High-dimensional data applications often entail the use of various statistical and machine-learning algorithms to identify an optimal signature based on biomarkers and other patient characteristics that predicts the desired clinical outcome in biomedical research. Both the composition and predictive performance of such biomarker signatures are critical in various biomedical research applications. In the presence of a large number of features, however, a conventional regression analysis approach fails to yield a good prediction model. A widely used remedy is to introduce regularization in fitting the relevant regression model. In particular, a L1 penalty on the regression coefficients is extremely useful, and very efficient numerical algorit...
With widespread availability of omics profiling techniques, the analysis and interpretation of high-...
Abstract Background Thanks to the advances in genomics and targeted treatments, more and more predic...
In many application areas, prediction rules trained based on high-dimensional data are subsequently ...
The growing role of targeted medicine has led to an increased focus on the development of actionable...
In personalized medicine, biomarkers are used to select therapies with the highest likelihood of suc...
Linear regression models are commonly used statistical models for predicting a response from a set o...
In biomedical research, boosting-based regression approaches have gained much attention in the last ...
In biomedical research, boosting-based regression approaches have gained much attention in the last ...
In biomedical research, boosting-based regression approaches have gained much attention in the last ...
In biomedical research, boosting-based regression approaches have gained much attention in the last ...
International audienceBackground: Thanks to the advances in genomics and targeted treatments, more a...
International audienceBackground: Thanks to the advances in genomics and targeted treatments, more a...
International audienceBackground: Thanks to the advances in genomics and targeted treatments, more a...
International audienceBackground: Thanks to the advances in genomics and targeted treatments, more a...
International audienceBackground: Thanks to the advances in genomics and targeted treatments, more a...
With widespread availability of omics profiling techniques, the analysis and interpretation of high-...
Abstract Background Thanks to the advances in genomics and targeted treatments, more and more predic...
In many application areas, prediction rules trained based on high-dimensional data are subsequently ...
The growing role of targeted medicine has led to an increased focus on the development of actionable...
In personalized medicine, biomarkers are used to select therapies with the highest likelihood of suc...
Linear regression models are commonly used statistical models for predicting a response from a set o...
In biomedical research, boosting-based regression approaches have gained much attention in the last ...
In biomedical research, boosting-based regression approaches have gained much attention in the last ...
In biomedical research, boosting-based regression approaches have gained much attention in the last ...
In biomedical research, boosting-based regression approaches have gained much attention in the last ...
International audienceBackground: Thanks to the advances in genomics and targeted treatments, more a...
International audienceBackground: Thanks to the advances in genomics and targeted treatments, more a...
International audienceBackground: Thanks to the advances in genomics and targeted treatments, more a...
International audienceBackground: Thanks to the advances in genomics and targeted treatments, more a...
International audienceBackground: Thanks to the advances in genomics and targeted treatments, more a...
With widespread availability of omics profiling techniques, the analysis and interpretation of high-...
Abstract Background Thanks to the advances in genomics and targeted treatments, more and more predic...
In many application areas, prediction rules trained based on high-dimensional data are subsequently ...