none3siBuilding prediction models based on complex omics datasets such as transcriptomics, proteomics, metabolomics remains a challenge in bioinformatics and biostatistics. Regularized regression techniques are typically used to deal with the high dimensionality of these datasets. However, due to the presence of correlation in the datasets, it is difficult to select the best model and application of these methods yields unstable results. We propose a novel strategy for model selection where the obtained models also perform well in terms of overall predictability. Several three step approaches are considered, where the steps are 1) network construction, 2) clustering to empirically derive modules or pathways, and 3) building a prediction mod...
Abstract Background Stratification of patient subpopulations that respond favorably to treatment or ...
It is now a standard practice in the study of complex disease to perform many high-throughput -omic ...
Developing efficient feature selection and accurate outcome prediction algorithms is a major and oft...
<div><p>Building prediction models based on complex omics datasets such as transcriptomics, proteomi...
Building prediction models based on complex omics datasets such as transcriptomics, proteomics, meta...
Building prediction models based on complex omics datasets such as transcriptomics, proteomics, meta...
Building prediction models based on complex omics datasets such as transcriptomics, proteomics, meta...
International audienceBackground: Recent advances in biotechnology enable the acquisition of high-di...
International audienceBackground: Recent advances in biotechnology enable the acquisition of high-di...
International audienceBackground: Recent advances in biotechnology enable the acquisition of high-di...
International audienceBackground: Recent advances in biotechnology enable the acquisition of high-di...
International audienceBackground: Recent advances in biotechnology enable the acquisition of high-di...
In cancer genomic studies, an important objective is to identify prognostic markers associated with ...
In cancer genomic studies, an important objective is to identify prognostic markers associated with ...
It is now a standard practice in the study of complex disease to perform many high-throughput -omic ...
Abstract Background Stratification of patient subpopulations that respond favorably to treatment or ...
It is now a standard practice in the study of complex disease to perform many high-throughput -omic ...
Developing efficient feature selection and accurate outcome prediction algorithms is a major and oft...
<div><p>Building prediction models based on complex omics datasets such as transcriptomics, proteomi...
Building prediction models based on complex omics datasets such as transcriptomics, proteomics, meta...
Building prediction models based on complex omics datasets such as transcriptomics, proteomics, meta...
Building prediction models based on complex omics datasets such as transcriptomics, proteomics, meta...
International audienceBackground: Recent advances in biotechnology enable the acquisition of high-di...
International audienceBackground: Recent advances in biotechnology enable the acquisition of high-di...
International audienceBackground: Recent advances in biotechnology enable the acquisition of high-di...
International audienceBackground: Recent advances in biotechnology enable the acquisition of high-di...
International audienceBackground: Recent advances in biotechnology enable the acquisition of high-di...
In cancer genomic studies, an important objective is to identify prognostic markers associated with ...
In cancer genomic studies, an important objective is to identify prognostic markers associated with ...
It is now a standard practice in the study of complex disease to perform many high-throughput -omic ...
Abstract Background Stratification of patient subpopulations that respond favorably to treatment or ...
It is now a standard practice in the study of complex disease to perform many high-throughput -omic ...
Developing efficient feature selection and accurate outcome prediction algorithms is a major and oft...