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Database Commons

a catalog of worldwide biological databases

Database Profile

bc-GenExMiner

General information

URL: https://bcgenex.ico.unicancer.fr/BC-GEM/
Full name: Breast Cancer Gene-Expression Miner
Description: Breast Cancer Gene-Expression Miner web tool offers the possibility to: 1) compare gene expression levels between groups of patients by means of an "expression module"; 2) evaluate prognostic informativity of genes by means of a "prognostic module"; 3) calculate correlation coefficients between genes by means of a "correlation module".
Year founded: 2012
Last update: 2025/02/07
Version: v5.2
Accessibility:
Accessible
Country/Region: France

Classification & Tag

Data type:
RNA
Data object:
Database category:
Major species:
Keywords:

Contact information

University/Institution: Institute Centre for Oncology
Address: Bd J. Monod, 44805 Nantes - Saint Herblain Cedex, France
City: Saint Herblain Cedex
Province/State:
Country/Region: France
Contact name (PI/Team): Pascal Jézéquel
Contact email (PI/Helpdesk): pascal.jezequel@ico.unicancer.fr

Publications

38777987
Mesenchymal-like immune-altered is the fourth robust triple-negative breast cancer molecular subtype. [PMID: 38777987]
Jézéquel P, Lasla H, Gouraud W, Basseville A, Michel B, Frenel JS, Juin PP, Ben Azzouz F, Campone M.

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.

Breast Cancer. 2024:31(5) | 7 Citations (from Europe PMC, 2025-12-20)
33599248
bc-GenExMiner 4.5: new mining module computes breast cancer differential gene expression analyses. [PMID: 33599248]
Jézéquel P, Gouraud W, Ben Azzouz F, Guérin-Charbonnel C, Juin PP, Lasla H, Campone M.

'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.

Database (Oxford). 2021:2021() | 129 Citations (from Europe PMC, 2025-12-20)
23325629
bc-GenExMiner 3.0: new mining module computes breast cancer gene expression correlation analyses. [PMID: 23325629]
Jézéquel P, Frénel JS, Campion L, Guérin-Charbonnel C, Gouraud W, Ricolleau G, Campone M.

We recently developed a user-friendly web-based application called bc-GenExMiner (http://bcgenex.centregauducheau.fr), which offered the possibility to evaluate prognostic informativity of genes in breast cancer by means of a 'prognostic module'. In this study, we develop a new module called 'correlation module', which includes three kinds of gene expression correlation analyses. The first one computes correlation coefficient between 2 or more (up to 10) chosen genes. The second one produces two lists of genes that are most correlated (positively and negatively) to a 'tested' gene. A gene ontology (GO) mining function is also proposed to explore GO 'biological process', 'molecular function' and 'cellular component' terms enrichment for the output lists of most correlated genes. The third one explores gene expression correlation between the 15 telomeric and 15 centromeric genes surrounding a 'tested' gene. These correlation analyses can be performed in different groups of patients: all patients (without any subtyping), in molecular subtypes (basal-like, HER2+, luminal A and luminal B) and according to oestrogen receptor status. Validation tests based on published data showed that these automatized analyses lead to results consistent with studies' conclusions. In brief, this new module has been developed to help basic researchers explore molecular mechanisms of breast cancer. DATABASE URL: http://bcgenex.centregauducheau.fr

Database (Oxford). 2013:2013() | 190 Citations (from Europe PMC, 2025-12-20)
21452023
bc-GenExMiner: an easy-to-use online platform for gene prognostic analyses in breast cancer. [PMID: 21452023]
Jézéquel P, Campone M, Gouraud W, Guérin-Charbonnel C, Leux C, Ricolleau G, Campion L.

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.

Breast Cancer Res Treat. 2012:131(3) | 298 Citations (from Europe PMC, 2025-12-20)

Ranking

All databases:
357/6895 (94.837%)
Health and medicine:
90/1738 (94.879%)
Expression:
55/1347 (95.991%)
357
Total Rank
590
Citations
45.385
z-index

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Record metadata

Created on: 2015-06-20
Curated by:
Dong Zou [2025-06-10]
Lina Ma [2025-06-08]
[2018-11-27]
Lina Ma [2016-04-11]
Mengwei Li [2016-03-31]
Mengwei Li [2016-03-28]
Mengwei Li [2016-02-20]
Mengwei Li [2015-11-29]
Zhang Zhang [2015-06-27]
Mengwei Li [2015-06-26]