Abstract Background While high-dimensional molecular data such as microarray gene expression data have been used for disease outcome prediction or diagnosis purposes for about ten years in biomedical research, the question of the additional predictive value of such data given that classical predictors are already available has long been under-considered in the bioinformatics literature. Results We suggest an intuitive permutation-based testing procedure for assessing the additional predictive value of high-dimensional molecular data. Our method combines two well-known statistical tools: logistic regression and boosting regression. We give clear advice for the choice of the only method parameter (the number of boosting iterations). In simula...
Gene expression measurements have successfully been used for building prognostic signatures, i.e for...
A large number of studies have been performed to iden-tify biomarkers that will allow efficient dete...
BACKGROUND: High-dimensional molecular measurements, e.g. gene expression data, can be linked to cl...
Background: While high-dimensional molecular data such as microarray gene expression data have been ...
Hundreds of ''molecular signatures'' have been proposed in the literature to predict patient outcome...
Critical to the development of molecular signatures from microarray and other high-throughput data i...
Critical to the development of molecular signatures from microarray and other high-throughput data i...
In biomedical research, boosting-based regression approaches have gained much attention in the last ...
Motivation: In the context of clinical bioinformatics methods are needed for assessing the additiona...
In the last years, the importance of an independent validation for the prediction ability of a new g...
Background: In the last years, the importance of independent validation of the prediction ability of...
This research evaluates pattern recognition techniques on a subclass of big data where the dimension...
Progress in molecular high-throughput techniques has led to the opportunity of a comprehensive monit...
Motivation: Patient outcome prediction using microarray technologies is an important application in ...
Added predictive value of omics data: specific issues related to validation illustrated by two case ...
Gene expression measurements have successfully been used for building prognostic signatures, i.e for...
A large number of studies have been performed to iden-tify biomarkers that will allow efficient dete...
BACKGROUND: High-dimensional molecular measurements, e.g. gene expression data, can be linked to cl...
Background: While high-dimensional molecular data such as microarray gene expression data have been ...
Hundreds of ''molecular signatures'' have been proposed in the literature to predict patient outcome...
Critical to the development of molecular signatures from microarray and other high-throughput data i...
Critical to the development of molecular signatures from microarray and other high-throughput data i...
In biomedical research, boosting-based regression approaches have gained much attention in the last ...
Motivation: In the context of clinical bioinformatics methods are needed for assessing the additiona...
In the last years, the importance of an independent validation for the prediction ability of a new g...
Background: In the last years, the importance of independent validation of the prediction ability of...
This research evaluates pattern recognition techniques on a subclass of big data where the dimension...
Progress in molecular high-throughput techniques has led to the opportunity of a comprehensive monit...
Motivation: Patient outcome prediction using microarray technologies is an important application in ...
Added predictive value of omics data: specific issues related to validation illustrated by two case ...
Gene expression measurements have successfully been used for building prognostic signatures, i.e for...
A large number of studies have been performed to iden-tify biomarkers that will allow efficient dete...
BACKGROUND: High-dimensional molecular measurements, e.g. gene expression data, can be linked to cl...