Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. These procedures are simple, fast and their output is easily interpretable by biologists but they can only identify variables that provide a significant amount of information in isolation from the other variables. As biological processes are expected to involve complex interactions between variables, univariate methods thus potentially miss some informative biomarkers. Variable relevance scores provided by machine learning techniques, however, are potentially able to highlight multivariate interacting effects, but unlike the p-values returned by univariate tests, these relevance scores are usually not statistically interpretable. This lack of...
A major area of research is biomarker discovery using gene expression data. Such data is huge and of...
Feature selection has become the essential step in biomarker discovery from high-dimensional genomic...
Statistical tests are a powerful set of tools when applied correctly, but unfortunately the extended...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
Machine learning techniques, and in particular supervised learning methods, are nowadays widely used...
In this paper we investigate the problem of evaluating ranked lists of biomarkers, which are typical...
International audienceMotivation: Biomarker discovery from high-dimensional data is a crucial proble...
Biomarkers are of great importance in many fields, such as cancer research, toxicology, diagnosis an...
The Significance Analysis of Microarrays (SAM) software is a very practical tool for detecting signi...
Copyright © 2013 Nicoletta Dess̀ı et al.This is an open access article distributed under the Creativ...
More often than not biomarker studies analyze large quantities of variables with complicated and gen...
An important problem in bioinformatics consists of identifying the most important features (or predi...
Feature selection has become the essential step in biomarker discovery from high-dimensional genomic...
High-throughput experimental methods for biosample profiling and growing collections of clinical and...
A major area of research is biomarker discovery using gene expression data. Such data is huge and of...
Feature selection has become the essential step in biomarker discovery from high-dimensional genomic...
Statistical tests are a powerful set of tools when applied correctly, but unfortunately the extended...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
Machine learning techniques, and in particular supervised learning methods, are nowadays widely used...
In this paper we investigate the problem of evaluating ranked lists of biomarkers, which are typical...
International audienceMotivation: Biomarker discovery from high-dimensional data is a crucial proble...
Biomarkers are of great importance in many fields, such as cancer research, toxicology, diagnosis an...
The Significance Analysis of Microarrays (SAM) software is a very practical tool for detecting signi...
Copyright © 2013 Nicoletta Dess̀ı et al.This is an open access article distributed under the Creativ...
More often than not biomarker studies analyze large quantities of variables with complicated and gen...
An important problem in bioinformatics consists of identifying the most important features (or predi...
Feature selection has become the essential step in biomarker discovery from high-dimensional genomic...
High-throughput experimental methods for biosample profiling and growing collections of clinical and...
A major area of research is biomarker discovery using gene expression data. Such data is huge and of...
Feature selection has become the essential step in biomarker discovery from high-dimensional genomic...
Statistical tests are a powerful set of tools when applied correctly, but unfortunately the extended...