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Joint assessment of modifiers and/confounders

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Joint assessment of modifiers and/confounders Maybe one-at-time assessment is not enough The merits of regression analysis start to kick in! Joint effect modification ... – PowerPoint PPT presentation

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Title: Joint assessment of modifiers and/confounders


1
Joint assessment of modifiers and/confounders
  • Maybe one-at-time assessment is not enough
  • The merits of regression analysis start to kick
    in!

2
Joint effect modification
  • Now consider a model like
  • (Yikes!)
  • but this is just 4 lines E(Y) versus age
  • For the 4 groups
  • Females receiving placebo
  • Males receiving placebo
  • Females receiving active

3
and lastly
  • Males receiving active
  • How do we interpret this ..er mess?
  • Look at the drug effect for each gender as a
    function of age

4
Drug effect is active - placebo
  • For females
  • For males
  • How does drug effect depend on gender?
  • Take the difference again
  • So we can see that measures the extent to
    which gender as an effect modifier depends on age

5
But also measures
  • The extent to which age as an effect modifier
    depends on gender
  • You can spin the interpretation in either way
    here (as is the case with most interaction
    measures)

6
Now lets look at the 3 factor example from
Rabe-Hesketh
  • Define indicator variables for each of the 3 drug
    groups x, y and z
  • Decide on a baseline drug group say x.
  • The models estimates/predcitions do not depend
    on this choice but do provide interpretations for
    the coefficients
  • Since there are 3 groups, we need 2 coefficients
    to display the 2 degrees of freedom associated
    with the differences among the 3 groups

7
Then we can build a saturated model
  • This model will give estimates that reproduce the
    12 cell averages
  • The model separates into a number of 2 df sets

8
Notice that this last set of 2 df
  • Can be expressed in 3 ways (each way means the
    same thing!)
  • How does the diet/biofeed interaction depend on
    drug group?
  • How does the drug/diet interaction depend on
    biofeed group?
  • How does the drug/biofeed interaction depend on
    diet group?

9
The decision to whether to (and how to) separate
up the 2 df sets should be made in advance
  • Individual one df tests can be made using the
    usual t-tests. It is always to good idea to check
    out what such tests mean (what a concept!)
  • Of course, it may be that 2(or more) df tests
    cover the issues at hand. In such cases, one
    should offer the appropriate F test.
  • For example, if one fits
  • regr sbp x y d b db dx dy bx by dbx dby
  • and then tries
  • test dbxdby0
  • One receives the 2 df F test for whether or not
    the db interaction depends on drug group
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