Hello,
I am analysing data for predictors of cigarette smoking among adolescents using mixed effects logistic regression with random effects at school level. Schools were selected from urban and rural locations (strata), then classes were selected within schools and all students in selected classes were studied. The following command was used for the logistic regression analysis using Stata 11:
Please see the output below:
The dependent variable is current cigarette smoking (cursmkcig). The main independent variable is school location (stratum) labelled as urban or rural. The variable strasesfat is an interaction term between socioeconomic status (sesfat) and school location (stratum). Since there is evidence of interaction from the above output, I would like to know how to present the results reporting the association between practice of current smoking and school location within each level of socioeconomic status (low SES and high SES).
I tried reporting coefficients and using lincom command and it didn't work.
I also tried performing the analysis to report stratum-specific odds ratios using the variable 'strases' as the interaction term, and the output showed evidence of collinearity
Thank you.
I am analysing data for predictors of cigarette smoking among adolescents using mixed effects logistic regression with random effects at school level. Schools were selected from urban and rural locations (strata), then classes were selected within schools and all students in selected classes were studied. The following command was used for the logistic regression analysis using Stata 11:
Please see the output below:
Code:
. xtmelogit cursmkcig stratum agecat sex cwkspend cparentswork sesfat strasesfat
> livetog rsmkparents smkfriends smkclass rcignearsch advert antitob shs schcur
> r if adol==1, || sampschid:, covariance(unstructured) or variance
Note: single-variable random-effects specification; covariance structure set to
identity
Refining starting values:
Iteration 0: log likelihood = -1437.3631 (not concave)
Iteration 1: log likelihood = -1425.2512
Iteration 2: log likelihood = -1423.267
Performing gradient-based optimization:
Iteration 0: log likelihood = -1423.267
Iteration 1: log likelihood = -1423.2267
Iteration 2: log likelihood = -1423.2265
Mixed-effects logistic regression Number of obs = 4332
Group variable: sampschid Number of groups = 49
Obs per group: min = 50
avg = 88.4
max = 115
Integration points = 7 Wald chi2(16) = 371.02
Log likelihood = -1423.2265 Prob > chi2 = 0.0000
------------------------------------------------------------------------------
cursmkcig | Odds Ratio Std. Err. z P>|z| [95% Conf. Interval]
-------------+----------------------------------------------------------------
stratum | 1.237299 .2309897 1.14 0.254 .8581532 1.783957
agecat | .906214 .0860734 -1.04 0.300 .7522852 1.091639
sex | .7272792 .0804917 -2.88 0.004 .5854562 .9034579
cwkspend | 1.270641 .085474 3.56 0.000 1.113689 1.449712
cparentswork | .6930044 .0564859 -4.50 0.000 .5906846 .8130483
sesfat | .7812136 .1303561 -1.48 0.139 .5632942 1.083439
strasesfat | 1.821569 .4241586 2.58 0.010 1.154092 2.875086
livetog | 1.27858 .1680938 1.87 0.062 .9881464 1.654378
rsmkparents | 1.502987 .1489246 4.11 0.000 1.237694 1.825144
smkfriends | 1.922712 .1552835 8.09 0.000 1.641228 2.252473
smkclass | 1.397217 .1085893 4.30 0.000 1.199803 1.627113
rcignearsch | 1.779504 .2280784 4.50 0.000 1.384206 2.28769
advert | 1.372885 .1807741 2.41 0.016 1.060602 1.777116
antitob | 1.12164 .1596499 0.81 0.420 .8485873 1.482553
shs | 2.002395 .2363955 5.88 0.000 1.588766 2.523711
schcurr | .5912504 .069033 -4.50 0.000 .4703131 .7432857
------------------------------------------------------------------------------
------------------------------------------------------------------------------
Random-effects Parameters | Estimate Std. Err. [95% Conf. Interval]
-----------------------------+------------------------------------------------
sampschid: Identity |
var(_cons) | .2302386 .0713563 .1254213 .4226541
------------------------------------------------------------------------------
LR test vs. logistic regression: chibar2(01) = 50.32 Prob>=chibar2 = 0.0000
I tried reporting coefficients and using lincom command and it didn't work.
