[[abstract]]RNA interference (RNAi) is an endogenous cellular process in which small double-stranded RNAs lead to the destruction of mRNAs with complementary nucleoside sequence. With the production of RNAi libraries, large-scale RNAi screening in human cells can be conducted to identify unknown genes involved in a biological pathway. One challenge researchers face is how to deal with the multiple testing issue and the related false positive rate (FDR) and false negative rate (FNR). This paper proposes a Bayesian hierarchical measurement error model for the analysis of data from a two-channel RNAi high-throughput experiment with replicates, in which both the activity of a particular biological pathway and cell viability are monitored and th...
MOTIVATION: Microarray studies permit to quantify expression levels on a global scale by measuring t...
<div><p>Systematic, genome-wide RNA interference (RNAi) analysis is a powerful approach to identify ...
We develop a Bayesian framework for the analysis of high-throughput sequencing count data under a va...
[[abstract]]RNA interference (RNAi) is an endogenous cellular process in which small double-stranded...
RNA interference (RNAi) is a modality in which small double-stranded RNA molecules (siRNAs) designed...
Isogenic cells in culture show strong variability, which arises from dynamic adaptations to the micr...
For hit selection in genome-scale RNAi research, we do not want to miss small interfering RNAs (siRN...
We describe a statistical analysis methodology designed to minimize the impact of off-target activit...
In this work, we present in-depth applications of Bayesian probability theory to several problems of...
AbstractRNA interference (RNAi) high-throughput screening (HTS) enables massive parallel gene silenc...
With the advent of RNA sequencing and other high- throughput molecular assays, RNA biology has recen...
Abstract Background RNA interference (RNAi) has been seen as a revolution in functional genomics and...
Next generation sequencing is quickly replacing microarrays as a technique to probe different molecu...
A major issue of current virology concerns the characterization of cellular proteins that operate as...
RNA interference (RNAi) has become a powerful technique for reverse genetics and drug discovery, and...
MOTIVATION: Microarray studies permit to quantify expression levels on a global scale by measuring t...
<div><p>Systematic, genome-wide RNA interference (RNAi) analysis is a powerful approach to identify ...
We develop a Bayesian framework for the analysis of high-throughput sequencing count data under a va...
[[abstract]]RNA interference (RNAi) is an endogenous cellular process in which small double-stranded...
RNA interference (RNAi) is a modality in which small double-stranded RNA molecules (siRNAs) designed...
Isogenic cells in culture show strong variability, which arises from dynamic adaptations to the micr...
For hit selection in genome-scale RNAi research, we do not want to miss small interfering RNAs (siRN...
We describe a statistical analysis methodology designed to minimize the impact of off-target activit...
In this work, we present in-depth applications of Bayesian probability theory to several problems of...
AbstractRNA interference (RNAi) high-throughput screening (HTS) enables massive parallel gene silenc...
With the advent of RNA sequencing and other high- throughput molecular assays, RNA biology has recen...
Abstract Background RNA interference (RNAi) has been seen as a revolution in functional genomics and...
Next generation sequencing is quickly replacing microarrays as a technique to probe different molecu...
A major issue of current virology concerns the characterization of cellular proteins that operate as...
RNA interference (RNAi) has become a powerful technique for reverse genetics and drug discovery, and...
MOTIVATION: Microarray studies permit to quantify expression levels on a global scale by measuring t...
<div><p>Systematic, genome-wide RNA interference (RNAi) analysis is a powerful approach to identify ...
We develop a Bayesian framework for the analysis of high-throughput sequencing count data under a va...