To raise the power of genome-wide association studies (GWAS) and avoid false-positive results in structured populations, one can rely on mixed model based tests. When large samples are used, and when multiple traits are to be studied in the ’omics’ context, this approach becomes computationally challenging. Here we consider the problem of mixed-model based GWAS for arbitrary number of traits, and demonstrate that for the analysis of single-trait and multiple-trait scenarios different computational algorithms are optimal. We implement these optimal algorithms in a high-performance computing framework that uses state-of-the-art linear algebra kernels, incorporates optimizations, and avoids redundant computations, increasing throughput while r...
Abstract Background A quantitative trait is controlled both by major variants with large genetic eff...
Motivated by genome-wide association studies, we consider a standard linear model with one additiona...
Motivated by genome-wide association studies, we consider a standard linear model with one additiona...
To raise the power of genome-wide association studies (GWAS) and avoid false-positive results in str...
The genome-wide association study (GWAS) has been widely used as an experimental design to detect as...
Linear mixed models have attracted considerable recent attention as a powerful and effective tool fo...
Multivariate linear mixed models (mvLMMs) have been widely used in many areas of genet-ics, and have...
The OmicABEL (pronounced as "amicable") package allows rapid mixed-model based genome-wide associati...
Linear mixed models are a powerful statistical tool for identifying genetic associations and avoidin...
Linear mixed models are a powerful statistical tool for identifying genetic associations and avoidin...
The state of the art GWAS under the linear mixed model framework, although vastly improved, still su...
The state of the art GWAS under the linear mixed model framework, although vastly improved, still su...
Linear mixed models are a powerful statistical tool for identifying genetic associations and avoidin...
Linear mixed models are a powerful statistical tool for identifying genetic associations and avoidin...
<p>The OmicABEL (pronounced as "amicable") package allows rapid mixed-model based genome-wide associ...
Abstract Background A quantitative trait is controlled both by major variants with large genetic eff...
Motivated by genome-wide association studies, we consider a standard linear model with one additiona...
Motivated by genome-wide association studies, we consider a standard linear model with one additiona...
To raise the power of genome-wide association studies (GWAS) and avoid false-positive results in str...
The genome-wide association study (GWAS) has been widely used as an experimental design to detect as...
Linear mixed models have attracted considerable recent attention as a powerful and effective tool fo...
Multivariate linear mixed models (mvLMMs) have been widely used in many areas of genet-ics, and have...
The OmicABEL (pronounced as "amicable") package allows rapid mixed-model based genome-wide associati...
Linear mixed models are a powerful statistical tool for identifying genetic associations and avoidin...
Linear mixed models are a powerful statistical tool for identifying genetic associations and avoidin...
The state of the art GWAS under the linear mixed model framework, although vastly improved, still su...
The state of the art GWAS under the linear mixed model framework, although vastly improved, still su...
Linear mixed models are a powerful statistical tool for identifying genetic associations and avoidin...
Linear mixed models are a powerful statistical tool for identifying genetic associations and avoidin...
<p>The OmicABEL (pronounced as "amicable") package allows rapid mixed-model based genome-wide associ...
Abstract Background A quantitative trait is controlled both by major variants with large genetic eff...
Motivated by genome-wide association studies, we consider a standard linear model with one additiona...
Motivated by genome-wide association studies, we consider a standard linear model with one additiona...