Hi there,
Sorry, this is my first time posting an issue for an R package so I am unsure what is standard protocol. If you need me to submit a full markdown file then I could probably do that.
I am trying to use the GxE_interaction_test() command. I have combined data from 4 different cohorts. I have one measure of the environment and one measure of their temperament (the "genes" component for my analysis).
Originally I used GxE_interaction_test() without accounting for cohort effects (first image- this all looks fine to me). This is partially because I had standardised all the cohort's data before pooling so it had a mean of 0 and an SD of 1 but also because I couldn't get the lme4=TRUE option to work correctly. Now I have had feedback from peer reviewers where they are asking for a linear mixed model.
The problem I have is that when using LME4=TRUE I get the exact same AIC/BIC values for multiple competing models (second image), which I do not think should be possible. In particular, it looks like the main effects of the genes and environment are being included in all models as the intercept-only model/no interaction models have the same AIC/BIC values as the G+E model, and it seems to be saying that when I look at the coeficients for these models (third image).
Am I doing something wrong in the formulation of the formula? I have tried modifying the specification of the random effects- I would ideally only test for random slopes by cohort- and I have tried not including the covariates but I keep getting the same AIC for all models not including interactions when using LME4.
Any help would be much appreciated!
Rob



Hi there,
Sorry, this is my first time posting an issue for an R package so I am unsure what is standard protocol. If you need me to submit a full markdown file then I could probably do that.
I am trying to use the GxE_interaction_test() command. I have combined data from 4 different cohorts. I have one measure of the environment and one measure of their temperament (the "genes" component for my analysis).
Originally I used GxE_interaction_test() without accounting for cohort effects (first image- this all looks fine to me). This is partially because I had standardised all the cohort's data before pooling so it had a mean of 0 and an SD of 1 but also because I couldn't get the lme4=TRUE option to work correctly. Now I have had feedback from peer reviewers where they are asking for a linear mixed model.
The problem I have is that when using LME4=TRUE I get the exact same AIC/BIC values for multiple competing models (second image), which I do not think should be possible. In particular, it looks like the main effects of the genes and environment are being included in all models as the intercept-only model/no interaction models have the same AIC/BIC values as the G+E model, and it seems to be saying that when I look at the coeficients for these models (third image).
Am I doing something wrong in the formulation of the formula? I have tried modifying the specification of the random effects- I would ideally only test for random slopes by cohort- and I have tried not including the covariates but I keep getting the same AIC for all models not including interactions when using LME4.
Any help would be much appreciated!
Rob