A novel method for Bayesian analysis of genetic heterogeneity and multilocus association in random population samples is presented. The method is valid for quantitative and binary traits as well as for multiallelic markers. In the method, individuals are stochastically assigned into two etiological groups that can have both their own, and possibly different, subsets of trait-associated (disease-predisposing) loci or alleles. The method is favorable especially in situations when etiological models are stratified by the factors that are unknown or went unmeasured, that is, if genetic heterogeneity is due to, for example, unknown genes X environment or genes X gene interactions. Additionally, a heterogeneity structure for the phenotype does no...
Pedigree studies of complex heritable diseases often feature nominal or ordinal phenotypic measureme...
Title: Bayesian Hierarchical Model for Genetic Association with Multiple Correlated Phenotypes. Aut...
Association mapping for complex diseases using unrelated individuals can be more powerful than famil...
A novel method for Bayesian analysis of genetic heterogeneity and multilocus association in random p...
In genetic association analyses, it is often desired to analyze data from multiple potentially-heter...
Over the past several years genetic variation has been the centre of attention for different branche...
Standard techniques for single marker quantitative trait mapping perform poorly in detecting complex...
In this dissertation research, we tackle the statistical problem of analyzing potentially heterogene...
Genetic association analyses often involve data from multiple potentially-heterogeneous subgroups. T...
A Bayesian method for fine mapping is presented, which deals with multiallelic markers (with two or ...
We consider the problem of assessing associations between multiple related outcome variables, and a ...
Most genome-wide association studies search for genetic variants associated to a single trait of int...
We present a range of modelling components designed to facilitate Bayesian analysis of genetic-assoc...
We consider the problem of assessing associations between multiple related outcome variables, and a ...
Pedigree studies of complex heritable diseases often feature nominal or ordinal phenotypic measureme...
Pedigree studies of complex heritable diseases often feature nominal or ordinal phenotypic measureme...
Title: Bayesian Hierarchical Model for Genetic Association with Multiple Correlated Phenotypes. Aut...
Association mapping for complex diseases using unrelated individuals can be more powerful than famil...
A novel method for Bayesian analysis of genetic heterogeneity and multilocus association in random p...
In genetic association analyses, it is often desired to analyze data from multiple potentially-heter...
Over the past several years genetic variation has been the centre of attention for different branche...
Standard techniques for single marker quantitative trait mapping perform poorly in detecting complex...
In this dissertation research, we tackle the statistical problem of analyzing potentially heterogene...
Genetic association analyses often involve data from multiple potentially-heterogeneous subgroups. T...
A Bayesian method for fine mapping is presented, which deals with multiallelic markers (with two or ...
We consider the problem of assessing associations between multiple related outcome variables, and a ...
Most genome-wide association studies search for genetic variants associated to a single trait of int...
We present a range of modelling components designed to facilitate Bayesian analysis of genetic-assoc...
We consider the problem of assessing associations between multiple related outcome variables, and a ...
Pedigree studies of complex heritable diseases often feature nominal or ordinal phenotypic measureme...
Pedigree studies of complex heritable diseases often feature nominal or ordinal phenotypic measureme...
Title: Bayesian Hierarchical Model for Genetic Association with Multiple Correlated Phenotypes. Aut...
Association mapping for complex diseases using unrelated individuals can be more powerful than famil...