peripheral Nervous System Diseases etiology, Pharmacogenomic Variants, Quantitative Trait Loci
- Abstract
Purpose: Painful peripheral neuropathy is a frequent toxicity associated with bortezomib therapy. This study aimed to identify loci that affect susceptibility to this toxicity., Experimental Design: A genome-wide association study (GWAS) of 370,605 SNPs was performed to identify risk variants for developing severe bortezomib-induced peripheral neuropathy (BiPN) in 469 patients with multiple myeloma who received bortezomib-dexamethasone therapy prior to autologous stem cell in randomized clinical trials of the Intergroupe Francophone du Myelome (IFM) and findings were replicated in 114 patients with multiple myeloma of the HOVON-65/GMMG-HD4 clinical trial., Results: An SNP in the PKNOX1 gene was associated with BiPN in the exploratory cohort [rs2839629; OR, 1.89, 95% confidence interval (CI), 1.45-2.44; P = 7.6 × 10(-6)] and in the replication cohort (OR, 2.04; 95% CI, = 1.11-3.33; P = 8.3 × 10(-3)). In addition, rs2839629 is in strong linkage disequilibrium (r(2) = 0.87) with rs915854, located in the intergenic region between PKNOX1 and cystathionine-ß-synthetase (CBS) Expression quantitative trait loci mapping showed that both rs2839629 and rs915854 genotypes have an impact on PKNOX1 expression in nerve tissue, whereas rs2839629 affects CBS expression in skin and blood., Conclusions: The use of GWAS in multiple myeloma pharmacogenomics has identified a novel candidate genetic locus mapping to PKNOX1 and in the immediate vicinity of CBS at 21q22.3 associated with the severe bortezomib-induced toxicity. The proximity of these two genes involved in neurologic pain whose tissue-specific expression is modified by the two variants provides new targets for neuroprotective strategies. Clin Cancer Res; 22(17); 4350-5. ©2016 AACR., (©2016 American Association for Cancer Research.)
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- 2016
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25. Gene-expression signature functional annotation of breast cancer tumours in function of age.
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Jézéquel P, Sharif Z, Lasla H, Gouraud W, Guérin-Charbonnel C, Campion L, Chrétien S, and Campone M
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- Adult, Aged, Breast Neoplasms diagnosis, Breast Neoplasms pathology, Female, Humans, Middle Aged, Prognosis, Aging genetics, Breast Neoplasms genetics, Gene Expression Profiling, Molecular Sequence Annotation
- Abstract
Background: Breast cancer biological characteristics change as age advances. Today, there is a lack of knowledge regarding age-specific molecular alterations that characterize breast tumours, notably in elderly patients. The vast majority of studies that aimed at exploring breast cancer in function of age are based on clinico-pathological data. Gene-expression signatures (GES), which in some ways capture biological information in a non-reductionist manner, represent powerful tools able to explore tumour heterogeneity., Methods: Twenty-five GES were used for functional annotation of breast tumours in function of age: five for molecular subtyping, seven for immune response, three for metabolism, seven for critical pathways in cancer and three for prognosis. Affymetrix® genomics datasets were exclusively used to avoid cross-platform normalization issues. Available corresponding clinico-pathological data were also retrieved and analysed., Results: Fifteen publicly available datasets were pooled for a total of 2378 breast cancer patients (whole cohort), out of whom 1413 were of Caucasian origin. Three age groups were defined: ≤ 40 years (AG1), > 40 to < 70 years (AG2) and ≥ 70 years (AG3). We confirmed that age influenced the incidence of molecular subtypes. We found a significant growing incidence of luminal B and a decreasing kinetics for basal-like in function of age. We showed that AG3 luminal B tumours were less aggressive than AG1 luminal B tumours based on different GES (iron metabolism, mitochondrial oxidative phosphorylation and reactive stroma), recurrence score prognostic GES and histological grade (SBR). Contrary to tumours of young patients, tumours of elderly patients concentrated favourable GES scores: high oestrogen receptor and mitochondrial oxidative phosphorylation, low proliferation, basal-like, glycolysis, chromosomal instability and iron metabolism, and low GES prognostic scores (van't Veer 70-GES, genomic grade index and recurrence score)., Conclusions: Functional annotation of breast tumours by means of 25 GES demonstrated a decreasing aggressiveness of breast tumours in function of age. This strategy, which can be strengthened by increasing the number of representative GES to gain more insight into biological systems involved in this disease, provides a framework to develop rational therapeutic strategies in function of age.
