Abstract Background Longitudinal measurement is commonly employed in health research and provides numerous benefits for understanding disease and trait progression over time. More broadly, it allows for proper treatment of correlated responses within clusters. We evaluated 3 methods for analyzing genome-by-epigenome interactions with longitudinal outcomes from family data. Results Linear mixed-effect models, generalized estimating equations, and quadratic inference functions were used to test a pharmacoepigenetic effect in 200 simulated posttreatment replicates. Adjustment for baseline outcome provided greater power and more accurate control of Type I error rates than computation of a pre-to-post change score. Conclusions Comparison of all ...
A longitudinal family study is an epidemiological design that involves repeated measurements over ti...
A longitudinal family study is an epidemiological design that involves repeated measurements over ti...
The importance of genetic determinants and risk factors of diseases has been consistently recognized...
Background: Longitudinal measurement is commonly employed in health research and provides numerous b...
The etiology of immune-related diseases or traits is often complex, involving many genetic and envir...
Background Longitudinal data and repeated measurements in epigenome-wide association...
Participants analyzed actual and simulated longitudinal data from the Framingham Heart Study for var...
Abstract Background The interactive effect of the IGF pathway genes with the environment may contrib...
Gene-environment (GE) interaction has important implications in the etiology of complex diseases tha...
Longitudinal genome-wide association studies provide us more information on the relationship between...
Abstract Background Statistical methods have been proposed recently to analyze longitudinal data in ...
A longitudinal family study is an epidemiological design that involves repeated measurements over ti...
Many clinical studies collect longitudinal biomarkers known to be highly associated with a time-to-e...
Background Increasingly, genetic analyses are conducted using information from subjects with establi...
Background Increasingly, genetic analyses are conducted using information from subjects with establi...
A longitudinal family study is an epidemiological design that involves repeated measurements over ti...
A longitudinal family study is an epidemiological design that involves repeated measurements over ti...
The importance of genetic determinants and risk factors of diseases has been consistently recognized...
Background: Longitudinal measurement is commonly employed in health research and provides numerous b...
The etiology of immune-related diseases or traits is often complex, involving many genetic and envir...
Background Longitudinal data and repeated measurements in epigenome-wide association...
Participants analyzed actual and simulated longitudinal data from the Framingham Heart Study for var...
Abstract Background The interactive effect of the IGF pathway genes with the environment may contrib...
Gene-environment (GE) interaction has important implications in the etiology of complex diseases tha...
Longitudinal genome-wide association studies provide us more information on the relationship between...
Abstract Background Statistical methods have been proposed recently to analyze longitudinal data in ...
A longitudinal family study is an epidemiological design that involves repeated measurements over ti...
Many clinical studies collect longitudinal biomarkers known to be highly associated with a time-to-e...
Background Increasingly, genetic analyses are conducted using information from subjects with establi...
Background Increasingly, genetic analyses are conducted using information from subjects with establi...
A longitudinal family study is an epidemiological design that involves repeated measurements over ti...
A longitudinal family study is an epidemiological design that involves repeated measurements over ti...
The importance of genetic determinants and risk factors of diseases has been consistently recognized...