Effects Among the Affected
Lina M. Montoya, Elvin H. Geng, Michael Valancius, Michael R., Kosorok, Maya L. Petersen

TL;DR
This paper introduces a new causal estimand to better understand how early treatment effects influence the impact of subsequent treatment discontinuation, using machine learning and a novel statistical approach.
Contribution
It proposes a data-adaptive causal estimand that captures how earlier treatment effects modify later treatment effects, with a new estimation method using targeted maximum likelihood estimation.
Findings
Discontinuation effects vary based on initial treatment benefits.
Machine learning enables flexible estimation of conditional effects.
The method is illustrated with HIV care adherence data.
Abstract
Many interventions are both beneficial to initiate and harmful to stop. Traditionally, to determine whether to deploy that intervention in a time-limited way depends on if, on average, the increase in the benefits of starting it outweigh the increase in the harms of stopping it. We propose a novel causal estimand that provides a more nuanced understanding of the effects of such treatments, particularly, how response to an earlier treatment (e.g., treatment initiation) modifies the effect of a later treatment (e.g., treatment discontinuation), thus learning if there are effects among the (un)affected. Specifically, we consider a marginal structural working model summarizing how the average effect of a later treatment varies as a function of the (estimated) conditional average effect of an earlier treatment. We allow for estimation of this conditional average treatment effect using…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods and Bayesian Inference · Poverty, Education, and Child Welfare
