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Summary Advanced Research Methods lectures and working groups

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Summary of the lectures and the working groups of Advanced Research Methods

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Subido en
29 de marzo de 2022
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Advanced Research Methods


Advanced Research Methods


Week 1 Causal inference

Lecture 1
Causal inference study
The effect of X on Y so the effect of something on something else.

Problems
 Small sample (only 41 women where included in this study).
o Is this always a problem? No, it also has a relationship with the effect or with the
outcomes and the homogeneity in the outcomes.
 Study performed or financed by commercial company.
o Is this always fatal? This is always a challenge, but you can do a few things to protect
your independence as a researcher.
 No control group.
o This is indeed an essential omission.
o What without treatment?
o Potential regression towards the mean (would it also be better without the
intervention? We don’t know).

What do we want to know?
 Not interested in the outcome per se: ‘how many imperfections’.
 Interested in the role of treatment in achieving this outcome: ‘less imperfections than without
True Match Minerals’.
 Conclusion: no meaningful causal conclusion can be drawn from this study.

Causation: towards a usable, formal framework
 Formal definition (Hernàn/Robins): “in an individual, a treatment has a causal effect if the
outcome under treatment 1 would be different from the outcome under treatment 2”. Then you
can say:
o Wat would have happened?
o What will happen?

So in the case about True Match Minerals:
 Women A uses True Match Minerals: 2 bad spots.
 Women A does not use True Match Minerals: 5 bad spots.
 Individual treatment effect: 3 spots (60%).
 Average treatment effect: average of all individual effects in a population.

Potential outcomes | 1
Causal effect:


 Y = outcome.
 A = treatment.
 1 = yes (received treatment).
 0 = no (received no treatment).
 I = individual.
 Does not equal.
This says that the potential outcomes are different.
Potential outcomes | 2

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, Advanced Research Methods


Let’s improve the experiment and add a control group.
 The outcome of user K with Ya = 1 = 1 (improvement with
treatment).
 The outcome of user K with Ya = 0 = 0 (no improvement
without treatment).
 Treatment effect for K: 1 – 0 = 1.
 Average treatment effect is the average of the last column.

Not all potential outcomes are observed
 Counterfactual outcome: potential outcome that is not observed because the subject did not
experience the treatment (‘counter the fact’).
o It could have happened, but it didn’t. For user K we
only see the outcome with treatment. For user M and
N we only see the outcome without problem. This is
the fundamental problem of causal effects.
 Potential outcome (Ya=1) is fractural for some objects, and
counterfactual for others.

Fundamental problem
 Individual causal effect cannot be observed. Except under extremely strong (and generally
unreasonable) assumptions.
o You don’t know what would happened without the treatment.
 Average causal effect cannot be inferred from individual estimates. Causal inference as a
missing data problem.
 We need a different approach to causal effects.

Identifiability conditions
 Average causal effects can still be determined under certain conditions.
 ‘Observing’ the counterfactual: what would have happened?
 Based on population averages, causal effects can be estimated if three identifiability
conditions hold:
o Positivity.
o Consistency.
o Exchangeability.
 If the conditions are met, then association of exposure and outcome is unbiased estimate of
causal effect.

Simple example
 Go to the Lijnbaan in Rotterdam.
 We ask everyone ‘are you carrying a cigarette lighter?’
 Come back after twenty years: who is healthier?
 Causal questions: what is the effect of carrying a lighter on health?

Positivity | 1
 Observe ‘what would have happened if…’.
 This is about the sample and the way it was composed.
 ‘Positive probability’ of being assigned to each of the treatment levels.
 Units are assigned to all relevant ‘treatments’:
o People with and people without a cigarette lighter.
o People with lighter could also not have had a lighter, and vice verca.
o This was not the case in the example of L’oreal: 100% was assigned to True Match
Mineral, 0% to comparison group. Users could not not have used it.
 Control group.



