The data is: https://ibb.co/ry7GmwL
My model is:
lmerTest::lmer(Depression ~ Adaptive_cers*Time*Group + (1|ID),
data = data, REML = TRUE)
Depression has two values (repeated DepressiveM_1 and DepressiveM_2), Adaptive_cers is continuous, and there are two Groups.
My result is:
Estimate Std. Error
(Intercept) 20.89811 2.10492***
Adaptive_cers -0.20528 0.06753**
TimeDepressiveM_2 -1.02267 1.14710
GroupExperiment -2.66099 3.02068
Adaptive_cers:TimeDepressiveM_2 0.01897 0.03680
Adaptive_cers:GroupExperiment 0.07625 0.09661
TimeDepressiveM_2:GroupExperiment 4.36796 1.64695*
Adaptive_cers:TimeDepressiveM_2:GroupExperiment -0.08012 0.05269
I have couple of questions about reading the results:
Intercept is the DepressiveM_1 in GroupControl, I assume. The line after GroupExperiment, (Adaptive_cers:TimeDepressiveM_2) belong to the GroupExperiment or overall?
How can I read the results? How could it be possible to say one point change in the interaction of TimeDepressiveM_2:GroupExperiment increases TimedepressiveM_1 in GroupControl 4.36796 point since this is a between-subject component and not related to each other. It doesn't make sense to me. First two significant results does make sense since they are in the same Group, but what about between-factors? The important comparison should not be the baselines (intercept) but DepressiveM_2 in GroupControl and GroupExperiment, but the problem is DepressiveM_2 is not the intercept and -1.02267.
Basically: how can I interpret the third siginificant result: TimeDepressiveM_2:GroupExperiment
Thanks in advance!
Depressionlevels and the broad range of higher levels. One typically expects more symmetric distributions of individual points around the predictions. You need to do quality-control checks on the distribution of residuals about the predictions and possibly move to a generalized linear mixed model (maybe a log link?) that is more appropriate to your outcome data. – EdM Jan 15 '22 at 20:32Adaptive_cersvalues are all much greater than 0, so your single "significant" two-way interaction coefficient, which only holds atAdaptive_cers = 0, is hard to interpret. You need some type of chunk test forGroup(Experiment vs Control) to see ifGroupis important overall. It looks like there might be a difference between theDepressiveMgroups with respect to the influence ofAdaptive_cersin theExperimentgroup that isn't seen in the control group. But you need to evaluate the confidence limits, too. – EdM Jan 15 '22 at 20:35plot()command on yourlmerobject gives a plot of residuals versus fitted values. Breaking down into groups isn't always helpful; with fewer cases in single groups you get more noise and less ability to see what's going on. That said, if you need it for diagnosing problems, there is a package calledDHARMathat has extensive tools for examining residuals in mixed models in detail, including generalized linear mixed models; I suspect that you will need a generalized model of some type. – EdM Jan 15 '22 at 21:30