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- 2015
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26. Gene-expression molecular subtyping of triple-negative breast cancer tumours: importance of immune response.
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Jézéquel P, Loussouarn D, Guérin-Charbonnel C, Campion L, Vanier A, Gouraud W, Lasla H, Guette C, Valo I, Verrièle V, and Campone M
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- Adult, Aged, Biomarkers, Tumor, Cluster Analysis, Computational Biology, Female, Humans, Immunity, Innate, Immunohistochemistry, Kaplan-Meier Estimate, Middle Aged, Molecular Sequence Annotation, Neoplasm Staging, Prognosis, Reproducibility of Results, Retrospective Studies, Transcriptome, Triple Negative Breast Neoplasms diagnosis, Triple Negative Breast Neoplasms immunology, Triple Negative Breast Neoplasms mortality, Triple Negative Breast Neoplasms therapy, Tumor Burden, Gene Expression Profiling, Gene Expression Regulation, Neoplastic, Triple Negative Breast Neoplasms genetics
- Abstract
Introduction: Triple-negative breast cancers need to be refined in order to identify therapeutic subgroups of patients., Methods: We conducted an unsupervised analysis of microarray gene-expression profiles of 107 triple-negative breast cancer patients and undertook robust functional annotation of the molecular entities found by means of numerous approaches including immunohistochemistry and gene-expression signatures. A triple-negative external cohort (n=87) was used for validation., Results: Fuzzy clustering separated triple-negative tumours into three clusters: C1 (22.4%), C2 (44.9%) and C3 (32.7%). C1 patients were older (mean=64.6 years) than C2 (mean=56.8 years; P=0.03) and C3 patients (mean=51.9 years; P=0.0004). Histological grade and Nottingham prognostic index were higher in C2 and C3 than in C1 (P<0.0001 for both comparisons). Significant event-free survival (P=0.03) was found according to cluster membership: patients belonging to C3 had a better outcome than patients in C1 (P=0.01) and C2 (P=0.02). Event-free survival analysis results were confirmed when our cohort was pooled with the external cohort (n=194; P=0.01). Functional annotation showed that 22% of triple-negative patients were not basal-like (C1). C1 was enriched in luminal subtypes and positive androgen receptor (luminal androgen receptor). C2 could be considered as an almost pure basal-like cluster. C3, enriched in basal-like subtypes but to a lesser extent, included 26% of claudin-low subtypes. Dissection of immune response showed that high immune response and low M2-like macrophages were a hallmark of C3, and that these patients had a better event-free survival than C2 patients, characterized by low immune response and high M2-like macrophages: P=0.02 for our cohort, and P=0.03 for pooled cohorts., Conclusions: We identified three subtypes of triple-negative patients: luminal androgen receptor (22%), basal-like with low immune response and high M2-like macrophages (45%), and basal-enriched with high immune response and low M2-like macrophages (33%). We noted out that macrophages and other immune effectors offer a variety of therapeutic targets in breast cancer, and particularly in triple-negative basal-like tumours. Furthermore, we showed that CK5 antibody was better suited than CK5/6 antibody to subtype triple-negative patients.
- Published
- 2015
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27. Early dynamic transcriptomic changes during preoperative radiotherapy in patients with rectal cancer: a feasibility study.
