A confounding variable is a variable which has not been considered in the study, but which correlates with the risk factor and disease
What the study observes: risk factor exposure –> disease
What the reality is: risk factor exposure < –> confounding variable –> disease
There is no direct association between risk factor exposure and disease
Example 1:
A study finds that people who drink coffee have increased risk for lung cancer, and therefore concludes that there is an association between coffee and lung cancer
However, many coffee-drinkers also smoke, and that it is the smoking which increases the risk for lung cancer
Smoking is the confounding variable here
Example 2:
A study finds that children born later in the birth order have higher risk of Down syndrome, and therefore the study concludes that there is an association between late birth order and Down syndrome
However, the children who are born later in the birth order are often born by older mothers, and it is the maternal age which increases the risk for Down syndrome
Maternal age is the confounding variable here
To prevent confounding
Perform multiple studies with different populations
Select comparable groups
Randomize study groups
Matching
Standardization
Effect modifiers
An effect modifier is a third variable which has different effect between study groups
This influences the study outcome
Example 1
Tetracycline discolours teeth in children, but not in adults
Tetracycline has different effects between study groups
Example 2
Hypertension is more likely to cause myocardial infarction in people with hypercholesterolaemia than people without
Hypertension has different effects between study groups