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

(vip2019) #1

 AGE and SEX controlled asVs
as well asWs


 RORs depend on values ofWs
(AGE and SEX)



  1. Maximum Likelihood (ML)
    Techniques: An Overview

  2. Statistical Inferences Using
    ML Techniques


In our previous example using this formula,
there are q equals three exposure variables
(namely, SMK, PAL, and SBP), two confoun-
ders (namely, AGE and SEX), which are in the
model asVvariables, and two effect modifiers
(also AGE and SEX), which are in the model
asWvariables. The odds ratio expression for
this example is shown here again.

This odds ratio expression does not contain
coefficients for the confounding effects of
AGE and SEX. Nevertheless, these effects are
being controlled because AGE and SEX are
contained in the model asVvariables in addi-
tion to beingWvariables.

Note that for this example, as for any model
containing interaction terms, the odds ratio
expression will yield different values for the
odds ratio depending on the values of the effect
modifiers – in this case, AGE and SEX – that
are specified.

In the next chapter (Chap. 4), we consider how
the method of maximum likelihood is used to
estimate the parameters of the logistic model.
And in Chap. 5, we describe statistical infer-
ences using ML techniques.

SUMMARY
Chapters up to this point:



  1. Introduction

  2. Important Special Cases


3 3. Computing the Odds Ratio


This presentation is now complete. We have
described how to compute the odds ratio for
an arbitrarily coded single exposure variable
that may be dichotomous, ordinal, or interval.
We have also described the odds ratio formula
when the exposure variable is a polytomous
nominal variable like occupational status.
And, finally, we have described the odds ratio
formula when there are several exposure vari-
ables, controlling for confounders without
interaction terms and controlling for confoun-
ders together with interaction terms.

EXAMPLE:q¼ 3
RORE*vs:E**¼exp SMK*SMK**

   
b 1
þPAL*PAL**

   
b 2
þSBP*SBP**

   
b 3
þd 11 SMK*SMK**

   
AGE
þd 12 SMK*SMK**

   
SEX
þd 21 PAL*PAL**

   
AGE
þd 22 PAL*PAL**

SEX
þd 31 SBP*SBP**

   
AGE
þd 32 SBP*SBP**

SEX

Presentation: VI. The Model and Odds Ratio for Several Exposure Variables 91
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