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Supiot S, Gouraud W, Campion L, Jezéquel P, Buecher B, Charrier J, Heymann MF, Mahé MA, Rio E, and Chérel M
- Subjects
- Aged, Aged, 80 and over, Algorithms, Biopsy, Feasibility Studies, Humans, Middle Aged, Neoplasm Staging, Oligonucleotide Array Sequence Analysis, Pilot Projects, Radiotherapy Dosage, Radiotherapy, Adjuvant, Rectal Neoplasms pathology, Rectal Neoplasms surgery, Time Factors, Treatment Outcome, Biomarkers, Tumor genetics, Gene Expression Profiling methods, Gene Expression Regulation, Neoplastic radiation effects, Neoadjuvant Therapy, Rectal Neoplasms genetics, Rectal Neoplasms radiotherapy
- Abstract
Aim: To develop novel biomarkers of rectal radiotherapy, we measured gene expression profiles on biopsies taken before and during preoperative radiotherapy., Methods: Six patients presenting with a locally advanced rectal cancer (T>T2, N0/Nx, M0) eligible for preoperative radiotherapy (45 Gy in 25 fractions) were selected in a pilot study. Six tumor and 3 normal tissues biopsies were taken before and during radiotherapy, after a dose of 7.2 Gy at a median time of 1 h following irradiation (0:27-2:12). Tumor or normal tissue purity was assessed by a pathologist prior to RNA extraction. Mean RNA content was 23 μg/biopsy (14-37) before radiotherapy and 22.7 μg/biopsy (12-35) during radiotherapy. After RNA amplification, biopsies were analysed with 54K HG-U133A Plus 2.0 Affymetrix expression micro-arrays. Data were normalized according to MAS5 algorithm. A gene expression ratio was calculated as: (gene expression during radiotherapy - gene expression before radiotherapy)/gene expression before radiotherapy. Were selected genes that showed a ratio higher than ± 0.5 in all 6 patients., Results: Microarray analysis showed that preoperative radiotherapy significantly up-regulated 31 genes and down-regulated 6 genes. According to the Gene Ontology project classification, these genes are involved in protein metabolism (ADAMDEC1; AKAP7; CAPN5; CLIC5; CPE; CREB3L1; NEDD4L; RAB27A), ion transport (AKAP7; ATP2A3; CCL28; CLIC5; F2RL2; NEDD4L; SLC6A8), transcription (AKAP7; CREB3L1; ISX; PABPC1L; TXNIP), signal transduction (CAPN5; F2RL2; RAB27A; TNFRSF11A), cell adhesion (ADAMDEC1; PXDN; SPON1; S100A2), immune response (CCL28; PXDN; TNFRSF11A) and apoptosis (ITM2C; PDCD4; PVT1). Up-regulation of 3 genes (CCL28; CLIC5; PDCD4) was detected by 2 different probes and up-regulation of 2 genes (RAB27A; TXNIP) by 3 probes., Conclusion: Micro-arrays can efficiently assess early transcriptomic changes during preoperative radiotherapy for rectal cancer, and may help better understand tumor radioresistance.
- Published
- 2013
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28. bc-GenExMiner: an easy-to-use online platform for gene prognostic analyses in breast cancer.
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Jézéquel P, Campone M, Gouraud W, Guérin-Charbonnel C, Leux C, Ricolleau G, and Campion L
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- Adult, Aged, Aged, 80 and over, Breast Neoplasms mortality, Breast Neoplasms pathology, Cluster Analysis, Data Mining methods, Female, Gene Expression Regulation, Neoplastic, Humans, Internet, Middle Aged, Prognosis, Survival Analysis, Young Adult, Breast Neoplasms genetics, Gene Expression Profiling methods, Software
- Abstract
Gene prognostic meta-analyses should benefit from breast tumour genomic data obtained during the last decade. The aim was to develop a user-friendly, web-based application, based on DNA microarrays results, called "breast cancer Gene-Expression Miner" (bc-GenExMiner) to improve gene prognostic analysis performance by using the same bioinformatics process. bc-GenExMiner was developed as a web-based tool including a MySQL relational database. Survival analyses are performed with R statistical software and packages. Molecular subtyping was performed by means of three single sample predictors (SSPs) and three subtype clustering models (SCMs). Twenty-one public data sets have been included. Among the 3,414 recovered breast cancer patients, 1,209 experienced a pejorative event. Molecular subtyping by means of three SSPs and three SCMs was performed for 3,063 patients. Furthermore, three robust lists of stable subtyped patients were built to maximize reliability of molecular assignment. Gene prognostic analyses are done by means of univariate Cox proportional hazards model and may be conducted on cohorts split by nodal (N), oestrogen receptor (ER), or molecular subtype status. To evaluate independent prognostic impact of genes relative to Nottingham Prognostic Index and Adjuvant! Online, adjusted Cox proportional hazards models are performed. bc-GenExMiner allows researchers without specific computation skills to easily and quickly evaluate the in vivo prognostic role of genes in breast cancer by means of Cox proportional hazards model on large pooled cohorts, which may be split according to different prognostic parameters: N, ER, and molecular subtype. Prognostic analyses by molecular subtype may also be performed in three robust molecular subtype classifications.
