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confooseddesi89
Quartz | Level 8

Hello,

 

I have a repeated-measures long-form dataset with moderate-to-vigorous physical activity (MVPA) minutes and happiness scores derived from a survey. Each person (ID) has more than one row of data (i.e., long-form data) with the time point indicated by the variable Happiness_date. MVPA_7DBF_mins_wkly (MVPA minutes/week) and the outcome Happiness_score are measured at each Happiness_date per person (varying at each time point within each person; 9-12 Happiness_dates/ rows per person). MVPA_7DBF_mins_wkly_btwn represents the mean MVPA per person and is a between-person variable (the same within each subject). MVPA_7DBF_mins_wkly_wthn represents a subject's deviation in MVPA from their own overall mean at a given date (i.e., MVPA_7DBF_mins_wkly - MVPA_7DBF_mins_wkly_btwn). The dataset has the between-person demographic variables sex and age_years.  Below is a sample of my data (about 1% of the observations):

 

 

Data PA_happ;
Input ID Happiness_date date12. Happiness_score MVPA_7DBF_mins_wkly MVPA_7DBF_mins_wkly_wthn MVPA_7DBF_mins_wkly_btwn Sex $ age_years;
datalines;
1	05Mar2020	7	35.36	4.71	30.65	Female	59
1	04Apr2020	3	32.03	1.38	30.65	Female	59
1	04May2020	3	34.19	3.54	30.65	Female	59
1	03Jun2020	4	34.73	4.08	30.65	Female	59
1	06Jul2020	4	21.89	-8.77	30.65	Female	59
1	03Aug2020	9	39.18	8.52	30.65	Female	59
1	01Sep2020	8	30.02	-0.64	30.65	Female	59
1	01Oct2020	13	33.81	3.16	30.65	Female	59
1	31Oct2020	6	24.44	-6.21	30.65	Female	59
1	02Dec2020	8	24.16	-6.50	30.65	Female	59
1	30Dec2020	4	27.64	-3.01	30.65	Female	59
1	29Jan2021	12	30.40	-0.26	30.65	Female	59
2	17Mar2020	12	2.68	-11.44	14.61	Female	18
2	16Apr2020	6	18.11	3.99	14.61	Female	18
2	16May2020	5	18.63	4.51	14.61	Female	18
2	15Jun2020	7	1.12	-13.00	14.61	Female	18
2	15Jul2020	5	25.33	11.21	14.61	Female	18
2	15Aug2020	5	8.36	-5.76	14.61	Female	18
2	14Sep2020	5	19.69	5.57	14.61	Female	18
2	14Oct2020	5	8.07	-6.05	14.61	Female	18
2	13Nov2020	7	27.16	13.03	14.61	Female	18
2	12Dec2020	5	22.37	8.25	14.61	Female	18
2	12Jan2021	5	9.22	-4.90	14.61	Female	18
3	09Mar2020	5	49.27	1.75	47.52	Male	24
3	09Apr2020	7	49.85	2.33	47.52	Male	24
3	08May2020	8	45.64	-1.88	47.52	Male	24
3	07Jun2020	5	46.11	-1.41	47.52	Male	24
3	07Jul2020	5	52.47	4.96	47.52	Male	24
3	06Aug2020	3	51.83	4.31	47.52	Male	24
3	05Sep2020	7	50.60	3.09	47.52	Male	24
3	06Oct2020	7	43.23	-4.29	47.52	Male	24
3	04Nov2020	8	44.54	-2.98	47.52	Male	24
3	04Dec2020	7	40.76	-6.75	47.52	Male	24
3	03Jan2021	4	44.13	-3.39	47.52	Male	24
3	02Feb2021	9	51.79	4.27	47.52	Male	24
4	02Apr2020	3	22.31	-5.31	27.62	Male	40
4	01May2020	3	27.64	0.02	27.62	Male	40
4	31May2020	4	35.54	7.93	27.62	Male	40
4	30Jun2020	6	35.75	8.14	27.62	Male	40
4	28Sep2020	4	29.05	1.43	27.62	Male	40
4	29Oct2020	4	25.56	-2.05	27.62	Male	40
4	27Nov2020	5	19.71	-7.91	27.62	Male	40
4	28Dec2020	3	23.03	-4.59	27.62	Male	40
4	28Jan2021	6	29.96	2.34	27.62	Male	40
5	10Apr2020	13	24.35	7.09	17.26	Male	35
5	10May2020	6	19.39	2.14	17.26	Male	35
5	10Jun2020	9	23.42	6.17	17.26	Male	35
5	10Jul2020	10	22.16	4.91	17.26	Male	35
5	09Aug2020	6	20.33	3.07	17.26	Male	35
5	09Sep2020	6	19.34	2.08	17.26	Male	35
5	09Oct2020	9	19.92	2.66	17.26	Male	35
5	06Nov2020	12	5.65	-11.61	17.26	Male	35
5	06Dec2020	5	14.03	-3.23	17.26	Male	35
5	04Jan2021	5	3.97	-13.28	17.26	Male	35
;
Run;
data PA_happ; set PA_happ; format Happiness_date date9.;run;

