FastOMOP: A Foundational Architecture for Reliable Agentic Real-World Evidence Generation on OMOP CDM data
arXiv cs.AI / 4/28/2026
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Key Points
- FastOMOP is an open-source multi-agent architecture designed to generate real-world evidence (RWE) reliably from OMOP CDM data, reducing the need for manual clinical, epidemiological, and technical work.
- The core design separates infrastructure layers—governance, observability, and orchestration—from pluggable agent teams, enforcing safety at the process boundary rather than relying on agent “reasoning.”
- FastOMOP uses deterministic validation at the boundary to prevent compromised or hallucinating agents from bypassing safety controls, while controlling tool exposure for tasks like phenotyping, study design, and statistical analysis.
- In evaluations using a natural-language-to-SQL agent team across Synthea (synthetic), MIMIC-IV, and an NHS dataset (Lancashire Teaching Hospitals), FastOMOP achieved reliability scores of 0.84–0.94 with perfect adversarial and out-of-scope blocking.
- The authors argue the reliability gap in agentic RWE deployment is architectural (governance and orchestration), not a limitation of model capability, positioning FastOMOP as a governed foundation for progressive RWE automation.
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