Creation of Radiology Teaching Content with STELLA-A STandardized Electronic Learning Library and Application Platform.
Creation of Radiology Teaching Content with STELLA-A STandardized Electronic Learning Library and Application Platform. Academic radiology 2025Abstract
Collections of interesting cases are at the heart of radiology education, but efficient saving and sharing of cases has always been a challenge. While numerous home-grown teaching file systems have been created, those deeply dependent on a specific PACS or computer technology are vulnerable to obsolescence and often lack rich educational metadata. To overcome these limitations, we built a powerful new vendor-neutral, open-source web application for image collecting, organizing, annotation, display, and systematic teaching called STELLA-a STandardized Electronic Learning Library and Applications.The software and system architecture passed hospital IT security reviews and was installed on clinical servers as a "containerized" application. A "send" button was added to PACS, which transmits the study instance unique identifier (SUID) to STELLA, launching a query/retrieve call to retrieve the DICOM images and metadata for display in STELLA. Users are required to create a minimum of three structured metadata tags (primarily RadLex terms) for each case as follows: subspecialty, core anatomy, and findings/diagnosis. A highly customizable standards-based metadata creation template extends optional metadata to numerous other classes using controlled terminology, including disease category, detailed anatomy, interventional procedures, trainee level, and level of proof. Free-text fields are employed for Case Title and a descriptive Narrative of teaching points. Cases are shared across all users by default. Custom projects and task-based worklists can be created to train and test learners. Efficient image and video capture, slide making, and batch case upload are supported. Protected health information, while currently stored in the database, is hidden using pseudonymization.In the first 31 months of deployment, over 200 logins were created and 131 users created 3467 teaching cases from 2791 patients across 17 radiology subspecialty categories. 23 users contributed at least 10 teaching files, with the top five users contributing 1586, 553, 334, 280, 219 cases. The top six specialties represented include MSK (1793 cases), Chest (535), breast (377), abdominal imaging (183), neuroradiology (165), and pediatric radiology (159). At least 592 diagnoses were recorded across 67 core anatomy terms. Multiple organized projects and task-focused worklists have been created for systematic content delivery and testing.We successfully developed and deployed STELLA and are experiencing rapid growth in case collection and utilization for teaching and systematic "mastery" learning. Rapid case saving and ontology-based data labeling also enable interoperability, which could support inter-institutional content sharing for teaching and learning, research, or for image annotation supporting artificial intelligence model building.
View details for DOI 10.1016/j.acra.2025.11.040
View details for PubMedID 41455626