Beyond the ATE: Interpretable Modelling of Treatment Effects over Dose and Time
Journal:
arXiv
Published Date:
Jul 9, 2025
Abstract
The Average Treatment Effect (ATE) is a foundational metric in causal
inference, widely used to assess intervention efficacy in randomized controlled
trials (RCTs). However, in many applications -- particularly in healthcare --
this static summary fails to capture the nuanced dynamics of treatment effects
that vary with both dose and time. We propose a framework for modelling
treatment effect trajectories as smooth surfaces over dose and time, enabling
the extraction of clinically actionable insights such as onset time, peak
effect, and duration of benefit. To ensure interpretability, robustness, and
verifiability -- key requirements in high-stakes domains -- we adapt
SemanticODE, a recent framework for interpretable trajectory modelling, to the
causal setting where treatment effects are never directly observed. Our
approach decouples the estimation of trajectory shape from the specification of
clinically relevant properties (e.g., maxima, inflection points), supporting
domain-informed priors, post-hoc editing, and transparent analysis. We show
that our method yields accurate, interpretable, and editable models of
treatment dynamics, facilitating both rigorous causal analysis and practical
decision-making.