Project Details
Description
Randomized clinical trials for the treatment of psychiatric and substance use disorders can be difficult, time-
consuming, and expensive to conduct. Partially as a consequence, their sample sizes are typically underpow-
ered for: 1) detecting moderately sized average treatment effects (ATEs) that may nonetheless be important
for health at the population level, and 2) learning optimal individualized treatment rules (i.e., rules that match
treatments to individuals based on demographic and clinical characteristics to optimize outcomes of interest),
which are the cornerstone of personalized medicine. These are major barriers to 1) improving population
drug use disorder outcomes in terms of broad implementation of treatments with moderate effects and 2)
improving individual drug use disorder outcomes in terms of refining treatment strategies away from a “one-
size-fits-all” approach to one incorporating a patient’s clinical characteristics. Data fusion typically involves
combining individual patient data from similar studies to improve statistical power and answer questions that
cannot be addressed by a single study alone. However, the statistical theory underlying data fusion is rel-
atively new, and numerous open problems remain. One commonly occurring challenge is that studies will
often measure different outcomes at follow-up such that a given outcome of interest will only be observed in
a subset of studies. In practice, trials are typically combined when they have a common set of covariates,
treatment, and outcome. This means that statistical efficiency and power gains from incorporating data from
additional studies that do not share a common outcome, but do measure other related outcomes, are left
on the table. Consequently, there is a critical need for principled, flexible, and efficient estimators that can
be applied to multi-study, multi-outcome fused data sets to maximize statistical power and efficiency. Doing
so is a prerequisite for learning individualized treatment rules that optimize the health outcomes relevant to
each treatment and for detecting more moderately sized, yet meaningful treatment effects. The objectives of
this project are: 1) to develop both simple parameteric and semiparametric efficient estimators of the ATE,
conditional ATE (CATE) and optimal individualized treatment rules in multi-study, multi-outcome data-fusion
settings (Aims 1a and 2a); 2) to develop sensitivity analyses for ATE and CATE estimation if the untestable
transport identification assumption is not met (Aims 1b and 2b); 3) to apply these estimators to harmonized
medication for the treatment of opioid use disorder (MOUD) trials with multiple outcomes to increase power
to detect effects (Aims 1c and 2c); and 4) to develop and disseminate user-friendly software that implements
all the above methods (Aim 3:). This proposal is expected to make a significant contribution to increasing the
power and information gained from data fusion, and consequently, to improve the individualized treatment of
psychiatric and substance use disorders.
Status | Active |
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Effective start/end date | 8/15/24 → 5/31/25 |
ASJC Scopus Subject Areas
- Statistics and Probability
- Psychiatry and Mental health
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