Por motivos de mantenimiento se ha deshabilitado el inicio de sesión temporalmente. Rogamos disculpen las molestias.
Article
VIGLA-M: visual gene expression data analytics
Author/s | Navas Delgado, Ismael
García Nieto, José Manuel López Camacho, Esteban Rybinski, Maciej Lavado, Rocío Berciano Guerrero, Miguel Ángel Aldana Montes, José F. |
Department | Universidad de Sevilla. Departamento de Ciencias de la Computación e Inteligencia Artificial |
Publication Date | 2019 |
Deposit Date | 2021-05-14 |
Published in |
|
Abstract | Background: The analysis of gene expression levels is used in many clinical studies to know how patients evolve or
to find new genetic biomarkers that could help in clinical decision making. However, the techniques and ... Background: The analysis of gene expression levels is used in many clinical studies to know how patients evolve or to find new genetic biomarkers that could help in clinical decision making. However, the techniques and software available for these analyses are not intended for physicians, but for geneticists. However, enabling physicians to make initial discoveries on these data would benefit in the clinical assay development. Results: Melanoma is a highly immunogenic tumor. Therefore, in recent years physicians have incorporated immune system altering drugs into their therapeutic arsenal against this disease, revolutionizing the treatment of patients with an advanced stage of the cancer. This has led us to explore and deepen our knowledge of the immunology surrounding melanoma, in order to optimize the approach. Within this project we have developed a database for collecting relevant clinical information for melanoma patients, including the storage of patient gene expression levels obtained from the NanoString platform (several samples are taken from each patient). The Immune Profiling Panel is used in this case. This database is being exploited through the analysis of the different expression profiles of the patients. This analysis is being done with Python, and a parallel version of the algorithms is available with Apache Spark to provide scalability as needed. Conclusions: VIGLA-M, the visual analysis tool for gene expression levels in melanoma patients is available at http://khaos.uma.es/melanoma/. The platform with real clinical data can be accessed with a demo user account, physician, using password physician_test_7634 (if you encounter any problems, contact us at this email address: mailto: khaos@lcc.uma.es). The initial results of the analysis of gene expression levels using these tools are providing first insights into the patients’ evolution. These results are promising, but larger scale tests must be developed once new patients have been sequenced, to discover new genetic biomarkers. |
Funding agencies | Ministerio de Educación y Ciencia (MEC). España Junta de Andalucía |
Project ID. | TIN2017-86049-R
TIN2014-58304-R TIN2014-58304-R |
Citation | Navas Delgado, I., García Nieto, J.M., López Camacho, E., Rybinski, M., Lavado, R., Berciano Guerrero, M.Á. y Aldana Montes, J.F. (2019). VIGLA-M: visual gene expression data analytics. BMC Bioinformatics, 20 (4 - art.150) |
Files | Size | Format | View | Description |
---|---|---|---|---|
VIGLA-M.pdf | 2.602Mb | [PDF] | View/ | |