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A multiple imputation strategy for sequential multiple assignment randomized trials.


ABSTRACT: Sequential multiple assignment randomized trials (SMARTs) are increasingly being used to inform clinical and intervention science. In a SMART, each patient is repeatedly randomized over time. Each randomization occurs at a critical decision point in the treatment course. These critical decision points often correspond to milestones in the disease process or other changes in a patient's health status. Thus, the timing and number of randomizations may vary across patients and depend on evolving patient-specific information. This presents unique challenges when analyzing data from a SMART in the presence of missing data. This paper presents the first comprehensive discussion of missing data issues typical of SMART studies: we describe five specific challenges and propose a flexible imputation strategy to facilitate valid statistical estimation and inference using incomplete data from a SMART. To illustrate these contributions, we consider data from the Clinical Antipsychotic Trial of Intervention and Effectiveness, one of the most well-known SMARTs to date.

SUBMITTER: Shortreed SM 

PROVIDER: S-EPMC4184954 | biostudies-literature | 2014 Oct

REPOSITORIES: biostudies-literature

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A multiple imputation strategy for sequential multiple assignment randomized trials.

Shortreed Susan M SM   Laber Eric E   Scott Stroup T T   Pineau Joelle J   Murphy Susan A SA  

Statistics in medicine 20140611 24


Sequential multiple assignment randomized trials (SMARTs) are increasingly being used to inform clinical and intervention science. In a SMART, each patient is repeatedly randomized over time. Each randomization occurs at a critical decision point in the treatment course. These critical decision points often correspond to milestones in the disease process or other changes in a patient's health status. Thus, the timing and number of randomizations may vary across patients and depend on evolving pa  ...[more]

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