- Published
- 2012
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29. c-Myc dependent expression of pro-apoptotic Bim renders HER2-overexpressing breast cancer cells dependent on anti-apoptotic Mcl-1.
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Campone M, Noël B, Couriaud C, Grau M, Guillemin Y, Gautier F, Gouraud W, Charbonnel C, Campion L, Jézéquel P, Braun F, Barré B, Coqueret O, Barillé-Nion S, and Juin P
- Subjects
- Apoptosis Regulatory Proteins genetics, Bcl-2-Like Protein 11, Breast Neoplasms, Cell Aggregation, Cell Line, Tumor, Cell Survival, Everolimus, Female, Gene Expression, Gene Knockdown Techniques, Humans, Mechanistic Target of Rapamycin Complex 1, Membrane Proteins genetics, Multiprotein Complexes, Myeloid Cell Leukemia Sequence 1 Protein, Promoter Regions, Genetic, Proteins antagonists & inhibitors, Proteins metabolism, Proto-Oncogene Proteins genetics, Proto-Oncogene Proteins c-bcl-2 genetics, RNA Interference, Signal Transduction, Sirolimus analogs & derivatives, Sirolimus pharmacology, TOR Serine-Threonine Kinases, bcl-X Protein genetics, bcl-X Protein metabolism, Apoptosis, Apoptosis Regulatory Proteins metabolism, Membrane Proteins metabolism, Proto-Oncogene Proteins metabolism, Proto-Oncogene Proteins c-bcl-2 metabolism, Proto-Oncogene Proteins c-myc metabolism, Receptor, ErbB-2 metabolism
- Abstract
Background: Anti-apoptotic signals induced downstream of HER2 are known to contribute to the resistance to current treatments of breast cancer cells that overexpress this member of the EGFR family. Whether or not some of these signals are also involved in tumor maintenance by counteracting constitutive death signals is much less understood. To address this, we investigated what role anti- and pro-apoptotic Bcl-2 family members, key regulators of cancer cell survival, might play in the viability of HER2 overexpressing breast cancer cells., Methods: We used cell lines as an in vitro model of HER2-overexpressing cells in order to evaluate how anti-apoptotic Bcl-2, Bcl-xL and Mcl-1, and pro-apoptotic Puma and Bim impact on their survival, and to investigate how the constitutive expression of these proteins is regulated. Expression of the proteins of interest was confirmed using lysates from HER2-overexpressing tumors and through analysis of publicly available RNA expression data., Results: We show that the depletion of Mcl-1 is sufficient to induce apoptosis in HER2-overexpressing breast cancer cells. This Mcl-1 dependence is due to Bim expression and it directly results from oncogenic signaling, as depletion of the oncoprotein c-Myc, which occupies regions of the Bim promoter as evaluated in ChIP assays, decreases Bim levels and mitigates Mcl-1 dependence. Consistently, a reduction of c-Myc expression by inhibition of mTORC1 activity abrogates occupancy of the Bim promoter by c-Myc, decreases Bim expression and promotes tolerance to Mcl-1 depletion. Western blot analysis confirms that naïve HER2-overexpressing tumors constitutively express detectable levels of Mcl-1 and Bim, while expression data hint on enrichment for Mcl-1 transcripts in these tumors., Conclusions: This work establishes that, in HER2-overexpressing tumors, it is necessary, and maybe sufficient, to therapeutically impact on the Mcl-1/Bim balance for efficient induction of cancer cell death.
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- 2011
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30. Inhibition of mTORC1 activity by REDD1 induction in myeloma cells resistant to bortezomib cytotoxicity.
