Abstract Background We introduce Iterative Feature Removal (IFR) as an unbiased approach for selecting features with diagnostic capacity from large data sets. The algorithm is based on recently developed tools in machine learning that are driven by sparse feature selection goals. When applied to genomic data, our method is designed to identify genes that can provide deeper insight into complex interactions while remaining directly connected to diagnostic utility. We contrast this approach with the search for a minimal best set of discriminative genes, which can provide only an incomplete picture of the biological complexity. Results Microarray data sets typically contain far more features (genes) than samples. For this type of data, we demo...
Abstract—Feature selection techniques became a lucid want in many bioinformatics applications. Addit...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
One of the main applications of microarray technology is to determine the gene expression profiles o...
Abstract Background We introduce Iterative Feature Removal (IFR) as an unbiased approach for selecti...
We introduce Iterative Feature Removal (IFR) as an unbiased approach for selecting features with dia...
Background: We introduce Iterative Feature Removal (IFR) as an unbiased approach for selecting featu...
Gene expression microarray datasets often consist of a limited number of samples relative to a large...
Gene expression microarray datasets often consist of a limited number of samples relative to a large...
2 One advantage of the microarray technique is that it allows scientists to explore the ex-pression ...
Microarray expression studies are producing massive high-throughput quantities of gene expression an...
High-Throughput technologies provide genomic and trascriptomic data that are suitable for biomarker ...
Identifying genes linked to the appearance of certain types of cancers and their phenotypes is a wel...
In many technological or industrial fields, the amount of high dimensional data is steadily growing....
Abstract Background Microarray data have a high dimension of variables and a small sample size. In m...
Microarray dataset dimensionality reduction is a prerequisite for avoiding overfitting, and hence de...
Abstract—Feature selection techniques became a lucid want in many bioinformatics applications. Addit...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
One of the main applications of microarray technology is to determine the gene expression profiles o...
Abstract Background We introduce Iterative Feature Removal (IFR) as an unbiased approach for selecti...
We introduce Iterative Feature Removal (IFR) as an unbiased approach for selecting features with dia...
Background: We introduce Iterative Feature Removal (IFR) as an unbiased approach for selecting featu...
Gene expression microarray datasets often consist of a limited number of samples relative to a large...
Gene expression microarray datasets often consist of a limited number of samples relative to a large...
2 One advantage of the microarray technique is that it allows scientists to explore the ex-pression ...
Microarray expression studies are producing massive high-throughput quantities of gene expression an...
High-Throughput technologies provide genomic and trascriptomic data that are suitable for biomarker ...
Identifying genes linked to the appearance of certain types of cancers and their phenotypes is a wel...
In many technological or industrial fields, the amount of high dimensional data is steadily growing....
Abstract Background Microarray data have a high dimension of variables and a small sample size. In m...
Microarray dataset dimensionality reduction is a prerequisite for avoiding overfitting, and hence de...
Abstract—Feature selection techniques became a lucid want in many bioinformatics applications. Addit...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
One of the main applications of microarray technology is to determine the gene expression profiles o...