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Publikation

Imitation learning for clinical decision support in pediatric ECMO

Fateme Golivand Darvishvand; Michael A. Skinner; Saurabh Mathur; Ameet Soni; Phillip Reeder; Kristian Kersting; Lakshmi Raman; Sriraam Natarajan
In: Computing Research Repository eprint Journal (CoRR), Vol. abs/2605.16175, Pages 1-11, a, 2026.

Zusammenfassung

Pediatric critical care is a dynamic, high-stakes process in- volving constant monitoring and adjustments in life-saving treatments. Modeling these interventions is crucial for effective decision support. To address the challenges of high complexity and data scarcity in pedi- atric Extracorporeal Membrane Oxygenation (ECMO), we frame clin- ical decision-making as learning to act from trajectories, i.e., imitation learning that learns action models from observational data, with a key feature that actions are not directly observed. We consider TabPFN, a recent transformer-based approach for tabular data, and traditional baselines including XGBoost and Multi-Layer Perceptrons (MLPs) on real-world pediatric ECMO data to learn the action models. We find that the TabPFN-based approach consistently outperforms these classi- cal baselines, supporting its use as a strong clinician-behavior baseline for pediatric ECMO decision support.

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