Title: Sensitivity Analysis for Residual Confounding
1Sensitivity Analysis for Residual Confounding
- Sebastian Schneeweiss MD, ScD
- Division of Pharmacoepidemiology and
Pharmacoeconomics - Department of Medicine, Harvard Medical School,
2Outline
- Residual Confounding and what we can do about it
- Simple sensitivity analysis Array Approach
- Study-specific analysis Rule Out Approach
- Using additional information External Adjustment
3Unmeasured (residual) Confounding
smoking,healthy lifestyle, etc.
CU
CM
OREC
RRCO
Drug exposure
Outcome
RREO
4Unmeasured Confounding in Claims Data
- Database studies are criticized for their
inability to measure clinical and life-style
parameters that are potential confounders in many
pharmacoepi studies - OTC drug use
- BMI
- Clinical parameters Lab values, blood pressure,
X-ray - Physical functioning, ADL (activities of daily
living) - Cognitive status
5Strategies to Minimize Residual Confounding
- Choice of comparison group
- Alternative drug use that have the same perceived
effectiveness and safety - Multiple comparison groups
- Crossover designs (CCO, CTCO)
- Instrumental Variable estimation
- High dimensional proxy adjustment
6Strategies to Discuss Residual Confounding
- Qualitative discussions of potential biases
- Sensitivity analysis
- SA is often seen as the last line of defense
- A) SA to explore the strength of an association
as a function of the strength of the unmeasured
confounder - B) Answers the question How strong must a
confounder be to fully explain the observed
association - Several examples in Occupational Epi but also for
claims data
Greenland S et al Int Arch Occup Env Health
1994 Wang PS et al J Am Geriatr Soc 2001
7Dealing with confounding
Confounding
Propensity scores
- Marginal Structural Models
Schneeweiss, PDS 2006
8A simple sensitivity analysis
- The apparent RR is a function of the adjusted RR
times the imbalance of the unobserved
confounder - After solving for RR we can plug in values for
the prevalence and strength of the confounder
9A made-up example
- Association between TNF-a blocking agents and NH
lymphoma in RA patients - Lets assume an observed RR of 2.0
- Lets assume 50 of RA patients have a more
progressive immunologic disease - and that more progressive disease is more
likely to lead to NH lymphoma - Lets now vary the imbalance of the hypothetical
unobserved confounder
10Bias by residual confounding
11drugepi.org
12Pros and cons of Array approach
- Very easy to perform using Excel
- Very informative to explore confounding with
little prior knowledge - Problems
- It usually does not really provide an answer to a
specific research question - 4 parameters can vary -gt in a 3-D plot 2
parameter have to be kept constant - The optical impression can be manipulated by
choosing different ranges for the axes
13Same example, different parameter ranges
14Conclusion of Array Approach
- Great tool but you need to be honest to yourself
- For all but one tool that I present today
- Assuming conditional independence of CU and CM
given the exposure status - If violated than residual bias may be
overestimated
Hernan, Robins Biometrics 1999
CU
CM
OREC
RRCO
Drug exposure
Outcome
RREO
15More advanced techniques
- Wouldnt it be more interesting to know
- How strong and imbalanced does a confounder have
to be in order to fully explain the observed
findings?
RRCO
OREC
16Example Psaty et al JAGS 199947749 CCB use
and acute MI. The issue Are there any
unmeasured factors that may lead to a preferred
prescribing of CCB to people at higher risk for
AMI?
OREC
ARR 1.57
ARR 1.30
RRCO
17drugepi.org
18Caution!
- Psaty et al. concluded that it is unlikely that
an unmeasured confounder of that magnitude exists - However, the randomized trial ALLHAT showed no
association between CCB use and AMI - Alternative explanations
- Joint residual confounding may be larger than
anticipated from individual unmeasured
confounders - Not an issue of residual confounding but other
biases, e.g. control selection?
19Pros and cons of Rule Out Approach
- Very easy to perform using Excel
- Meaningful and easy to communicate interpretation
- Study-specific interpretation
- Problems
- Still assuming conditional independence of CU and
CM - Rule Out lacks any quantitative assessment of
potential confounders that are unmeasured
20External Adjustment
- One step beyond sensitivity analyses
- Using additional information not available in the
main study - Often survey information
21Strategies to Adjust residual con-founding using
external information
- Survey information in a representative sample can
be used to quantify the imbalance of risk factors
that are not measured in claims among exposure
groups - The association of such risk factors with the
outcome can be assess from the medical literature
(RCTs, observational studies)
Velentgas et al PDS, 2007 Schneeweiss et al
Epidemiology, 2004
22In our example
From Survey data in a subsample
From medical literature
CM
Rofecoxib
Acute MI
RREO
23More contrasts
24Sensitivity of Bias as a Function of a
Misspecified RRCD
Obesity (BMI gt30 vs. BMIlt30)
25Sensitivity towards a misspecified RRCO from the
literature
OTC aspirin use (y/n)
26drugepi.org
27Limitations
- Example is limited to 5 potential confounders
- No lab values, physical activity, blood pressure
etc. - What about the unknow unknowns?
- To assess the bias we assume an exposuredisease
association of 1 (null hypothesis) - The more the truth is away from the null the more
bias in our bias estimate - However the less relevant unmeasured confounders
become - Validity depends on representativenes of sampling
with regard to the unmeasured confounders - We could not consider the joint distribution of
confounders - Limited to a binary world
28Solving the Main Limitations
- Need a method
- That addresses the joint distribution of several
unmeasured confounders - That can handle binary, ordinal or normally
distributed unmeasured confounders - Lin et al. (Biometrics 1998)
- Can handle a single unmeasured covariate of any
distribution - But can handle only 1 covariate
- Sturmer, Schneeweiss et al (Am J Epidemiol 2004)
- Propensity score calibration
- Can handle multiple unmeasured covariates of any
distribution
29Summary
- Sensitivity analyses for residual confounding are
underutilized although they are technically easy
to perform - Excel program for download (drugepi.org)
- The real challenge is the interpretation of your
findings - This is all summarized in Schneeweiss PDS 2007