Background Increasingly, genetic analyses are conducted using information from subjects with established disease, who often receive concomitant treatment. We determined when treatment may bias genetic associations with a quantitative trait. Methods Graph theory and simulated data were used to explore the impact of drug prescriptions on (longitudinal) genetic effect estimates. Analytic derivations of longitudinal genetic effects are presented, accounting for the following scenarios: 1) treatment allocated independently of a genetic variant, 2) treatment that mediates the genetic effect, 3) treatment that modifies the genetic effect. We additionally evaluate treatment modelling strategies on bias, the root mean squared error (RMSE), coverage,...
In pharmacogenomic studies of quantitative change, any association between genetic variants and the ...
Drugs whose targets have genetic evidence to support efficacy and safety are more likely to be appro...
CONTEXT: In a previous work, we have shown that penalized regression approaches can allow many genet...
Background Increasingly, genetic analyses are conducted using information from subjects with establi...
BackgroundIncreasingly, genetic analyses are conducted using information from subjects with establis...
BackgroundIncreasingly, genetic analyses are conducted using information from subjects with establis...
International audienceIn recent years, a number of large-scale genome-wide association studies have ...
The use of genetic data can be of great benefit in drug development. When analysed with appropriate ...
AbstractMendelian randomization methods, which use genetic variants as instrumental variables for ex...
Evidence on the validity of drug targets from randomized trials is reliable but typically expensive ...
Genome-wide association studies have provided many genetic markers that can be used as instrumental ...
BACKGROUND: Mendelian randomization uses genetic variants, assumed to be instrumental variables for ...
Mendelian randomization is the use of genetic variants to assess the effect of intervening on a risk...
Objectives: when a health problem is perceived as having a genetic cause, this appears to increase t...
Drugs whose targets have genetic evidence to support efficacy and safety are more likely to be appro...
In pharmacogenomic studies of quantitative change, any association between genetic variants and the ...
Drugs whose targets have genetic evidence to support efficacy and safety are more likely to be appro...
CONTEXT: In a previous work, we have shown that penalized regression approaches can allow many genet...
Background Increasingly, genetic analyses are conducted using information from subjects with establi...
BackgroundIncreasingly, genetic analyses are conducted using information from subjects with establis...
BackgroundIncreasingly, genetic analyses are conducted using information from subjects with establis...
International audienceIn recent years, a number of large-scale genome-wide association studies have ...
The use of genetic data can be of great benefit in drug development. When analysed with appropriate ...
AbstractMendelian randomization methods, which use genetic variants as instrumental variables for ex...
Evidence on the validity of drug targets from randomized trials is reliable but typically expensive ...
Genome-wide association studies have provided many genetic markers that can be used as instrumental ...
BACKGROUND: Mendelian randomization uses genetic variants, assumed to be instrumental variables for ...
Mendelian randomization is the use of genetic variants to assess the effect of intervening on a risk...
Objectives: when a health problem is perceived as having a genetic cause, this appears to increase t...
Drugs whose targets have genetic evidence to support efficacy and safety are more likely to be appro...
In pharmacogenomic studies of quantitative change, any association between genetic variants and the ...
Drugs whose targets have genetic evidence to support efficacy and safety are more likely to be appro...
CONTEXT: In a previous work, we have shown that penalized regression approaches can allow many genet...