Next generation sequencing is quickly replacing microarrays as a technique to probe different molecular levels of the cell, such as DNA or RNA. The technology provides higher resolution, while reducing bias. RNA sequencing results in counts of RNA strands. This type of data imposes new statistical challenges. We present a novel, generic approach to model and analyze such data. Our approach aims at large flexibility of the likelihood (count) model and the regression model alike. Hence, a variety of count models is supported, such as the popular NB model, which accounts for overdispersion. In addition, complex, non-balanced designs and random effects are accommodated. Like some other methods, our method provides shrinkage of dispersion-relate...
In this dissertation, I developed statistical and computational methods motivated by problems in gen...
Motivation: A number of penalization and shrinkage approaches have been proposed for the analysis of...
<div><p>Evaluating the similarity of different measured variables is a fundamental task of statistic...
Next generation sequencing is quickly replacing microarrays as a technique to probe different molecu...
We develop a Bayesian framework for the analysis of high-throughput sequencing count data under a va...
Three statistical models are developed to address problems in Next-Generation Sequencing data. The f...
5Abstract Motivation Cancers are composed by several heterogeneous subpopulations, each one harbou...
Background: Complex designs are common in (observational) clinical studies. Sequencing data for such...
Next-generation sequencing technologies provide a revolutionary tool for generating gene expres-sion...
High-throughput (HT) RNA interference (RNAi) screens are increasingly used for reverse genetics and ...
Shrinkage procedures have played an important role in helping improve estimation accuracy for a vari...
none4noIn the last few years, RNA-Seq has become a popular choice for highthroughput studies of gene...
Motivation:Normalisation of single cell RNA sequencing (scRNA-seq) data is a prerequisite to theirin...
NGS studies have uncovered an ever-growing catalog of human variation while leaving an enormous gap ...
Evaluating the similarity of different measured variables is a fundamental task of statistics, and a...
In this dissertation, I developed statistical and computational methods motivated by problems in gen...
Motivation: A number of penalization and shrinkage approaches have been proposed for the analysis of...
<div><p>Evaluating the similarity of different measured variables is a fundamental task of statistic...
Next generation sequencing is quickly replacing microarrays as a technique to probe different molecu...
We develop a Bayesian framework for the analysis of high-throughput sequencing count data under a va...
Three statistical models are developed to address problems in Next-Generation Sequencing data. The f...
5Abstract Motivation Cancers are composed by several heterogeneous subpopulations, each one harbou...
Background: Complex designs are common in (observational) clinical studies. Sequencing data for such...
Next-generation sequencing technologies provide a revolutionary tool for generating gene expres-sion...
High-throughput (HT) RNA interference (RNAi) screens are increasingly used for reverse genetics and ...
Shrinkage procedures have played an important role in helping improve estimation accuracy for a vari...
none4noIn the last few years, RNA-Seq has become a popular choice for highthroughput studies of gene...
Motivation:Normalisation of single cell RNA sequencing (scRNA-seq) data is a prerequisite to theirin...
NGS studies have uncovered an ever-growing catalog of human variation while leaving an enormous gap ...
Evaluating the similarity of different measured variables is a fundamental task of statistics, and a...
In this dissertation, I developed statistical and computational methods motivated by problems in gen...
Motivation: A number of penalization and shrinkage approaches have been proposed for the analysis of...
<div><p>Evaluating the similarity of different measured variables is a fundamental task of statistic...