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Decaux O, Clément M, Magrangeas F, Gouraud W, Charbonnel C, Campion L, Loiseau HA, and Minvielle S
- Subjects
- Antineoplastic Combined Chemotherapy Protocols therapeutic use, Bortezomib, Cell Line, Tumor, Cell Size, Dexamethasone therapeutic use, Drug Resistance, Neoplasm, Humans, Multiple Myeloma metabolism, Multiple Myeloma pathology, Transcriptional Activation, Boronic Acids therapeutic use, Multiple Myeloma drug therapy, Pyrazines therapeutic use, Transcription Factors antagonists & inhibitors, Transcription Factors metabolism
- Abstract
The combination of bortezomib and dexamethasone is becoming the reference induction treatment for multiple myeloma patients younger than 65 years. Despite its advantage over vincristin adryamicin dexamethasone induction treatment, bortezomib does not benefit all patients. We hypothesize that heterogeneity of the response experienced by myeloma patients is, at least in part, due to genomic variations in the malignant plasma cells. To test this hypothesis we used gene expression profiling to identify early responsive genes induced by bortezomib in resistant myeloma cells. Our study revealed: (i) a dramatic induction of REDD1, a negative regulator of mammalian target of rapamycin kinase complex 1 (mTORC1) activity, in these cells; (ii) a transient cell size decrease associated with REDD1 overexpression; and (iii) partial restoration of bortezomib sensitivity in REDD1 knockdown bortezomib-resistant myeloma cells. Together, these results identify a possible novel mechanism of bortezomib resistance in myeloma patients mediated by REDD1 overexpression involving inhibition of mTORC1 activity and suggest that the use of mammalian target of rapamycin inhibitors in myeloma patients could be deleterious.
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- 2010
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31. Molecular screening of interleukin-6 gene promoter and influence of -174G/C polymorphism on breast cancer.
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Chérel M, Campion L, Bézieau S, Campone M, Charrier J, Gaschet J, Ricolleau G, Gouraud W, Charbonnel C, and Jézéquel P
- Subjects
- Adult, Base Sequence, Breast Neoplasms diagnosis, Breast Neoplasms mortality, Disease-Free Survival, Female, Gene Frequency, Genetic Markers, Humans, Middle Aged, Molecular Sequence Data, Prognosis, Sequence Analysis, DNA, Breast Neoplasms genetics, Interleukin-6 genetics, Polymorphism, Single Nucleotide, Promoter Regions, Genetic
- Abstract
Interleukin-6 (IL-6) is a cytokine involved in different physiologic and pathophysiologic processes including carcinogenesis. In 2003, a single nucleotide polymorphism (-174G/C) of the IL-6 gene promoter has been linked to breast cancer prognosis in node-positive (N+) breast cancer patients. Since, different studies have led to conflicting conclusions about its role as a prognostic and/or diagnostic marker. The primary aim of our study was to investigate the link between -174G/C polymorphism and breast cancer risk on the one hand, and -174G/C polymorphism and prognosis in different groups of patients: sporadic N+breast cancers (n=138), sporadic N- breast cancers (n=95) and familial breast cancer (n=60) on the other hand. The variables of interest were disease-free survival and overall survival. The secondary aim of the study was to screen IL-6 gene promoter using direct sequencing to identify new polymorphisms in our French Caucasian breast cancer population. No association or trend of association between -174G/C polymorphism of IL-6 gene promoter gene and breast cancer diagnosis or prognosis was shown, even in meta-analyses. Furthermore, we have identified four novel polymorphic sites in the IL-6 gene promoter region: -764G-->A, -757C-->T, -233T-->A, 15C-->A.
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- 2009
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32. Molecular characterization of the response to chemotherapy in conventional osteosarcomas: predictive value of HSD17B10 and IFITM2.
