A major limitation of gene expression biomarker studies is that they are not reproducible as they simply do not generalize to larger, real-world, heterogeneous populations. Frequentist multi-cohort gene expression meta-analysis has been frequently used as a solution to this problem to identify biomarkers that are truly differentially expressed. However, the frequentist meta-analysis framework has its limitations-it needs at least 4-5 datasets with hundreds of samples, is prone to confounding from outliers and relies on multiple-hypothesis corrected p-values. To address these shortcomings, we have created a Bayesian meta-analysis framework for the analysis of gene expression data. Using real-world data from three different diseases, we show ...
We review the use of Bayesian methods for analyzing gene expression data. We focus on methods which ...
Genomics profiling based on high dimensional data from high throughput experiments that measure the ...
Abstract Background Random-effects (RE) models are commonly applied to account for heterogeneity in ...
With the advent of high-throughput technologies, biomedical research has been dramatically reshaped ...
Background With the growing abundance of microarray data, statistical methods are increasingly neede...
Combining effect sizes from individual studies using random-effects models are commonly applied in h...
Random-effects meta-analysis models are commonly applied in combining effect sizes from individual g...
Genetic markers can be used as instrumental variables, in an analogous way to randomization in a cli...
With the availability of tons of expression profiles, the need for meta-analyses to integratediffere...
Meta-analysis is a vital tool in genetic epidemiology. However, meta-analyses to identify gene-disea...
Meta-analysis is a vital tool in genetic epidemiology. However, meta-analyses to identify gene-disea...
Due to the large accumulation of omics data sets in public repositories, innumerable studies have be...
AbstractDifferential gene expression analysis between healthy and diseased groups is a widely used a...
Innovations in the design and implementation of high-throughput technologies has shifted biological ...
CRP CHD Genetics Collaboration member: L. J. Palmer for the Western Australia Institute for Medical ...
We review the use of Bayesian methods for analyzing gene expression data. We focus on methods which ...
Genomics profiling based on high dimensional data from high throughput experiments that measure the ...
Abstract Background Random-effects (RE) models are commonly applied to account for heterogeneity in ...
With the advent of high-throughput technologies, biomedical research has been dramatically reshaped ...
Background With the growing abundance of microarray data, statistical methods are increasingly neede...
Combining effect sizes from individual studies using random-effects models are commonly applied in h...
Random-effects meta-analysis models are commonly applied in combining effect sizes from individual g...
Genetic markers can be used as instrumental variables, in an analogous way to randomization in a cli...
With the availability of tons of expression profiles, the need for meta-analyses to integratediffere...
Meta-analysis is a vital tool in genetic epidemiology. However, meta-analyses to identify gene-disea...
Meta-analysis is a vital tool in genetic epidemiology. However, meta-analyses to identify gene-disea...
Due to the large accumulation of omics data sets in public repositories, innumerable studies have be...
AbstractDifferential gene expression analysis between healthy and diseased groups is a widely used a...
Innovations in the design and implementation of high-throughput technologies has shifted biological ...
CRP CHD Genetics Collaboration member: L. J. Palmer for the Western Australia Institute for Medical ...
We review the use of Bayesian methods for analyzing gene expression data. We focus on methods which ...
Genomics profiling based on high dimensional data from high throughput experiments that measure the ...
Abstract Background Random-effects (RE) models are commonly applied to account for heterogeneity in ...