MOTIVATION: The identification of robust lists of molecular biomarkers related to a disease is a fundamental step for early diagnosis and treatment. However, methodologies for the discovery of biomarkers using microarray data often provide results with limited overlap. These differences are imputable to 1) dataset size (few subjects with respect to the number of features); 2) heterogeneity of the disease; 3) heterogeneity of experimental protocols and computational pipelines employed in the analysis. In this paper, we focus on the first two issues and assess, both on simulated (through an in silico regulation network model) and real clinical datasets, the consistency of candidate biomarkers provided by a number of different methods. METHOD...
The biomarker discovery field is replete with molecular signatures that have not translated into the...
Biomarker identification is of fundamental importance in many fields of biology and medicine. Modern...
A major area of research is biomarker discovery using gene expression data. Such data is huge and of...
MOTIVATION: The identification of robust lists of molecular biomarkers related to a disease is a fun...
<div><h3>Motivation</h3><p>The identification of robust lists of molecular biomarkers related to a d...
2 Background: Modern genomic and proteomic studies reveal that many diseases are heterogeneous, comp...
Background: Modern genomic and proteomic studies reveal that many diseases are heterogeneous, compri...
Copyright © 2013 Nicoletta Dess̀ı et al.This is an open access article distributed under the Creativ...
Abstract Background Data generated using 'omics' technologies are characterized by high dimensionali...
This repository contains the code and data to reproduce the results from the paper "Cancer biomarker...
High-throughput experimental methods for biosample profiling and growing collections of clinical and...
Feature selection has become the essential step in biomarker discovery from high-dimensional genomic...
<div><p>Microarray studies with human subjects often have limited sample sizes which hampers the abi...
BACKGROUND:The biomarker discovery field is replete with molecular signatures that have not translat...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
The biomarker discovery field is replete with molecular signatures that have not translated into the...
Biomarker identification is of fundamental importance in many fields of biology and medicine. Modern...
A major area of research is biomarker discovery using gene expression data. Such data is huge and of...
MOTIVATION: The identification of robust lists of molecular biomarkers related to a disease is a fun...
<div><h3>Motivation</h3><p>The identification of robust lists of molecular biomarkers related to a d...
2 Background: Modern genomic and proteomic studies reveal that many diseases are heterogeneous, comp...
Background: Modern genomic and proteomic studies reveal that many diseases are heterogeneous, compri...
Copyright © 2013 Nicoletta Dess̀ı et al.This is an open access article distributed under the Creativ...
Abstract Background Data generated using 'omics' technologies are characterized by high dimensionali...
This repository contains the code and data to reproduce the results from the paper "Cancer biomarker...
High-throughput experimental methods for biosample profiling and growing collections of clinical and...
Feature selection has become the essential step in biomarker discovery from high-dimensional genomic...
<div><p>Microarray studies with human subjects often have limited sample sizes which hampers the abi...
BACKGROUND:The biomarker discovery field is replete with molecular signatures that have not translat...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
The biomarker discovery field is replete with molecular signatures that have not translated into the...
Biomarker identification is of fundamental importance in many fields of biology and medicine. Modern...
A major area of research is biomarker discovery using gene expression data. Such data is huge and of...