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Salas S, Jézéquel P, Campion L, Deville JL, Chibon F, Bartoli C, Gentet JC, Charbonnel C, Gouraud W, Voutsinos-Porche B, Brouchet A, Duffaud F, Figarella-Branger D, and Bouvier C
- Subjects
- Adolescent, Adult, Biomarkers, Tumor genetics, Bone Neoplasms drug therapy, Bone Neoplasms pathology, Case-Control Studies, Child, Female, Gene Dosage, Gene Expression Profiling, Humans, Immunoenzyme Techniques, In Situ Hybridization, Fluorescence, Male, Oligonucleotide Array Sequence Analysis, Osteosarcoma drug therapy, Osteosarcoma pathology, Prognosis, RNA, Messenger genetics, RNA, Messenger metabolism, Reverse Transcriptase Polymerase Chain Reaction, Ribosomal Proteins genetics, Survival Rate, Young Adult, 3-Hydroxyacyl CoA Dehydrogenases metabolism, Antineoplastic Agents therapeutic use, Biomarkers, Tumor metabolism, Bone Neoplasms metabolism, Membrane Proteins metabolism, Osteosarcoma metabolism
- Abstract
The therapy regimen of high-grade osteosarcoma includes chemotherapy followed by surgical resection and postoperative chemotherapy. The degree of necrosis following definitive surgery remains the only reliable prognostic factor and is used to guide the choice of postoperative chemotherapy. The aim of this study was to find molecular markers able to classify patients with an osteosarcoma as good or poor responders to chemotherapy before beginning treatment. Gene expression screening of 20 nonmetastatic high-grade osteosarcoma patients was performed using cDNA microarray. Expression of selected relevant genes was validated using QRT-PCR. Immunohistochemistry on tissue microarrays sections of 73 biopsies was performed to investigate protein expression. Fluorescent in situ hybridization was performed for RPL8 gene. We have found that HSD17B10 gene expression was up-regulated in poor responders and that immunohistochemistry expression of HSD17B10 on biopsy before treatment was correlated to response to chemotherapy. Other results include correlation of IFITM2, IFITM3, and RPL8 gene expression to chemotherapy response. A statistical correlation was found between polysomy 8 or gain of RPL8 and good response to chemotherapy. These data suggest that HSD17B10, RPL8, IFITM2, and IFITM3 genes are involved in the response to the chemotherapy and that HSD17B10 may be a therapeutic target. RPL8 and IFITM2 may be useful in the assessment at diagnosis and for stratifying patients taking part in randomized trials.
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- 2009
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33. A 38-gene expression signature to predict metastasis risk in node-positive breast cancer after systemic adjuvant chemotherapy: a genomic substudy of PACS01 clinical trial.
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Jézéquel P, Campone M, Roché H, Gouraud W, Charbonnel C, Ricolleau G, Magrangeas F, Minvielle S, Genève J, Martin AL, Bataille R, and Campion L
- Subjects
- Aged, Biomarkers, Tumor metabolism, Breast Neoplasms drug therapy, Chemotherapy, Adjuvant, Clinical Trials, Phase III as Topic, Cyclophosphamide administration & dosage, Double-Blind Method, Epirubicin administration & dosage, Female, Fluorouracil administration & dosage, Humans, Lymph Nodes drug effects, Lymphatic Metastasis, Multicenter Studies as Topic, Oligonucleotide Array Sequence Analysis, Postmenopause, Prognosis, Survival Rate, Treatment Outcome, Antineoplastic Combined Chemotherapy Protocols therapeutic use, Biomarkers, Tumor genetics, Breast Neoplasms genetics, Breast Neoplasms secondary, Gene Expression Profiling, Lymph Nodes pathology
- Abstract
Currently, no prognostic gene-expression signature (GES) established from node-positive breast cancer cohorts, able to predict evolution after systemic adjuvant chemotherapy, exists. Gene-expression profiles of 252 node-positive breast cancer patients (median follow-up: 7.7 years), mostly included in a randomized clinical trial (PACS01), receiving systemic adjuvant regimen, were determined by means of cDNA custom array. In the training cohort, we established a GES composed of 38 genes (38-GES) for the purpose of predicting metastasis-free survival. The 38-GES yielded unadjusted hazard ratio (HR) of 4.86 (95% confidence interval = 2.76-8.56). Even when adjusted with the best two clinicopathological prognostic indexes: Nottingham prognostic index (NPI) and Adjuvant!, 38-GES HRs were 3.30 (1.81-5.99) and 3.40 (1.85-6.24), respectively. Furthermore, 38-GES improved NPI and Adjuvant! classification. In particular, NPI intermediate-risk patients were divided into 2/3 close to low-risk group and 1/3 close to high-risk group (HR = 6.97 [2.51-19.36]). Similarly, Adjuvant! intermediate-risk patients were divided into 2/3 close to low-risk group and 1/3 close to high-risk group (HR = 4.34 [1.64-11.48]). The 38-GES was validated on gene-expression datasets from three external node-positive breast cancer subcohorts (n = 224) generated from different microarray platforms, with HR = 2.95 (1.74-5.01). Moreover, 38-GES showed prognostic performance in supplementary cohorts with different lymph-node status and endpoints (1,040 new patients). The 38-GES represents a robust tool able to type systemic adjuvant treated node-positive patients at high risk of metastatic relapse, and is especially powerful to refine NPI and Adjuvant! classification for those patients.
