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- Estimation of Direct and Indirect Causal Effects in Longitudinal Studies
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- Abstract:
- The causal effect of a treatment on an outcome is generally mediated by
several intermediate variables. Estimation of the component of the causal
effect of a treatment that is mediated by a given intermediate variable (the
indirect effect of the treatment), and the component that is not mediated by
that intermediate variable (the direct effect of the treatment) is often
relevant to mechanistic understanding and to the design of clinical and
public health interventions. Under the assumption of no-unmeasured
confounders, Robins & Greenland (1992) and Pearl (2000), develop two
identifiability results for direct and indirect causal effects. They define an
individual direct effect as the counterfactual effect of a treatment on an
outcome when the intermediate variable is set at the value it would have
had if the individual had not been treated, and the population direct effect
as the mean of these individual counterfactual direct effects. The identifiability
result developed by Robins & Greenland (1992) relies on an additional
``No-Interaction Assumption'', while the identifiability result developed by
Pearl (2000) relies on a particular assumption about
conditional independence in the population being sampled.
Both assumptions are considered very restrictive. As a result, estimation of
direct and indirect effects has been considered infeasible in many settings.
We show that the identifiability result of Pearl (2000), also holds under a
new conditional independence assumption which states that, within strata
of baseline covariates, the individual direct effect at a fixed level of the
intermediate variable is independent of the no-treatment counterfactual
intermediate variable. We argue that our assumption is typically less restrictive
than both the assumption of Pearl (2000), and the ``No-interaction Assumption''
of Robins & Greenland (1992). We also generalize the current definition of the
direct (and indirect) effect of a treatment as the population mean of individual
counterfactual direct (and indirect) effects to 1) a general parameter of the
population distribution of individual counterfactual direct (and indirect) effects,
and 2) change of a general parameter of the population distribution of the appropriate counterfactual treatment-specific outcome. Subsequently, we generalize our
identifiability result for the mean to identifiability results for these generally
defined direct effects. We also discuss methods for modelling, testing, and
estimation, and we illustrate our results throughout using an example drawn
from the treatment of HIV infection.
- Subject Area:
- Clinical Trials, Epidemiology, Longitudinal Data Analysis and Time Series, Statistical Theory and Methods
- Suggested Citation:
- Mark J. van der Laan and Maya L. Petersen,
"Estimation of Direct and Indirect Causal Effects in Longitudinal Studies"
(August 2004).
U.C. Berkeley Division of Biostatistics Working Paper Series.
Working Paper 155.
http://www.bepress.com/ucbbiostat/paper155