Dermatology Image Annotation FHIR Implementation Guide
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This IG complements the SMART Imaging Access specification from the Argonaut Project. Together, the two specifications address the full clinical photography annotation pipeline for dermatology.
SMART Imaging Access solves the image retrieval problem. It defines how applications access medical images from PACS, VNA, and other imaging archives through FHIR-based authorization and WADO-RS endpoints. A dermatology annotation application uses SMART Imaging Access to retrieve clinical photographs from institutional imaging systems.
This IG solves the annotation output problem. It defines how to represent structured annotation results as FHIR Observations and return them to the patient record. Once a clinician or AI system annotates a retrieved image, this IG provides the format for storing that result.
The two specifications form a complete pipeline:
derivedFrom.The derivedFrom element in DermatologyImageAnnotation and AIPrediction accepts references to ImagingStudy, DocumentReference, or Media resources. These are the same resource types that SMART Imaging Access uses to represent available images. This alignment means that the reference obtained during image retrieval can be used directly as the derivedFrom target in the annotation result, with no translation step required.
The ONC Diagnostic Imaging Interoperability Request for Information (January 2026) signals regulatory interest in extending imaging interoperability beyond radiology. Dermatology is explicitly mentioned as a specialty where imaging workflows lack standardization. The combination of SMART Imaging Access for retrieval and this IG for annotation output addresses the full data lifecycle that ONC's RFI describes.
This IG does not depend on SMART Imaging Access, and neither specification requires the other. Implementations can adopt either independently. However, systems that implement both gain a standards-based pipeline from image retrieval through annotation storage.