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The University of Manchester

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Methodology Research Group. Funded by: MRC ... the best outcomes in the absence of therapy. ... We realise that most of our audience are not statisticians. ... – PowerPoint PPT presentation

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Title: The University of Manchester


1
Methods 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
2
Funding
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).
3
Explanatory 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.

4
The 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).

5
Distinguishing 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.

6
Missing 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.

7
Potential 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?

8
Process 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?

9
The 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.

10
Level 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.
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