 

 

I'm using PROC MIXED to examine the within- and between-person effects (linear and quadratic) of MVPA on happiness, adjusting for sex and age. Below is my model code:

 

 

Proc mixed data=PA_happ NOCLPRINT NOITPRINT COVTEST METHOD=ML namelen=70; 
CLASS Sex(ref='Female');
model Happiness_score=MVPA_7DBF_mins_wkly_wthn MVPA_7DBF_mins_wkly_wthn*MVPA_7DBF_mins_wkly_wthn
MVPA_7DBF_mins_wkly_btwn MVPA_7DBF_mins_wkly_btwn*MVPA_7DBF_mins_wkly_btwn Sex age_years / SOLUTION CL;
RANDOM Intercept / TYPE=AR(1) Subject=ID;
Title 'MVPA (mins) 7-day predicting happiness score';run;title;run;

 

 

Unfortunately, PROC mixed only produces unstandardized measures of effect size and error (Estimate and Standard Error) and does not provide a standardized measure such as the standardized beta produced by PROC REG. From what I have read on this forum, a solution could be to standardize the predictors and outcomes in your model using PROC STDIZE and re-run the analysis, with the Estimate in this re-run model representing the standardized effect. I have used this strategy successfully in the past to obtain 95% CI of the standardized beta from PROC REG on between-persons data (i.e., where observations are not repeated per person and no RANDOM intercept is present).

 

As we know, standardization (typically) produces z-scores, which are dependent on other scores in the data. In a purely between-person dataset, the standardized variable should represent how many standard deviations away from the across-person mean that individual person's score is. However, using a standard PROC STDIZE on my dataset would not take into account the fact that my observations are nested within each person and therefore more correlated with one another - i.e., the observations are not independent. My question is whether there is a way to account for the repeated-measures nature of the data when performing PROC STDIZE, or if there is some better way to obtain values representing a standardized effect (and associated standard error / 95% confidence interval) from the PROC MIXED model I used with my data.

 

I hope that was clear; please let me know if you need more clarification. Thanks for your help.

7 REPLIES 7
confooseddesi89
Quartz | Level 8

Bump (I have an abstract deadline coming soon)

jiltao
SAS Super FREQ

You might use PROC GLIMMIX to fit your model. There is a STDCOEF option in the MODEL statement in PROC GLIMMIX that might work for you.

https://go.documentation.sas.com/doc/en/pgmsascdc/v_040/statug/statug_glimmix_syntax18.htm

Thanks,

Jill

 

confooseddesi89
Quartz | Level 8

Hello,

 

Thanks, but this is not what I am looking for. I want the equivalent of STB in proc reg, i.e., a coefficient that represents how many standard deviations the outcome changes with an increase of one standard deviation in the predictor, with values ranging from -1 to 1. It appears that STDCOEF does not represent this.

jiltao
SAS Super FREQ

The STDCOEF option in the MODEL statement in PROC GLIMMIX gives you standardized betas, but they are not the same as what you get from STB in PROC REG.  STDCOEF centers the X's by subtracting the mean and dividing by the corrected sum of squares for that X (sum of (Xi - Xbar)**2).  That is the default centering and scaling that GLIMMIX does for all columns of X to improve numerical stability when estimating the model.
The STDCOEFF in PROC GLIMMIX are computed differently than those in REG and it is okay that the standardized coefficients are greater than one. You can still look at the relative scale of the parameters to see what variables are important.

I am not aware of a way you requested for models fit in PROC MIXED that accounts for correlations in the data.

Thanks,

Jill

 

confooseddesi89
Quartz | Level 8

Thanks, but for reporting the effect sizes in my papers, I need a parameter that ranges from -1 to 1 for interpretation's sake. So this is unfortunately not useful. I appreciate your reply.

Ksharp
Super User

You could map it into [-1,1],like:

STDCOEFF-min       X-(-1)
---------------- = -------
max-min            1-(-1)
StatsMan
SAS Super FREQ

@Rick_SAS gives a great discussion on what the STDCOEF option does in GLIMMIX here.  The presence of a link function in most (not all) models that use GLIMMIX makes standardization of the response variable problematic.

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