Genetic and environmental influences on variance in phenotypic traits may be estimated with normal theory Maximum Likelihood (ML). However, when the assumption of multivariate normality is not met, this method may result in biased parameter estimates and incorrect likelihood ratio tests. We simulated multivariate normal distributed twin data under the assumption of three different genetic models. Genetic model fitting was performed in six data sets: multivariate normal data, discrete uncensored data, censored data, square root transformed censored data, normal scores of censored data, and categorical data. Estimates were obtained with normal theory ML (data sets 1-5) and with categorical data analysis (data set 6). Statistical power was exa...
Family studies are often used in genetic research to explore associations between genetic markers an...
Genetic and environmental influences on variancein phenotypic traits may be estimated wit
We compare Bayesian methodology utilizing free-ware BUGS (Bayesian Inference Using Gibbs Sampling) w...
Genetic and environmental influences on variance in phenotypic traits may be estimated with normal t...
Genetic and environmental influences on variance in phenotypic traits may be estimated with normal t...
Parameters of quantitative genetic models have traditionally been esti-mated by either algebraic man...
Simulations were used to study the influence of model adequacy and data structure on the estimation ...
For many multivariate twin models, the numerical Type I error rates are lower than theoretically exp...
The variance components models for gene-environment interaction proposed by Purcell in 2002 are wide...
The variance components models for gene-environment interaction proposed by Purcell in 2002 are wide...
A method for estimating variance and covariance components for both uncensored and censored traits i...
There is evidence in different species of genetic control of environmental variation, independent of...
Abstract There is evidence in different species of genetic control of environmental variation, indep...
This article concerns the power of various data analytic strategies to detect the effect of a single...
Current gene intensity-dependent normalization methods, based on regression smoothing techniques, us...
Family studies are often used in genetic research to explore associations between genetic markers an...
Genetic and environmental influences on variancein phenotypic traits may be estimated wit
We compare Bayesian methodology utilizing free-ware BUGS (Bayesian Inference Using Gibbs Sampling) w...
Genetic and environmental influences on variance in phenotypic traits may be estimated with normal t...
Genetic and environmental influences on variance in phenotypic traits may be estimated with normal t...
Parameters of quantitative genetic models have traditionally been esti-mated by either algebraic man...
Simulations were used to study the influence of model adequacy and data structure on the estimation ...
For many multivariate twin models, the numerical Type I error rates are lower than theoretically exp...
The variance components models for gene-environment interaction proposed by Purcell in 2002 are wide...
The variance components models for gene-environment interaction proposed by Purcell in 2002 are wide...
A method for estimating variance and covariance components for both uncensored and censored traits i...
There is evidence in different species of genetic control of environmental variation, independent of...
Abstract There is evidence in different species of genetic control of environmental variation, indep...
This article concerns the power of various data analytic strategies to detect the effect of a single...
Current gene intensity-dependent normalization methods, based on regression smoothing techniques, us...
Family studies are often used in genetic research to explore associations between genetic markers an...
Genetic and environmental influences on variancein phenotypic traits may be estimated wit
We compare Bayesian methodology utilizing free-ware BUGS (Bayesian Inference Using Gibbs Sampling) w...