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League of Radiologists-an End-to-End AI Framework for Scalable and Gamified Radiology Education: A Pilot Implementation in Chest Radiography

Authors
 Kim, Hyunji  ;  Kim, Young-Tak  ;  Langarica, Saul  ;  Fialkowski, Kevin P.  ;  Seah, Jarrel C. Y.  ;  Tang, Jennifer S. N.  ;  Song, Kyoung Doo  ;  Jung, Dae Chul  ;  Bae, Kyongtae Tyler  ;  Cochran, Rory L.  ;  Succi, Marc D.  ;  McDermott, Shaunagh  ;  Bahl, Manisha  ;  Ackman, Jeanne B.  ;  Lev, Michael H.  ;  Gee, Michael S.  ;  Do, Synho 
Citation
 JOURNAL OF IMAGING INFORMATICS IN MEDICINE, 2026-04 
Journal Title
JOURNAL OF IMAGING INFORMATICS IN MEDICINE
ISSN
 2948-2925 
Issue Date
2026-04
Keywords
Radiology education ; Interactive learning ; Artificial intelligence ; End-to-End framework ; Gamification
Abstract
Traditional radiology education is constrained by a restricted apprenticeship model and a scarcity of datasets structured for building artificial intelligence (AI)-based radiology education systems. To address this problem, we developed a novel end-to-end framework for transforming vast clinical archives into scalable radiology education resources. The proposed framework converts static radiographic data into an interactive learning system through three integrated components. First, a multi-stage curation pipeline establishes a foundation of trustworthy cases suitable for radiology education from noisy public archives. Second, a large language model pipeline automatically generates a rich library of questions engineered to build core radiology reasoning skills. Finally, this content is deployed on an interactive, gamified platform that uses an adaptive algorithm to deliver a personalized and engaging learning experience. The curation pipeline distilled an initial pool of 493,785 images into a final dataset of 881 high-fidelity chest radiographs, from which the automated content generation pipeline produced 2305 multiple-choice questions. The system was implemented as the League of Radiologists, a publicly accessible platform (https://radontology.org), demonstrating the feasibility of the proposed end-to-end architecture. A field demonstration resulted in 40 registered users and 68 unique examination sessions without technical failure, with 37.5% of active participants returning for multiple sessions. While currently focused on single finding chest radiographs, this study provides a practical and reproducible blueprint for implementing an AI-enabled adaptive radiology education platform using heterogeneous clinical imaging data. The described framework offers an extensible foundation for future development and evaluation of AI-driven educational systems in medical imaging.
Files in This Item:
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DOI
10.1007/s10278-026-01960-w
Appears in Collections:
1. College of Medicine (의과대학) > Dept. of Radiology (영상의학교실) > 1. Journal Papers
Yonsei Authors
Jung, Dae Chul(정대철) ORCID logo https://orcid.org/0000-0001-5769-5083
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/212151
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