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Successful development, regulatory review, and clinical implementation of artificial intelligence (AI) systems in medicine require clear, unambiguous communication about AI models and datasets. The Radiology Ontology of AI Datasets, Models, and Projects (ROADMAP) was developed to provide a machine-interpretable framework to describe medical AI resources by formally defining the attributes of AI models and datasets and their allowable values. ROADMAP builds upon generalized "model cards" and "datasheets for datasets" by incorporating features that support multimodal data, including medical images, structured data, and unstructured text. ROADMAP references concepts from widely used ontologies, coding schemes, and common data elements to improve the discoverability, interoperability, and reuse of AI resources. The ontology can facilitate matching of appropriate AI models with relevant datasets and support the detection of potential sources of bias in AI resources; it is available at https://bioportal.bioontology.org/ontologies/ROADMAP. © RSNA, 2026 See also accompanying Special Report on ROADMAP and metrics.

More information Original publication

DOI

10.1148/ryai.260069

Type

Journal article

Publication Date

2026-03-11T00:00:00+00:00