Markov-Restricted Analysis of Randomized Trials with Non-Monotone Missing Binary Outcomes
Scharfstein et al. (2021) developed a sensitivity analysis model for analyzing randomized trials with repeatedly measured binary outcomes that are subject to nonmonotone missingness. Their approach becomes computationally intractable when the number of measurements is large (e.g., greater than 15)....
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Zusammenfassung: | Scharfstein et al. (2021) developed a sensitivity analysis model for
analyzing randomized trials with repeatedly measured binary outcomes that are
subject to nonmonotone missingness. Their approach becomes computationally
intractable when the number of measurements is large (e.g., greater than 15).
In this paper, we repair this problem by introducing mth-order Markovian
restrictions. We establish identification results for the joint distribution of
the binary outcomes by representing the model as a directed acyclic graph
(DAG). We develop a novel estimation strategy for a smooth functional of the
joint distribution. We illustrate our methodology in the context of a
randomized trial designed to evaluate a web-delivered psychosocial intervention
to reduce substance use, assessed by evaluating abstinence twice weekly for 12
weeks, among patients entering outpatient addiction treatment. |
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DOI: | 10.48550/arxiv.2105.08868 |