Heterogeneous Treatment Effect in Time-to-Event Outcomes: Harnessing Censored Data with Recursively Imputed Trees
Tomer Meir, Uri Shalit, Malka Gorfine

TL;DR
This paper introduces MISTR, a novel non-parametric method using recursively imputed survival trees to estimate heterogeneous treatment effects in censored survival data, outperforming existing methods especially under heavy censoring and with instrumental variables.
Contribution
MISTR is the first non-parametric approach for HTE estimation in survival data that handles unobserved confounders using instrumental variables.
Findings
MISTR outperforms prior methods under heavy censoring.
MISTR extends to instrumental variable settings.
MISTR is validated on real-world datasets.
Abstract
Tailoring treatments to individual needs is a central goal in fields such as medicine. A key step toward this goal is estimating Heterogeneous Treatment Effects (HTE) - the way treatments impact different subgroups. While crucial, HTE estimation is challenging with survival data, where time until an event (e.g., death) is key. Existing methods often assume complete observation, an assumption violated in survival data due to right-censoring, leading to bias and inefficiency. Cui et al. (2023) proposed a doubly-robust method for HTE estimation in survival data under no hidden confounders, combining a causal survival forest with an augmented inverse-censoring weighting estimator. However, we find it struggles under heavy censoring, which is common in rare-outcome problems such as Amyotrophic lateral sclerosis (ALS). Moreover, most current methods cannot handle instrumental variables, which…
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Taxonomy
TopicsAdvanced Causal Inference Techniques
MethodsCausal inference
