Title: Bias, Confounding and the Role of Chance
 1Bias, Confounding and the Role of Chance
- Principles of Epidemiology 
 - Lecture 5 
 - Dona Schneider, PhD, MPH, FACE 
 
  2To Show Cause We Use
- Kochs Postulates for Infectious Disease 
 - Hills Postulates for Chronic Disease and Complex 
Questions  - Strength of Association  Tonights entire 
lecture  - Biologic Credibility 
 - Specificity 
 - Consistency with Other Associations 
 - Time Sequence 
 - Dose-Response Relationship 
 - Analogy 
 - Experiment 
 - Coherence
 
  3To Show a Valid Statistical Association
- We need to assess 
 - Bias whether systematic error has been built 
into the study design  - Confounding whether an extraneous factor is 
related to both the disease and the exposure  - Role of chance how likely is it that what we 
found is a true finding 
  4BIAS
- Systematic error built into the study design 
 - Selection Bias 
 - Information Bias 
 
  5Types of Selection Bias
- Berksonian bias  There may be a spurious 
association between diseases or between a 
characteristic and a disease because of the 
different probabilities of admission to a 
hospital for those with the disease, without the 
disease and with the characteristic of interest  - Berkson J. Limitations of the application of 
fourfold table analysis to hospital data. 
Biometrics 1946247-53 
  6Types of Selection Bias (cont.)
- Response Bias  those who agree to be in a study 
may be in some way different from those who 
refuse to participate  - Volunteers may be different from those who are 
enlisted  
  7Types of Information Bias
- Interviewer Bias  an interviewers knowledge may 
influence the structure of questions and the 
manner of presentation, which may influence 
responses  - Recall Bias  those with a particular outcome or 
exposure may remember events more clearly or 
amplify their recollections 
  8Types of Information Bias (cont.)
- Observer Bias  observers may have preconceived 
expectations of what they should find in an 
examination  - Loss to follow-up  those that are lost to 
follow-up or who withdraw from the study may be 
different from those who are followed for the 
entire study 
  9Information Bias (cont.)
- Hawthorne effect  an effect first documented at 
a Hawthorne manufacturing plant people act 
differently if they know they are being watched  - Surveillance bias  the group with the known 
exposure or outcome may be followed more closely 
or longer than the comparison group 
  10Information Bias (cont.)
- Misclassification bias  errors are made in 
classifying either disease or exposure status 
  11Types of Misclassification Bias
- Differential misclassification  Errors in 
measurement are one way only  - Example Measurement bias  instrumentation may 
be inaccurate, such as using only one size blood 
pressure cuff to take measurements on both adults 
and children 
  12Misclassification Bias (cont.)
True Classification
Total
Controls
Cases
Exposed
150
50
100
Nonexposed
100
50
50
250
100
150
OR  ad/bc  2.0 RR  a/(ab)/c/(cd)  1.3
Differential misclassification - Overestimate 
exposure for 10 cases, inflate rates
Total
Controls
Cases
160
50
110
Exposed
90
50
40
Nonexposed
250
100
150
OR  ad/bc  2.8 RR  a/(ab)/c/(cd)  1.6 
 13Misclassification Bias (cont.)
True Classification
OR  ad/bc  2.0 RR  a/(ab)/c/(cd)  1.3
Differential misclassification - Underestimate 
exposure for 10 cases, deflate rates
OR  ad/bc  1.5 RR  a/(ab)/c/(cd)  1.2 
 14Misclassification Bias (cont.)
True Classification
OR  ad/bc  2.0 RR  a/(ab)/c/(cd)  1.3
Differential misclassification - Underestimate 
exposure for 10 controls, inflate rates
OR  ad/bc  3.0 RR  a/(ab)/c/(cd)  1.6 
 15Misclassification Bias (cont.)
True Classification
Total
Controls
Cases
150
50
100
Exposed
100
50
50
Nonexposed
250
150
100
OR  ad/bc  2.0 RR  a/(ab)/c/(cd)  1.3
Differential misclassification - Overestimate 
exposure for 10 controls, deflate rates
OR  ad/bc  1.3 RR  a/(ab)/c/(cd)  1.1 
 16Misclassification Bias (cont.)
- Nondifferential (random) misclassification  
errors in assignment of group happens in more 
than one direction  - This will dilute the study findings - 
 BIAS TOWARD THE NULL 
  17Misclassification Bias (cont.)
True Classification
OR  ad/bc  2.0 RR  a/(ab)/c/(cd)  1.3
Nondifferential misclassification - Overestimate 
exposure in 10 cases, 10 controls  bias towards 
null
OR  ad/bc  1.8 RR  a/(ab)/c/(cd)  1.3 
 18Controls for Bias
- Be purposeful in the study design to minimize the 
chance for bias  - Example use more than one control group 
 - Define, a priori, who is a case or what 
constitutes exposure so that there is no overlap  - Define categories within groups clearly (age 
groups, aggregates of person years)  - Set up strict guidelines for data collection 
 - Train observers or interviewers to obtain data in 
the same fashion  - It is preferable to use more than one observer or 
interviewer, but not so many that they cannot be 
trained in an identical manner 
  19Controls for Bias (cont)
- Randomly allocate observers/interviewer data 
collection assignments  - Institute a masking process if appropriate 
 - Single masked study  subjects are unaware of 
whether they are in the experimental or control 
group  - Double masked study  the subject and the 
observer are unaware of the subjects group 
allocation  - Triple masked study  the subject, observer and 
data analyst are unaware of the subjects group 
allocation  - Build in methods to minimize loss to follow-up