- Published
- 2009
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34. Prediction of metastatic relapse in node-positive breast cancer: establishment of a clinicogenomic model after FEC100 adjuvant regimen.
- Author
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Campone M, Campion L, Roché H, Gouraud W, Charbonnel C, Magrangeas F, Minvielle S, Genève J, Martin AL, Bataille R, and Jézéquel P
- Subjects
- Adult, Aged, Breast Neoplasms genetics, Breast Neoplasms mortality, Cyclophosphamide therapeutic use, Epirubicin therapeutic use, Female, Fluorouracil therapeutic use, Genomics, Humans, Lymphatic Metastasis, Middle Aged, Prognosis, Retrospective Studies, Antineoplastic Combined Chemotherapy Protocols therapeutic use, Breast Neoplasms drug therapy, Breast Neoplasms pathology
- Abstract
Breast cancer is a very heterogeneous disease, and markers for disease subtypes and therapy response remain poorly defined. For that reason, we employed a retrospective study in node-positive breast cancer to identify molecular signatures of gene expression correlating with metastatic free survival. Patients were primarily included in FEC100 (5-fluorouracil 500 mg/m(2), epirubicin 100 mg/m(2) and cyclophosphamide 500 mg/m(2)) arms of two multicentric prospective adjuvant clinical trials (PACS01 and PEGASE01-FNCLCC cooperative group). Data from nylon microarrays containing 8,032 cDNA unique sequences, representing 5,776 distinct genes, have been used to develop a predictive model for treatment outcome. We obtained the gene expression profiles for 150 of these patients, and used stringent univariate selection techniques based on Cox regression combined with principal component analysis to identify a genomic signature of metastatic relapse after adjuvant FEC100 regimen. Most of the 14 selected genes have a clear role in breast cancer, carcinogenesis or chemotherapy resistance. Six genes have been previously described in other genomic studies (UBE2C, CENPF, C16orf61 [DC13], STMN1, CCT5 and BCL2A1). Furthermore, we showed the interest of combining transcriptomic data with clinical data into a clinicogenomic model for patients subtyping. The described model adds predictive accuracy to that provided by the well-established Nottingham prognostic index or by our genomic signature alone.
- Published
- 2008
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35. Gene Expression Profiles Discriminate between Pathological Complete Response and Resistance to Neoadjuvant FEC100 in Breast Cancer.
- Author
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Millour M, Charbonnel C, Magrangeas F, Minvielle S, Campion L, Gouraud W, Campone M, Déporte-Féty R, Bignon YJ, Penault-Llorca F, and Jézéquel P
- Abstract
Background: In breast cancer treatment, FEC100 (fluorouracil, epirubicin and cyclophosphamide) chemotherapy delivered in a neoadjuvant setting is still applied empirically to all patients. The aim of this study was to establish a multigene classifier of sensitivity to neoadjuvant FEC100., Materials and Methods: cDNA nylon microarrays, containing 15,000 genes, were used to analyze the gene expression profiles of tumour biopsies collected before chemotherapy: 8 were typed as pathological complete responders and 8 as non-responders according to their histological and clinical responses., Results: A classifier was generated by means of Linear Discriminant Analysis and was evaluated by leave-one-out cross-validation. The difference of expression of the NDUFB5 gene (NADH dehydrogenase 1 beta subcomplex, 5), the best discriminating gene, was verified using RT-PCR., Conclusion: This preliminary work requires further investigations, especially in terms of larger cohorts, before the results can be transferred to clinical practice., (Copyright© 2006 International Institute of Anticaner Research (Dr. John G. Delinassios), All rights reserved.)
- Published
- 2006
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