Most association studies focus on disease risk, with less attention paid to disease progression or severity. These phenotypes require longitudinal data. This paper presents a new method for analyzing longitudinal data to map genes in both population-based and family-based studies. Using simulated systolic blood pressure measurements obtained from Genetic Analysis Workshop 18, we cluster the phenotype data into trajectory subgroups. We then use the Bayesian posterior probability of being in the high subgroup as a quantitative trait in an association analysis with genotype data. This method maintains high power (>80%) in locating genes known to affect the simulated phenotype for most specified significance levels (a). We believe that this ...
Background: Bayesian networks are powerful instruments to learn genetic models from association stud...
As the extent of human genetic variation becomes more fully characterized, the research community is...
As the extent of human genetic variation becomes more fully characterized, the research community is...
Most association studies focus on disease risk, with less attention paid to disease progression or s...
Background: Longitudinal phenotypic data provides a rich potential resource for genetic studies whic...
[[abstract]]Background: Longitudinal phenotypic data provides a rich potential resource for genetic ...
Pleiotropy, which occurs when a single genetic factor influences multiple phenotypes, is present in ...
Abstract Pleiotropy, which occurs when a single genetic factor influences multiple phe...
We develop statistical methods for tackling two important problems in genetic association studies. F...
The study of change in intermediate phenotypes over time is important in genetics. In this paper we ...
Most genome-wide association studies (GWAS) look for correlation between genetic variants and diseas...
In this study, we analyze the Genetic Analysis Workshop 18 data to identify the genes and underlying...
[[abstract]]It is essential to develop adequate statistical methods to fully utilize information fro...
© 2016 The Author(s). Background: The incorporation of longitudinal data into genetic epidemiologica...
We have extended our recently developed 2-step approach for gene-based analysis to the family design...
Background: Bayesian networks are powerful instruments to learn genetic models from association stud...
As the extent of human genetic variation becomes more fully characterized, the research community is...
As the extent of human genetic variation becomes more fully characterized, the research community is...
Most association studies focus on disease risk, with less attention paid to disease progression or s...
Background: Longitudinal phenotypic data provides a rich potential resource for genetic studies whic...
[[abstract]]Background: Longitudinal phenotypic data provides a rich potential resource for genetic ...
Pleiotropy, which occurs when a single genetic factor influences multiple phenotypes, is present in ...
Abstract Pleiotropy, which occurs when a single genetic factor influences multiple phe...
We develop statistical methods for tackling two important problems in genetic association studies. F...
The study of change in intermediate phenotypes over time is important in genetics. In this paper we ...
Most genome-wide association studies (GWAS) look for correlation between genetic variants and diseas...
In this study, we analyze the Genetic Analysis Workshop 18 data to identify the genes and underlying...
[[abstract]]It is essential to develop adequate statistical methods to fully utilize information fro...
© 2016 The Author(s). Background: The incorporation of longitudinal data into genetic epidemiologica...
We have extended our recently developed 2-step approach for gene-based analysis to the family design...
Background: Bayesian networks are powerful instruments to learn genetic models from association stud...
As the extent of human genetic variation becomes more fully characterized, the research community is...
As the extent of human genetic variation becomes more fully characterized, the research community is...