Code:
. xtmelogit cursmkcig stratum agecat sex cwkspend cparentswork sesfat strasesfat
> livetog rsmkparents smkfriends smkclass rcignearsch advert antitob shs schcur
> r if adol==1, || sampschid:, covariance(unstructured) variance
Note: single-variable random-effects specification; covariance structure set to
identity
Refining starting values:
Iteration 0: log likelihood = -1437.3631 (not concave)
Iteration 1: log likelihood = -1425.2512
Iteration 2: log likelihood = -1423.267
Performing gradient-based optimization:
Iteration 0: log likelihood = -1423.267
Iteration 1: log likelihood = -1423.2267
Iteration 2: log likelihood = -1423.2265
Mixed-effects logistic regression Number of obs = 4332
Group variable: sampschid Number of groups = 49
Obs per group: min = 50
avg = 88.4
max = 115
Integration points = 7 Wald chi2(16) = 371.02
Log likelihood = -1423.2265 Prob > chi2 = 0.0000
------------------------------------------------------------------------------
cursmkcig | Coef. Std. Err. z P>|z| [95% Conf. Interval]
-------------+----------------------------------------------------------------
stratum | .2129306 .1866887 1.14 0.254 -.1529726 .5788338
agecat | -.0984798 .0949813 -1.04 0.300 -.2846397 .0876802
sex | -.3184449 .1106751 -2.88 0.004 -.535364 -.1015257
cwkspend | .2395212 .0672684 3.56 0.000 .1076775 .3713649
cparentswork | -.366719 .0815087 -4.50 0.000 -.5264731 -.2069648
sesfat | -.2469067 .1668636 -1.48 0.139 -.5739533 .0801398
strasesfat | .5996982 .2328534 2.58 0.010 .1433138 1.056083
livetog | .2457503 .1314691 1.87 0.062 -.0119244 .5034249
rsmkparents | .4074544 .0990858 4.11 0.000 .2132498 .6016589
smkfriends | .6537365 .0807628 8.09 0.000 .4954445 .8120286
smkclass | .3344821 .0777183 4.30 0.000 .1821571 .4868072
rcignearsch | .5763345 .1281697 4.50 0.000 .3251265 .8275424
advert | .3169141 .1316746 2.41 0.016 .0588366 .5749917
antitob | .1147916 .1423362 0.81 0.420 -.1641823 .3937654
shs | .6943441 .1180564 5.88 0.000 .4629579 .9257303
schcurr | -.5255157 .1167577 -4.50 0.000 -.7543566 -.2966748
_cons | -4.025837 .4399083 -9.15 0.000 -4.888042 -3.163633
------------------------------------------------------------------------------
------------------------------------------------------------------------------
Random-effects Parameters | Estimate Std. Err. [95% Conf. Interval]
-----------------------------+------------------------------------------------
sampschid: Identity |
var(_cons) | .2302386 .0713563 .1254213 .4226541
------------------------------------------------------------------------------
LR test vs. logistic regression: chibar2(01) = 50.32 Prob>=chibar2 = 0.0000
. *Use lincom command to estimate combination of odds ratios
. lincom _cons + sesfat, or
( 1) [eq1]sesfat + [eq1]_cons = 0
------------------------------------------------------------------------------
cursmkcig | Odds Ratio Std. Err. z P>|z| [95% Conf. Interval]
-------------+----------------------------------------------------------------
(1) | .0139435 .0062817 -9.48 0.000 .0057663 .0337167
------------------------------------------------------------------------------
. *OR for student with low father's education living in urban area
. lincom _cons, or
( 1) [eq1]_cons = 0
------------------------------------------------------------------------------
cursmkcig | Odds Ratio Std. Err. z P>|z| [95% Conf. Interval]
-------------+----------------------------------------------------------------
(1) | .0178485 .0078517 -9.15 0.000 .0075362 .0422719
------------------------------------------------------------------------------
. *OR for student with high father's education living in urban area
. lincom _cons + sesfat, or
( 1) [eq1]sesfat + [eq1]_cons = 0
------------------------------------------------------------------------------
cursmkcig | Odds Ratio Std. Err. z P>|z| [95% Conf. Interval]
