Logistic Regression: A Self-learning Text, Third Edition (Statistics in the Health Sciences)

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X. Special Case for (0, 1)
Variables

Adjusted OR = eb
whereb¼coefficient of (0, 1) variable

Xi(0, 1): adj.ROR¼ebi

controlling for otherXs

Our example illustrates an important special
case of the general odds ratio formula for logis-
tic regression that applies to (0, 1) variables.
That is, anadjusted odds ratiocan be obtained
by exponentiating the coefficient of a (0, 1)
variable in the model.

In our example, that variable is CAT, and the
other two variables, AGE and ECG, are the
ones for which we adjusted.

More generally, if the variable of interest isXi,
a (0, 1) variable, then e to thebi, wherebiis the
coefficient ofXi, gives an adjusted odds ratio
involving the effect ofXiadjusted or controlling
for the remainingXvariables in the model.

Suppose, for example, our focus had been on
ECG, also a (0, 1) variable, instead of on CAT in
a logistic model involving the same variables
CAT, AGE, and ECG.

Then e to theb 3 , whereb 3 is the coefficient of
ECG, would give the adjusted odds ratio for the
effect of ECG, controlling for CAT and AGE.

Note, however, that the example we have con-
sidered involves onlymain effect variables, like
CAT, AGE and ECG, and that the model does
not contain product terms like CATAGE or
AGEECG.

EXAMPLE

logit P(X) = a + b 1 CAT + b 2 AGE + b 3 ECG

adjusted

EXAMPLE

logit P(X) = a + b 1 CAT + b 2 AGE + b 3

adjusted

ECG

ECG (0, 1): adj.ROR¼eb^3

controlling for CAT and AGE

SUMMARY


Xiisð 0 ; 1 Þ:ROR¼ebi


General OR formula:


ROR¼e


~

k
i¼ 1

biðÞX 1 iX 0 i

Thus, we can obtain an adjusted odds ratio
for each (0, 1) variable in the logistic model by
exponentiating the coefficient corresponding
to that variable. This formula is much simpler
than the general formula for ROR described
earlier.

EXAMPLE

logit P(X) = a + b 1 CAT + b 2 AGE + b 3 ECG

main effect variables

Presentation: X. Special Case for (0, 1) Variables 27
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