Publication:
Deep Learning to Analyze RNA-Seq Gene Expression Data

No Thumbnail Available

Date

2017-01-01

Authors

Urda, D.
Montes-Torres, J.
Moreno, F.
Franco, L.
Jerez, J. M.
Rojas, I
Joya, G
Catala, A

Advisors

Journal Title

Journal ISSN

Volume Title

Publisher

Springer international publishing ag
Metrics
Google Scholar
Export

Research Projects

Organizational Units

Journal Issue

Abstract

Deep learning models are currently being applied in several areas with great success. However, their application for the analysis of high-throughput sequencing data remains a challenge for the research community due to the fact that this family of models are known to work very well in big datasets with lots of samples available, just the opposite scenario typically found in biomedical areas. In this work, a first approximation on the use of deep learning for the analysis of RNA-Seq gene expression profiles data is provided. Three public cancer-related databases are analyzed using a regularized linear model (standard LASSO) as baseline model, and two deep learning models that differ on the feature selection technique used prior to the application of a deep neural net model. The results indicate that a straightforward application of deep nets implementations available in public scientific tools and under the conditions described within this work is not enough to outperform simpler models like LASSO. Therefore, smarter and more complex ways that incorporate prior biological knowledge into the estimation procedure of deep learning models may be necessary in order to obtain better results in terms of predictive performance.

Description

MeSH Terms

DeCS Terms

CIE Terms

Keywords

Deep learning, RNA-Seq, Personalized medicine, Machine Learning, Biomarkers discovery

Citation