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, Advanced Research Methods


Consistency
 Observe ‘what would have happened if…’.
 Define ‘if’: clear definition of ‘treatments’.
 Hernàn: does water kill? What do you mean by water? You have to be very specific.
 Is it consistent?
o How healthy is broccoli? But how much? How often? What else are you eating? What
are we comparing this to?
o Effect of obesity on health? Obesity is not informative. We have to know how people
did or did not have obesity.
o Effect of obesity on job prospects? In this question it doesn’t matter how people got
obeses. This is a consistent definition.
o Effect of healthcare spending on mortality? What is the money going to be spend on?
How would it be spend without? This isn’t a consistent definition.
o Carrying a cigarette lighter? This might be (in hand or in pocket).

Exchangeability | 1
 Observe ‘what would have happened if…’.
 Treatment groups are exchangeable: it does not matter who gets treatment A and who gets
treatment B.
 Notation:
 ‘Potential outcomes are independent of the treatment that was actually received’.
 Are people with and without lighters exchangeable (similar in other respects).

Exchangeability | 2
 Observe ‘what would have happened if…’.
 It may be necessary to take other factors into account (adjustment).
o Within smoking group, are people with and without lighter exchangeable?
o Within non-smoking group, are people with and without lighter exchangeable?
 Association can be ascribed to treatment effect.

Positivity | 2
 Units are assigned to all relevant ‘treatments’ within levels of adjustment factors.
 ‘Positive probability’ of being assigned to each of the treatment levels. We need:
o Smokers with cigarette lighter.
o Smokers without cigarette lighter.
o Non-smokers with cigarette lighter.
o Non-smokers without cigarette lighter.

Stratification
This is when you divide the sample in different groups (according to the value of one variable). In this
case the variable is smoking.
 First without stratification: with lighter
65 people are healthy, without lighter 165
people are healthy. We don’t believe we
achieved exchangeability.
 With stratification: 50% of smokers is
healthy with lighter and 50% without
lighter. There is within the smoking
group no association with health. Neither
with the non-smoking group.

We had consistency (we know what we mean by
carrying a ligher), we had positivity (enough observations in the different groups) and we achieved
exchangeability (if smoking is the only things that counts). If we believe all the condition are met (we

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, Advanced Research Methods


cannot measure) then we have an unbiased estimate of the causal effect of carrying a lighter. In this
case the effect is 0 (there is no effect).

Meeting the conditions: Randomized Controlled Trial (RCT)
 Select patients.
 Randomly assign to the treatment groups.
o Random: exchangeability.
o Random: positivity.
o Consistency: you have to identify the interventions so you have to know what these
groups are.

RCTs versus observational studies
RCT
 Limited generalizability (external validity) due to treatment protocol and patient selection.
o You treat people in very specific circumstances (controlled), what does this say about
the real-world?
 Practical, ethical considerations.

Observational (non-randomised) study
 Real-world outcomes (advantage).
 Availability of data (can be collected or are available).
 Internal validity threatened by lack of exchangeability.
 Positivity and consistency need explicit attention.

Association does not equal causation
 In many cases, we are interested in causal effects, not just associations.
 Association: statistical relationship.
 Causation: difference between potential outcomes.
 This association equals this difference if identifiability conditions hold.
 We need:
o Theory/subject knowledge.
o Causal structure.
 And we design the analysis accordingly.

Adjustment to improve exchangeability
 Small number of factors? Stratification is possible. Other ways:
o Matching.
o Weighting.
o Regression analysis.
 Complete and correct adjustment leads to exchangeability.
 So … what should you adjust for in your analysis?

Traditional selection strategies
 Correlation matrix: select variables with sign. association with outcome.
 Stepwise backward selection:
o Start with all variables in regression model.
o Remove the variable that is the least statistically significant.
o Repeat steps.
 Or: retain variable if removal leads to substantial change in effect estimate (PC lab).
 Adjust for confounders, which are defined as being:
o Associated with the exposure, and;
o Conditionally associated with the outcome, given the exposure;
o Not in the causal pathway between exposure and outcome.
These are alternatives, but don’t.

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