-------------+----------------------------------------------------------------
(1) | .0139435 .0062817 -9.48 0.000 .0057663 .0337167
------------------------------------------------------------------------------
. *OR for student with low father's education living in rural area
. lincom _cons + stratum, or
( 1) [eq1]stratum + [eq1]_cons = 0
------------------------------------------------------------------------------
cursmkcig | Odds Ratio Std. Err. z P>|z| [95% Conf. Interval]
-------------+----------------------------------------------------------------
(1) | .0220839 .0096375 -8.74 0.000 .0093887 .0519452
------------------------------------------------------------------------------
. *OR for student with high father's education living in rural area
. lincom _cons + stratum + sesfat + strasesfat, or
( 1) [eq1]stratum + [eq1]sesfat + [eq1]strasesfat + [eq1]_cons = 0
------------------------------------------------------------------------------
cursmkcig | Odds Ratio Std. Err. z P>|z| [95% Conf. Interval]
-------------+----------------------------------------------------------------
(1) | .0314261 .0142652 -7.62 0.000 .0129094 .0765026
------------------------------------------------------------------------------
Code:
. xtmelogit cursmkcig stratum agecat sex cwkspend cparentswork sesfat strases* l
> ivetog rsmkparents smkfriends smkclass rcignearsch advert antitob shs schcurr
> if adol==1, || sampschid:, covariance(unstructured) or variance
Note: single-variable random-effects specification; covariance structure set to
identity
note: strases1 omitted because of collinearity
Refining starting values:
Iteration 0: log likelihood = -1437.3631 (not concave)
Iteration 1: log likelihood = -1425.2494
Iteration 2: log likelihood = -1423.2669
Performing gradient-based optimization:
Iteration 0: log likelihood = -1423.2669
Iteration 1: log likelihood = -1423.2267
Iteration 2: log likelihood = -1423.2265
Mixed-effects logistic regression Number of obs = 4332
Group variable: sampschid Number of groups = 49
Obs per group: min = 50
avg = 88.4
max = 115
Integration points = 7 Wald chi2(16) = 371.02
Log likelihood = -1423.2265 Prob > chi2 = 0.0000
------------------------------------------------------------------------------
cursmkcig | Odds Ratio Std. Err. z P>|z| [95% Conf. Interval]
-------------+----------------------------------------------------------------
stratum | 2.253825 .5379541 3.40 0.001 1.411729 3.598233
agecat | .906214 .0860734 -1.04 0.300 .7522852 1.091639
sex | .7272792 .0804917 -2.88 0.004 .5854561 .9034579
cwkspend | 1.270641 .085474 3.56 0.000 1.113689 1.449712
cparentswork | .6930044 .0564859 -4.50 0.000 .5906846 .8130483
sesfat | .7812134 .1303561 -1.48 0.139 .5632941 1.083438
strases0 | .5489772 .1278312 -2.58 0.010 .3478156 .8664819
strases1 | (omitted)
livetog | 1.27858 .1680938 1.87 0.062 .9881464 1.654378
rsmkparents | 1.502987 .1489246 4.11 0.000 1.237694 1.825144
smkfriends | 1.922712 .1552835 8.09 0.000 1.641228 2.252473
smkclass | 1.397217 .1085893 4.30 0.000 1.199803 1.627113
rcignearsch | 1.779504 .2280784 4.50 0.000 1.384206 2.28769
advert | 1.372885 .1807741 2.41 0.016 1.060602 1.777116
antitob | 1.12164 .1596499 0.81 0.420 .8485873 1.482553
shs | 2.002395 .2363955 5.88 0.000 1.588766 2.523711
schcurr | .5912504 .069033 -4.50 0.000 .4703131 .7432856
------------------------------------------------------------------------------
------------------------------------------------------------------------------
Random-effects Parameters | Estimate Std. Err. [95% Conf. Interval]
-----------------------------+------------------------------------------------
sampschid: Identity |
var(_cons) | .2302386 .0713563 .1254213 .4226542
------------------------------------------------------------------------------
LR test vs. logistic regression: chibar2(01) = 50.32 Prob>=chibar2 = 0.0000

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