Although complex diseases and traits are thought to have multifactorial genetic basis, the common methods in genome-wide association analyses test each variant for association independent of the others. This computational simplification may lead to reduced power to identify variants with small effect sizes and requires correcting for multiple hypothesis tests with complex relationships. However, advances in computational methods and increase in computational resources are enabling the computation of models that adhere more closely to the theory of multifactorial inheritance. Here, a Bayesian variable selection and model averaging approach is formulated for searching for additive and dominant genetic effects. The approach considers simultane...
Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clin...
Abstract Background Multi-mark...
With the advancements in DNA sequencing technology and the decreasing cost of sequencing, there has ...
Although complex diseases and traits are thought to have multifactorial genetic basis, the common me...
Although complex diseases and traits are thought to have multifactorial genetic basis, the common me...
Over the past several years genetic variation has been the centre of attention for different branche...
Over the past several years genetic variation has been the centre of attention for different branche...
Most genome-wide association studies search for genetic variants associated to a single trait of int...
The last decade has been characterized by an explosion of biological sequence information. When the ...
Multilocus analysis of single-nucleotide–polymorphism (SNP) haplotypes may provide evidence of assoc...
We develop statistical methods for tackling two important problems in genetic association studies. F...
We develop statistical methods for tackling two important problems in genetic association studies. F...
The Bayesian approach to model selection allows for uncertainty in both model spe-cific parameters a...
Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clin...
The global aim of this dissertation is to develop advanced statistical modeling to understand the ge...
Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clin...
Abstract Background Multi-mark...
With the advancements in DNA sequencing technology and the decreasing cost of sequencing, there has ...
Although complex diseases and traits are thought to have multifactorial genetic basis, the common me...
Although complex diseases and traits are thought to have multifactorial genetic basis, the common me...
Over the past several years genetic variation has been the centre of attention for different branche...
Over the past several years genetic variation has been the centre of attention for different branche...
Most genome-wide association studies search for genetic variants associated to a single trait of int...
The last decade has been characterized by an explosion of biological sequence information. When the ...
Multilocus analysis of single-nucleotide–polymorphism (SNP) haplotypes may provide evidence of assoc...
We develop statistical methods for tackling two important problems in genetic association studies. F...
We develop statistical methods for tackling two important problems in genetic association studies. F...
The Bayesian approach to model selection allows for uncertainty in both model spe-cific parameters a...
Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clin...
The global aim of this dissertation is to develop advanced statistical modeling to understand the ge...
Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clin...
Abstract Background Multi-mark...
With the advancements in DNA sequencing technology and the decreasing cost of sequencing, there has ...