A Diffusion-Based Method for Learning the Multi-Outcome Distribution of Medical Treatments
Yuchen Ma, Jonas Schweisthal, Hengrui Zhang, Stefan Feuerriegel

TL;DR
This paper introduces DIME, a diffusion-based neural method that learns the joint distribution of multiple interdependent medical treatment outcomes, enabling more reliable and comprehensive decision-making with uncertainty quantification.
Contribution
DIME is the first neural approach specifically designed to learn the joint, multi-outcome distribution of medical treatments, capturing dependencies and handling mixed outcome types.
Findings
Effectively learns joint distribution of multiple outcomes
Captures dependence structure among outcomes
Handles mixed outcome types
Abstract
In medicine, treatments often influence multiple, interdependent outcomes, such as primary endpoints, complications, adverse events, or other secondary endpoints. Hence, to make optimal treatment decisions, clinicians are interested in learning the distribution of multi-dimensional treatment outcomes. However, the vast majority of machine learning methods for predicting treatment effects focus on single-outcome settings, despite the fact that medical data often include multiple, interdependent outcomes. To address this limitation, we propose a novel diffusion-based method called DIME to learn the joint distribution of multiple outcomes of medical treatments. We addresses three challenges relevant in medical practice: (i)it is tailored to learn the joint interventional distribution of multiple medical outcomes, which enables reliable decision-making with uncertainty quantification rather…
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Taxonomy
TopicsHealth Systems, Economic Evaluations, Quality of Life · Statistical Methods in Clinical Trials
