Leading medical societies aren't just publishing anymore, they're building learning health systems. With FHIR and ReasonHub the continuous improvement vision of 21st-century medicine is here.
Medical societies steward the standards that define specialty care. They translate research into guidelines, certify competence, and provide members with the evidence base for clinical decisions.
But they face a critical challenge: their knowledge remains locked in static *PDFs while healthcare is evolving towards computable guidance that works *directly in EHRs and decision support tools. How will societies adapt to this *new reality?
FHIR enables societies to evolve from publishers to clinical intelligence providers. By authoring structured, computable artifacts with FHIR, societies can link real-world data, evidence generation, and clinical guidance into a continuous improvement loop, delivering expertise that's used, even by non-specialists, at the point of care.
FHIR's latest capabilities such as structured, computable guidelines and measures, automated validation, and secure distribution provide the framework to make specialty knowledge usable. This supports a learning health system where every recommendation isn't just read, but implemented in practice, creating measurable value for members, improving patient outcomes, and sustaining societies' essential role in evidence-based medicine.
The ambitions of the most forward-looking societies extend far beyond publishing more static guidelines and measures. They are starting to build the foundations of a continuously improving health system.
Evidence → Computable Knowledge → Practice → Outcomes → New Evidence
Here's what this transformation looks like in practice:
Here's how FHIR enables each stage:
| Stage | What You Do | Your FHIR Stack | Why It Matters |
|---|---|---|---|
| Computable living guidelines | Transform consensus recommendations into executable logic with continuous updates | PlanDefinition, ActivityDefinition, Library (CQL), Evidence, ArtifactAssessment | Closes the evidence-to-practice gap; enables CDS that clinicians trust because it comes from you and stays relevant. |
| Meaningful measures & benchmarking | Author executable measures for regulatory reporting and meaningful performance insights | Measure, MeasureReport, Library (CQL), ValueSet | Moves beyond checkbox compliance to measures that drive real improvement; Benchmarks enable positive reinforcement loops |
| Next-generation registries | Build FHIR-based data warehouses with rich analytics: surface trends, perform cohort comparisons | Observation, Procedure, Condition, SQL on FHIR, MeasureReport, EvidenceVariable | Transforms registries from data collection to high-value platforms that deliver dashboards, scorecards, and actionable insights. |
| Real-world evidence → guidelines | Close the loop: registry data feeds evidence synthesis and informs guideline updates | Evidence, Citation, ArtifactAssessment, Bulk Data $export | Creates a true learning system where practice informs evidence; research progresses faster and guidelines improve continuously. |
| Terminology stewardship | Maintain specialty-specific value sets and concept maps aligned with national standards | CodeSystem, ValueSet, ConceptMap, $expand, $validate-code, $translate | Everything depends on consistent terminology; you provide the authoritative definitions that enable interoperability. |
| Grounded AI models | Develop AI to recommend next-best actions while basing decisions on your evidence-based computable guidelines | PlanDefinition, Vector embeddings, MCP APIs, Library (CQL) | Enables intelligent, society-endorsed decision support that learns from outcomes while maintaining clinical rigor. |
The modern registry shouldn't just be a data collector. It should be a unique knowledge platform that creates value for members and enables the learning health system. Yet nearly all societies face daunting barriers.
What's missing? Societies lack fit-for-purpose infrastructure to author, *validate, and distribute computable artifacts at scale. Off-the-shelf FHIR *servers require extensive custom development beyond the reach of most *societies.
That's where ReasonHub comes in: providing the essential infrastructure for *societies to create, test, and operate the complete learning health system *cycle.
ReasonHub supports the entire knowledge lifecycle, from evidence to practice and back. Here are some of the use cases that become possible with the ReasonHub platform.
Create Living Guidelines
PlanDefinitions and Library (CQL) from narrative text; validate against FHIR profiles and terminology standards.Citation and Evidence resources directly to recommendations; maintain transparent provenance as evidence evolves.Build Analytics-Rich Registries
Observation, Procedure, Condition resources.Author Measures That Matter
Manage Terminology at Scale
$expand, $validate-code, $translate, $subsumes across SNOMED, LOINC, ICD, RxNorm and more.ConceptMaps; track semantic drift across terminology releases.Solve Your Content's Last Mile Problem
For medical societies that want to achieve the highest-and-best use of their knowledge content, the choice is clear. FHIR's capabilities have expanded to allow you to evolve from static content publisher to dynamic intelligence provider and ReasonHub is the only platform purpose-built to make that evolution a reality.
FHIR provides the standards. ReasonHub provides the infrastructure. Your *society provides the evidence.
Together, they create a true learning health system where every guideline drives measurable practice change, every registry generates actionable insights, and every patient outcome informs the next generation of evidence.
That is how medical societies fulfill their missions to advance health and succeed in the age of computable medicine.
Let's show you how ReasonHub helps you implement FHIR-based solutions with confidence and speed