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

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bi?

X 1 ;X 2


fixed

;...;Xi;
varies

...;Xk
fixed

A second interpretation is thatagives thelogof
thebackground,orbaseline, odds.

The first interpretation fora, which considers
it as thelog oddsfor a person with 0 values for
allXs, has a serious limitation: There may not
be any person in the population of interest with
zero values on all theXs.

For example, no subject could have zero values
for naturally occurring variables, like age or
weight. Thus, it would not make sense to talk
of a person with zero values for allXs.

The second interpretation forais more appeal-
ing: to describe it as thelogof thebackground,
orbaseline, odds.

By background odds, we mean the odds that
would result for a logistic model without any
Xs at all.

The form of such a model is 1 over 1 plus e to
minusa. We might be interested in this model
to obtain a baseline risk or odds estimate that
ignores all possible predictor variables. Such
an estimate can serve as a starting point for
comparing other estimates of risk or odds
when one or moreXs are considered.

Because we have given an interpretation toa,
can we also give an interpretation tobi? Yes, we
can, in terms of eitheroddsorodds ratios.We
will turn to odds ratios shortly.

With regard to the odds, we need to consider
what happens to the logit when only one of the
Xs varies while keeping the others fixed.

For example, if ourXs are CAT, AGE, and ECG,
we might ask what happens to the logit when
CAT changes from 0 to 1, given an AGE of 40
and an ECG of 0.

To answer this question, we write the model in
logit formasaþb 1 CATþb 2 AGEþb 3 ECG.

EXAMPLE
CAT changes from 0 to 1;
AGE|fflfflfflfflfflfflfflfflfflfflfflfflfflfflfflfflffl{zfflfflfflfflfflfflfflfflfflfflfflfflfflfflfflfflffl}¼ 40 ;ECG¼ 0
fixed
logit PðXÞ¼aþb 1 CATþb 2 AGE
þb 3 ECG

EXAMPLE (continued)

(2) a¼log of background odds

LIMITATION OF (1)
AllXi¼0 for any individual?

AGE 6 ¼ 0
WEIGHT 6 ¼ 0

DEFINITION OF (2)
background odds: ignores allXs

model:PðÞ¼X^1
1 þea

20 1. Introduction to Logistic Regression

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