ExOSITO: Explainable Off-Policy Learning with Side Information for Intensive Care Unit Blood Test Orders
Journal:
arXiv
Published Date:
Apr 24, 2025
Abstract
Ordering a minimal subset of lab tests for patients in the intensive care
unit (ICU) can be challenging. Care teams must balance between ensuring the
availability of the right information and reducing the clinical burden and
costs associated with each lab test order. Most in-patient settings experience
frequent over-ordering of lab tests, but are now aiming to reduce this burden
on both hospital resources and the environment. This paper develops a novel
method that combines off-policy learning with privileged information to
identify the optimal set of ICU lab tests to order. Our approach, EXplainable
Off-policy learning with Side Information for ICU blood Test Orders (ExOSITO)
creates an interpretable assistive tool for clinicians to order lab tests by
considering both the observed and predicted future status of each patient. We
pose this problem as a causal bandit trained using offline data and a reward
function derived from clinically-approved rules; we introduce a novel learning
framework that integrates clinical knowledge with observational data to bridge
the gap between the optimal and logging policies. The learned policy function
provides interpretable clinical information and reduces costs without omitting
any vital lab orders, outperforming both a physician's policy and prior
approaches to this practical problem.