Several methods have been proposed to estimate the variance in disease liability explained by large sets of genetic markers. However, current methods do not scale up well to large sample sizes. Linear mixed models require solving high-dimensional matrix equations, and methods that use polygenic scores are very computationally intensive. Here we propose a fast analytic method that uses polygenic scores, based on the formula for the non-centrality parameter of the association test of the score. We estimate model parameters from the results of multiple polygenic score tests based on markers with p values in different intervals. We estimate parameters by maximum likelihood and use profile likelihood to compute confidence intervals. We compare v...
Background: Spurious associations between single nucleotide polymorphisms and phenotypes are a major...
In genetic association studies, detecting phenotype–genotype association is a primary goal. We assum...
We study variance estimation and associated confidence intervals for parameters characterizing genet...
Several methods have been proposed to estimate the variance in disease liability explained by large ...
Polygenic scores have recently been used to summarise genetic effects among an ensemble of markers t...
<div><p>Polygenic scores have recently been used to summarise genetic effects among an ensemble of m...
Polygenic scores have recently been used to summarise genetic effects among an ensemble of markers t...
SUMMARY To quantify polygenic effects, i.e. undetected genetic effects, in large-scale association s...
Complex disorders are typically characterized by multiple phenotypes. Analyzing these phenotypes joi...
Much of the genetic basis of complex traits is present on current genotyping products, but the indiv...
Much of the genetic basis of complex traits is present on current genotyping products, but the indiv...
The variance component tests used in genome-wide association studies (GWAS) including large sample s...
Polygenic risk score (PRS) is a method that utilizes the effect sizes of genetic variants on a parti...
Large-scale cohorts with combined genetic and phenotypic data, coupled with methodological advances,...
We have recently developed analysis methods (GREML) to estimate the genetic variance of a complex tr...
Background: Spurious associations between single nucleotide polymorphisms and phenotypes are a major...
In genetic association studies, detecting phenotype–genotype association is a primary goal. We assum...
We study variance estimation and associated confidence intervals for parameters characterizing genet...
Several methods have been proposed to estimate the variance in disease liability explained by large ...
Polygenic scores have recently been used to summarise genetic effects among an ensemble of markers t...
<div><p>Polygenic scores have recently been used to summarise genetic effects among an ensemble of m...
Polygenic scores have recently been used to summarise genetic effects among an ensemble of markers t...
SUMMARY To quantify polygenic effects, i.e. undetected genetic effects, in large-scale association s...
Complex disorders are typically characterized by multiple phenotypes. Analyzing these phenotypes joi...
Much of the genetic basis of complex traits is present on current genotyping products, but the indiv...
Much of the genetic basis of complex traits is present on current genotyping products, but the indiv...
The variance component tests used in genome-wide association studies (GWAS) including large sample s...
Polygenic risk score (PRS) is a method that utilizes the effect sizes of genetic variants on a parti...
Large-scale cohorts with combined genetic and phenotypic data, coupled with methodological advances,...
We have recently developed analysis methods (GREML) to estimate the genetic variance of a complex tr...
Background: Spurious associations between single nucleotide polymorphisms and phenotypes are a major...
In genetic association studies, detecting phenotype–genotype association is a primary goal. We assum...
We study variance estimation and associated confidence intervals for parameters characterizing genet...