Irregular measurement times in estimating time-varying treatment effects: Categorizing biases and comparing adjustment methods
Wouter M. R. Kant, Jesse H. Krijthe

TL;DR
This paper categorizes biases caused by irregular measurement times in estimating time-varying treatment effects and compares reweighting methods to adjust for these biases, providing guidance for researchers on bias correction strategies.
Contribution
It introduces a comprehensive categorization of measurement-time-related biases and evaluates reweighting methods through simulations and real data application.
Findings
Reweighting by measurement time adjusts for selection bias and confounding through measured variables.
Time-as-confounder adjusts for all bias categories but not selection bias.
Combining both methods can address confounding and selection bias simultaneously.
Abstract
To estimate the causal effect of treatments that vary over time from observational data, one must adjust for time-varying confounding. A common procedure to address confounding is the use of inverse probability of treatment weighting methods. However, the timing of covariate measurements is often irregular, which may introduce additional confounding bias as well as selection bias into the causal effect estimate. Two reweighting methods have been proposed to adjust for these biases: time-as-confounder and reweighting by measurement time. However, it is currently not well understood in which situations these irregularly timed measurements induce bias, and how the available reweighting methods compare to each other in different situations. In this work, we provide a complete inventarization of all possible backdoor paths through which bias is induced. Based on these paths, we distinguish…
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Taxonomy
TopicsAdvanced Causal Inference Techniques
