Modern genomic data sets often involve multiple data-layers (e.g., DNA-sequence, gene expression), each of which itself can be high-dimensional. The biological processes underlying these data-layers can lead to intricate multivariate association patterns. We propose and evaluate two methods to determine the proportion of variance of an output data set that can be explained by an input data set when both data panels are high dimensional. Our approach uses random-effects models to estimate the proportion of variance of vectors in the linear span of the output set that can be explained by regression on the input set. We consider a method based on an orthogonal basis (Eigen-ANOVA) and one that uses random vectors (Monte Carlo ANOVA, MC-ANOVA) i...
Experimental variance is a major challenge when dealing with high-throughput sequencing data. This v...
Motivation: Microarray technology enables the monitoring of expression levels for thousands of genes...
<p>Two-way ANOVA statistical analysis of the expression of genes involved in epigenetic regulatory m...
The ever more complex and larger datasets that statisticians can routinely access have prompted the ...
ANOVA provides a general approach to the analysis of single and multiple factor experiments on both ...
Motivation: Analysis of variance (ANOVA)-type methods are the default tool for the analysis of data ...
Often in genomic studies, understanding the heterogeneity among the samples can be helpful to addres...
With the advancements in DNA sequencing technology and the decreasing cost of sequencing, there has ...
Spotted cDNA microarrays are emerging as a powerful and cost-effective tool for large-scale analysis...
Experimental variance is a major challenge when dealing with high-throughput sequencing data. This v...
In functional genomics it is more rule than exception that experimental designs are used to generate...
Motivation: Designed microarray experiments are used to investigate the effects that controlled expe...
In this dissertation, we propose methodology to analyze high dimensional genomics data, in which the...
Motivation: Microarray technology enables the monitoring of expression levels for thousands of genes...
<p>The x-axis shows the components of the 3-way ANOVA model and the y-axis shows the median signal t...
Experimental variance is a major challenge when dealing with high-throughput sequencing data. This v...
Motivation: Microarray technology enables the monitoring of expression levels for thousands of genes...
<p>Two-way ANOVA statistical analysis of the expression of genes involved in epigenetic regulatory m...
The ever more complex and larger datasets that statisticians can routinely access have prompted the ...
ANOVA provides a general approach to the analysis of single and multiple factor experiments on both ...
Motivation: Analysis of variance (ANOVA)-type methods are the default tool for the analysis of data ...
Often in genomic studies, understanding the heterogeneity among the samples can be helpful to addres...
With the advancements in DNA sequencing technology and the decreasing cost of sequencing, there has ...
Spotted cDNA microarrays are emerging as a powerful and cost-effective tool for large-scale analysis...
Experimental variance is a major challenge when dealing with high-throughput sequencing data. This v...
In functional genomics it is more rule than exception that experimental designs are used to generate...
Motivation: Designed microarray experiments are used to investigate the effects that controlled expe...
In this dissertation, we propose methodology to analyze high dimensional genomics data, in which the...
Motivation: Microarray technology enables the monitoring of expression levels for thousands of genes...
<p>The x-axis shows the components of the 3-way ANOVA model and the y-axis shows the median signal t...
Experimental variance is a major challenge when dealing with high-throughput sequencing data. This v...
Motivation: Microarray technology enables the monitoring of expression levels for thousands of genes...
<p>Two-way ANOVA statistical analysis of the expression of genes involved in epigenetic regulatory m...