At this year’s OHDSI Symposium, our team presented a poster titled Advancing Learning Health Systems Through Integrated Machine Learning Operations: A Novel Extension of the OHDSI Research Infrastructure. Quite the mouthful: the work reflects our ongoing efforts to bridge the gap between observational research and real-time clinical decision-making by extending the OHDSI stack into operational data science workflows.
Healthcare is moving rapidly from protocol-driven care toward learning health systems - environments where evidence generation and clinical practice continuously inform each other. While OHDSI’s OMOP Common Data Model and ATLAS platform have made large-scale retrospective studies possible, they weren’t designed for the near real-time analytics that learning health systems demand.
At the same time, enterprise MLOps frameworks have proven how version control, reproducibility, and automation can safely productionize AI. The opportunity—and challenge—lies in bringing these two worlds together.
In our poster and discussion, Boudewijn Aasman, Cognome’s data scientist, outlined several advances that extend OHDSI’s architecture to support operational use cases:
Together, these capabilities create a true feedback loop between research insights and operational use.
The platform has already been deployed in clinical environments. For example:
Research workflows have also accelerated: time-to-insight is 3–4x faster, and teams can collaborate more effectively by reusing standardized data baskets.
Our goal is not to replace OHDSI’s infrastructure but to extend it. By embedding modern MLOps practices into the established OMOP/ATLAS ecosystem, we create a pathway for healthcare institutions to evolve into learning health systems without abandoning the standards and collaborations that made OHDSI successful.
As Boudewijn emphasized in our discussion: this work is about making the OHDSI stack operational—transforming it from a retrospective research platform into the backbone of a continuously learning health system.
If you’d like to learn more, drop by and chat with us at the OHDSI symposium. Or of course contact us through this website.