Test True or false (Circle T or F)
T F 1. A model with subject-specific random effects is
an example of a marginal model.
T F 2. A conditional logistic regression cannot be used
to obtain parameter estimates for a predictor
variable that does not vary its values within the
matched cluster.
T F 3. The alternating logistic regressions approach
models relationships between pairs of responses
from the same cluster with odds ratio para-
meters rather than with correlation parameters
as with GEE.
T F 4. A mixed logistic model is a generalization of the
generalized linear mixed model in which a link
function can be specified for the modeling of the
mean.
T F 5. For a GEE model, the user specifies a correlation
structure for the response variable, whereas for a
GLMM, the user specifies a covariance structure.
Questions 6–10 refer to models run on the data from the
Heartburn Relief Study. The following printout sum-
marizes the computer output for two mixed logistic models.
The models include a subject-specific random effect for the
intercept. The dichotomous outcome is relief from heart-
burn (coded 1¼yes, 0¼no). The exposure of interest is RX
(coded 1¼active treatment, 0¼standard treatment). The
variable SEQUENCE is coded 1 for subjects in which the
active treatment was administered first and 0 for subjects in
which the standard treatment was administered first. The
product term RX*SEQ (RX times SEQUENCE) is included
to assess interaction between RX and SEQUENCE. Only
the estimates of the fixed effects are displayed in the output.Model 1Variable Estimate Std Err
INTERCEPT 0.6884 0.5187
RX 0.4707 0.6608
SEQUENCE 0.9092 0.7238
RX*SEQ 0.2371 0.9038Model 2Variable Coefficient Std Err
INTERCEPT 0.6321 0.4530
RX 0.3553 0.4565
SEQUENCE 0.7961 0.564Test 595