<div><p>In omics experiments, variable selection involves a large number of metabolites/ genes and a small number of samples (the <i>n</i> < <i>p</i> problem). The ultimate goal is often the identification of one, or a few features that are different among conditions- a biomarker. Complicating biomarker identification, the <i>p</i> variables often contain a correlation structure due to the biology of the experiment making identifying causal compounds from correlated compounds difficult. Additionally, there may be elements in the experimental design (blocks, batches) that introduce structure in the data. While this problem has been discussed in the literature and various strategies proposed, the over fitting problems concomitant with such ap...
Recent technological advances in molecular biology have given rise to numerous large-scale datasets ...
Statistical modeling is an important area of biomarker research of important genes for new drug targ...
Background. Biomarker selection, i.e., the definition of which variables are important in statistica...
In omics experiments, variable selection involves a large number of metabolites/ genes and a small n...
<p>Visualization of power (left column) and Type I error (right column) estimates comparison between...
<p>Visualization of power (left column) and Type I error (right column) estimates. Comparison betwee...
The recent fields of transcriptomics, metabolomics, proteomics, often summarized under the heading “...
The recent fields of transcriptomics, metabolomics, proteomics, often summarized under the heading “...
Genomics-based technologies produce large amounts of data. To interpret the results and identify the...
Genomics-based technologies produce large amounts of data. To interpret the results and identify the...
Genomics-based technologies produce large amounts of data. To interpret the results and identify the...
In this thesis, we address the identification of biomarkers in high-dimensional omics data. The iden...
The Omics revolution has provided the researcher with tools and methodologies for qualitative and qu...
The Omics revolution has provided the researcher with tools and methodologies for qualitative and qu...
In this thesis, we address the identification of biomarkers in high-dimensional omics data. The iden...
Recent technological advances in molecular biology have given rise to numerous large-scale datasets ...
Statistical modeling is an important area of biomarker research of important genes for new drug targ...
Background. Biomarker selection, i.e., the definition of which variables are important in statistica...
In omics experiments, variable selection involves a large number of metabolites/ genes and a small n...
<p>Visualization of power (left column) and Type I error (right column) estimates comparison between...
<p>Visualization of power (left column) and Type I error (right column) estimates. Comparison betwee...
The recent fields of transcriptomics, metabolomics, proteomics, often summarized under the heading “...
The recent fields of transcriptomics, metabolomics, proteomics, often summarized under the heading “...
Genomics-based technologies produce large amounts of data. To interpret the results and identify the...
Genomics-based technologies produce large amounts of data. To interpret the results and identify the...
Genomics-based technologies produce large amounts of data. To interpret the results and identify the...
In this thesis, we address the identification of biomarkers in high-dimensional omics data. The iden...
The Omics revolution has provided the researcher with tools and methodologies for qualitative and qu...
The Omics revolution has provided the researcher with tools and methodologies for qualitative and qu...
In this thesis, we address the identification of biomarkers in high-dimensional omics data. The iden...
Recent technological advances in molecular biology have given rise to numerous large-scale datasets ...
Statistical modeling is an important area of biomarker research of important genes for new drug targ...
Background. Biomarker selection, i.e., the definition of which variables are important in statistica...