Targeted learning of heterogeneous treatment effect curves for right censored or left truncated time-to-event data
arXiv stat.ML / 3/30/2026
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Key Points
- The paper proposes a new causal machine learning targeted learning method, surv-iTMLE, to estimate subject-specific differences in conditional survival probabilities for two binary treatments in time-to-event settings.
- It is designed to jointly handle both left truncation and right censoring while producing smoother, bounded time-varying treatment effect curves that better reflect the temporal structure of the data.
- The authors show via extensive simulations that surv-iTMLE improves finite-sample performance over existing estimators, particularly in reducing bias and enhancing smoothness of estimated effects over time.
- A real-world application analyzes immunotherapy effects on survival in non-small cell lung cancer (NSCLC) patients, uncovering clinically meaningful heterogeneity patterns over time that prior methods may miss.
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