Considerations for Estimating Causal Effects of Informatively Timed Treatments
- URL: http://arxiv.org/abs/2508.21804v1
- Date: Fri, 29 Aug 2025 17:32:47 GMT
- Title: Considerations for Estimating Causal Effects of Informatively Timed Treatments
- Authors: Arman Oganisian,
- Abstract summary: We show how g-methods can be used to analyze sequential treatments that are informatively timed.<n>Using synthetic examples, we illustrate how g-methods that do not adjust for these waiting times may be biased.<n>We provide implementation guidance and examples using publicly available software.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Epidemiological studies are often concerned with estimating causal effects of a sequence of treatment decisions on survival outcomes. In many settings, treatment decisions do not occur at fixed, pre-specified followup times. Rather, timing varies across subjects in ways that may be informative of subsequent treatment decisions and potential outcomes. Awareness of the issue and its potential solutions is lacking in the literature, which motivate this work. Here, we formalize the issue of informative timing, problems associated with ignoring it, and show how g-methods can be used to analyze sequential treatments that are informatively timed. As we describe, in such settings, the waiting times between successive treatment decisions may be properly viewed as a time-varying confounders. Using synthetic examples, we illustrate how g-methods that do not adjust for these waiting times may be biased and how adjustment can be done in scenarios where patients may die or be censored in between treatments. We draw connections between adjustment and identification with discrete-time versus continuous-time models. Finally, we provide implementation guidance and examples using publicly available software. Our concluding message is that 1) considering timing is important for valid inference and 2) correcting for informative timing can be done with g-methods that adjust for waiting times between treatments as time-varying confounders.
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