Evidence-Linked Radiology Reporting: A Human-Supervised Reference Architecture for Structured Imaging Intelligence
Researchers have proposed a new reference architecture for structured radiology reporting that links evidence directly to report content. This human-supervised system aims to extract and organize structured information, such as measurements and lesion identities, which are often lost in free text or fragmented across various systems. The framework integrates exam-specific templates, AI-assisted drafting, and interoperability standards to support reviewed reporting, longitudinal comparison, and integration with enterprise imaging workflows. AI
IMPACT This architecture could improve the accuracy and reusability of clinical data by linking imaging findings to their evidence, potentially enhancing AI-driven diagnostics and research.