Title: The University of Manchester
1Methods of explanatory analysis for psychological
treatment trials workshop
- The University of Manchester
- 17th September 2009
- Presented by
- Graham Dunn, Richard Emsley, Andrew Pickles Ian
White
Funded by MRC Methodology Grant G0600555 MHRN
Methodology Research Group
2Funding
MRC Methodology Research Programme Design and
methods of explanatory (causal) analysis for
randomised trials of complex interventions in
mental health (G0600555 ) G Dunn (PI), R Emsley,
L Davies, J Green, A Pickles, C Roberts, I White
F Windmeijer (with collaborators C
Barrowclough, R Bentall, S Birch P Garety).
3Explanatory versus Pragmatic questions
- Pragmatic
- Effectiveness what is the effect of offering
treatment? - Analyse as randomised Intention-to-treat (ITT)
- Explanatory
- Efficacy what is the effect of receiving
treatment? - Mechanisms how do the treatments work?
- What are the potential mediators?
- How might process variables induce
treatment- effect heterogeneity? - We are dealing with an observational study
embedded within a randomised trial.
4The central problem
- Treatment receipt, mediators and other putative
process - variables are not under the direct control of the
- investigator. They are not randomised.
- The effects of these intermediate variables are
likely to be - subject to confounding (i.e. there are other
variables - frequently not measured that influence both the
- intermediate variable and the final outcome).
- If we cannot measure all of the confounders then
we have - hidden confounding or hidden selection effects
- (selection on unobservables).
5Distinguishing treatment-free prognosis from
treatment effects
- A typical example from the literature
- An RCT demonstrates that CBT is effective.
- Investigators have measured the strength of
alliance in the - CBT arm.
- Outcome and alliance are correlated in the CBT
arm. - So what? This tells us nothing about treatment
effects. - Those capable of forming a strong alliance might
have had - the best outcomes in the absence of therapy.
- The correct question is What is the moderating
effect of the alliance on the effect of
treatment? Not a question that is easy to
answer.
6Missing data and other complications
- Missing data closely associated with
non-compliance and - other process variables.
- Participants who do not comply with their
treatment - allocation are less likely to provide outcome
data. - Participants with a poor working alliance with
their - therapist are less likely to attend the full
course of therapy - and may also be less likely to provide outcome
data. - Intermediate variables will be measured with
error.
7Potential mediators
- What are the participants beliefs?
- Does psychotherapy change attributions
(beliefs), which, in turn, lead to better
outcome? How much of the treatment effect is
explained by changes in attributions? - What is the concomitant medication?
- Does psychotherapy improve compliance with
medication which, in turn, leads to better
outcome? What is the direct effect of
psychotherapy? - What is the concomitant substance abuse?
- Does psychotherapy reduce cannabis use, which in
turn leads to improvements in psychotic symptoms? -
8Process measuresSources of treatment-effect
heterogeneity
- Compliance with allocated treatment
- Does the participant turn up for any therapy?
- How many sessions does she attend?
- Fidelity of therapy
- How close is the therapy to that described in
the treatment manual? Is it a cognitive-behavioura
l intervention, for example, or merely emotional
support? - Quality of the therapeutic relationship
- What is the strength of the therapeutic or
working alliance?
9The plan for the day
- A mixture of lectures and general discussion
- Ian will start by introducing causal inference
and looking - at the treatment effects in those who comply with
their - treatment allocation (Complier Average Causal
Effects). - Andrew will introduce concepts of mediation and
- moderation.
- Richard will describe the use of instrumental
variable - methods.
- Graham will describe the application of principal
- stratification.
10Level of difficulty
- We realise that most of our audience are not
statisticians. - Our aim is to introduce key concepts and to
describe the - logic and philosophy behind the modern approaches
to - causal inference.
- There will some technical details that not
everyone will - easily follow, but we will try to keep
mathematics to an - absolute minimum.
- We will provide software scripts (or details of
where to find - them) for those who are interested in having a go
themselves, but we will not require any prior
knowledge of any particular software packages.