Hi all,
I have fit the model below, and just wanted to make sure of the correct way to do a certain set of pairwise comparisons. I want to see whether the average on the outcome variable (adhdsev) was significantly higher than at the starting point (TimeWeight=0), for each of the four remaining timepoints (TimeWeight 1-4). I'd like to do this separately by i.adhdsubtype (3 possible subtypes, for a total of 12 pairwise comparisons). I would also like to do the same for overall means (not broken down by subtype, 4 pairwise comparisons). I was able to run margins with confidence intervals but I thought something like pwcompare might be necessary in order to do multiple comparisons. However I'm uncertain as to how to specify the levels for pwcompare for a continuous variable.
I also wanted to find out if there's any caveats in interpreting comparisons (or margins) given the presence of the additional interaction in the model of i.adhdsubtype#c.TimeWeight#c.TimeWeight. E.g. are the marginal means set for a certain value in the deceleration of the slope that might make interpretation difficult?
I have fit the model below, and just wanted to make sure of the correct way to do a certain set of pairwise comparisons. I want to see whether the average on the outcome variable (adhdsev) was significantly higher than at the starting point (TimeWeight=0), for each of the four remaining timepoints (TimeWeight 1-4). I'd like to do this separately by i.adhdsubtype (3 possible subtypes, for a total of 12 pairwise comparisons). I would also like to do the same for overall means (not broken down by subtype, 4 pairwise comparisons). I was able to run margins with confidence intervals but I thought something like pwcompare might be necessary in order to do multiple comparisons. However I'm uncertain as to how to specify the levels for pwcompare for a continuous variable.
I also wanted to find out if there's any caveats in interpreting comparisons (or margins) given the presence of the additional interaction in the model of i.adhdsubtype#c.TimeWeight#c.TimeWeight. E.g. are the marginal means set for a certain value in the deceleration of the slope that might make interpretation difficult?
Code:
. mixed adhdsev c.TimeWeight c.TimeWeight#i.adhdsubtype c.TimeWeight#c.TimeWeight i.adhdsubtype#c.TimeWeight#c.TimeWeight, /// > || id: TimeWeight, variance mle covariance(unstructured) /// > residuals(independent,t(TimeWeight)), Note: t() not required for this residual structure; ignored Performing EM optimization: Performing gradient-based optimization: Iteration 0: log likelihood = -434.58713 Iteration 1: log likelihood = -432.68323 Iteration 2: log likelihood = -432.66667 Iteration 3: log likelihood = -432.66667 Computing standard errors: Mixed-effects ML regression Number of obs = 244 Group variable: id Number of groups = 93 Obs per group: min = 1 avg = 2.6 max = 4 Wald chi2(6) = 62.99 Log likelihood = -432.66667 Prob > chi2 = 0.0000 ----------------------------------------------------------------------------------------------------------------- adhdsev | Coef. Std. Err. z P>|z| [95% Conf. Interval] ------------------------------------------------+---------------------------------------------------------------- TimeWeight | -.1340633 .360817 -0.37 0.710 -.8412517 .573125 | adhdsubtype#c.TimeWeight | ADHD, Predominantly Innattentive Type | -1.540448 .4016991 -3.83 0.000 -2.327764 -.7531322 ADHD, Predominantly Hyperactive-Impulsive Type | -2.915497 .9290948 -3.14 0.002 -4.736489 -1.094505 | c.TimeWeight#c.TimeWeight | -.0286886 .1192213 -0.24 0.810 -.2623581 .2049809 | adhdsubtype#c.TimeWeight#c.TimeWeight | ADHD, Predominantly Innattentive Type | .4004778 .1331424 3.01 0.003 .1395235 .6614322 ADHD, Predominantly Hyperactive-Impulsive Type | .7815377 .3276643 2.39 0.017 .1393275 1.423748 | _cons | 4.752859 .1239529 38.34 0.000 4.509916 4.995802 ----------------------------------------------------------------------------------------------------------------- ------------------------------------------------------------------------------ Random-effects Parameters | Estimate Std. Err. [95% Conf. Interval] -----------------------------+------------------------------------------------ id: Unstructured | var(TimeWe~t) | .2278224 .0975934 .0983927 .527509 var(_cons) | .0480474 .0567667 .0047424 .4867911 cov(TimeWe~t,_cons) | .1046244 .0546602 -.0025076 .2117563 -----------------------------+------------------------------------------------ var(Residual) | 1.463658 .1712223 1.163761 1.840836 ------------------------------------------------------------------------------ LR test vs. linear model: chi2(3) = 21.75 Prob > chi2 = 0.0001 Note: LR test is conservative and provided only for reference. . . estimates store quadpredict , . lrtest final quadpredict Likelihood-ratio test LR chi2(2) = 10.69 (Assumption: final nested in quadpredict) Prob > chi2 = 0.0048 . margins i.adhdsubtype, at(TimeWeight=(0(1)4)) vsquish Adjusted predictions Number of obs = 244 Expression : Linear prediction, fixed portion, predict() 1._at : TimeWeight = 0 2._at : TimeWeight = 1 3._at : TimeWeight = 2 4._at : TimeWeight = 3 5._at : TimeWeight = 4 ------------------------------------------------------------------------------------------------------------------- | Delta-method | Margin Std. Err. z P>|z| [95% Conf. Interval] --------------------------------------------------+---------------------------------------------------------------- _at#adhdsubtype | 1#ADHD, Combined Type | 4.752859 .1239529 38.34 0.000 4.509916 4.995802 1#ADHD, Predominantly Innattentive Type | 4.752859 .1239529 38.34 0.000 4.509916 4.995802 1#ADHD, Predominantly Hyperactive-Impulsive Type | 4.752859 .1239529 38.34 0.000 4.509916 4.995802 2#ADHD, Combined Type | 4.590107 .2435981 18.84 0.000 4.112664 5.067551 2#ADHD, Predominantly Innattentive Type | 3.450137 .1640803 21.03 0.000 3.128545 3.771728 2#ADHD, Predominantly Hyperactive-Impulsive Type | 2.456148 .5955657 4.12 0.000 1.28886 3.623435 3#ADHD, Combined Type | 4.369978 .3426055 12.76 0.000 3.698483 5.041473 3#ADHD, Predominantly Innattentive Type | 2.890993 .2343395 12.34 0.000 2.431696 3.35029 3#ADHD, Predominantly Hyperactive-Impulsive Type | 1.665134 .7704188 2.16 0.031 .1551414 3.175128 4#ADHD, Combined Type | 4.092471 .4908227 8.34 0.000 3.130477 5.054466 4#ADHD, Predominantly Innattentive Type | 3.075428 .3050299 10.08 0.000 2.47758 3.673275 4#ADHD, Predominantly Hyperactive-Impulsive Type | 2.379819 1.083324 2.20 0.028 .2565441 4.503094 5#ADHD, Combined Type | 3.757588 .9069076 4.14 0.000 1.980081 5.535094 5#ADHD, Predominantly Innattentive Type | 4.003441 .508255 7.88 0.000 3.007279 4.999602 5#ADHD, Predominantly Hyperactive-Impulsive Type | 4.600202 2.19747 2.09 0.036 .2932402 8.907164 ------------------------------------------------------------------------------------------------------------------- . marginsplot, x(TimeWeight) Variables that uniquely identify margins: TimeWeight adhdsubtype
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