If interaction present:
Do not assess confounding for
effect modifiers
Assessing confounding for
other variables difficult and
subjective
Confounding followed by precision:
( ) ( )
Valid
imprecise
biased
precise
VALIDITY BEFORE PRECISION
right answer precise answer
On the other hand, if interaction assessment is
considered worthwhile, and, moreover, if signif-
icant interaction is found, then this precludes
assessing confounding for those variables iden-
tified as effect modifiers. Also, as we will describe
in more detail later, assessing confounding for
variables other than effect modifiers can be quite
difficult and, in particular, extremely subjective,
when interaction is present.
The final stage of our strategy calls for the
assessment of confounding followed by consid-
eration ofprecision. This means that it is more
important to get a valid point estimate of the
E–Drelationship that controls for confounding
than to get a narrow confidence interval
around a biased estimate that does not control
for confounding.
For example, suppose controlling for AGE,
RACE,andSEX simultaneously gave an
adjusted odds ratio estimate of 2.4 with a 95%
confidence interval ranging between 1.2 and
3.7, whereas controlling forAGE alonegave an
odds ratio of 6.2 with a 95% confidence interval
ranging between 5.9 and 6.4.
Then, assuming thatAGE,RACE, andSEXare
considered important risk factorsfor the disease
of interest, we would prefer to use the odds
ratio of 2.4 over the odds ratio of 6.2. This is
because the 2.4 value results from controlling
for all the relevant variables and, thus, gives us
a more valid answer than the value of 6.2,
which controls for only one of the variables.
Thus, even though there is a much narrower
confidence interval around the 6.2 estimate
than around the 2.4, the gain in precision from
using 6.2 does not offset the bias in this estimate
when compared to the more valid 2.4 value.
In essence, then,validity takes precedence over
precision, so that it is more important to get the
right answer than a precise answer. Thus, in the
third stage of our strategy, we seek an estimate
that controls for confounding and is, over and
above this, as precise as possible.
EXAMPLE
Control
Variables aOR
AGE, RACE, SEX
AGE
2.4 (1.2, 3.7)
6.2 (5.9, 6.4)
VALID
BIASED narrow
wide
95% CI
6.2
3.7 5.9 6.4
2.4
1.2
0
( ))(
Presentation: III. Overview of Recommended Strategy 171