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

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IV. Extending the Ordinal
Model


PðDgjXÞ¼
1


1 þexp½ðagþ~

k
i¼ 1

biXiފ

;

where g¼1, 2, 3,...,G 1


Note:P(D0|X)¼ 1


odds¼


PðDgjXÞ
PðD<gjXÞ

¼expðagþ~

k

i¼ 1

biXjÞ

OR¼exp(bi), ifXiis coded (0, 1)


Expanding the model to add more independent
variables is straightforward. The model withk
independent variables is shown on the left.

Theoddsfor the outcome greater than or equal
to levelgis then e to the quantityagplus the
summation theXifor each of thekindependent
variable times its beta.

The odds ratio is calculated in the usual man-
ner as e to thebi,ifXiis coded 0 or 1. As in
standard logistic regression, the use of multi-
ple independent variables allows for the esti-
mation of an odds ratio for one variable
controlling for the effects of the other covari-
ates in the model.

To illustrate, we return to our endometrial
tumor grade example. Suppose we wish to con-
sider the effects of estrogen use as well as
RACE on GRADE. ESTROGEN is coded as 1
for ever user and 0 for never user.

The model now contains two predictor vari-
ables:X 1 ¼RACE andX 2 ¼ESTROGEN.

EXAMPLE

D¼GRADE¼

0 if well differentiated
1 if moderately
differentiated
2 if poorly differentiated

8
>>>
<
>>>
:

X 1 ¼RACE¼

0 if white

1 if black

8
<
:

X 2 ¼ESTROGEN¼

0 if never user

1 if ever user

8
<
:

PðDgjXÞ¼
1
1 þexp½ðagþb 1 X 1 þb 2 X 2 ފ;

whereX 1 ¼RACEð 0 ; 1 Þ
X 2 ¼ESTROGENð 0 ; 1 Þ
g¼ 1 ; 2

476 13. Ordinal Logistic Regression

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