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RadGame: An AI-Powered Platform for Radiology Education
1
Zitationen
32
Autoren
2025
Jahr
Abstract
We introduce RadGame, an AI-powered gamified platform for radiology education that targets two core skills: localizing findings and generating reports. Traditional radiology training is based on passive exposure to cases or active practice with real-time input from supervising radiologists, limiting opportunities for immediate and scalable feedback. RadGame addresses this gap by combining gamification with large-scale public datasets and automated, AI-driven feedback that provides clear, structured guidance to human learners. In RadGame Localize, players draw bounding boxes around abnormalities, which are automatically compared to radiologist-drawn annotations from public datasets, and visual explanations are generated by vision-language models for user missed findings. In RadGame Report, players compose findings given a chest X-ray, patient age and indication, and receive structured AI feedback based on radiology report generation metrics, highlighting errors and omissions compared to a radiologist's written ground truth report from public datasets, producing a final performance and style score. In a prospective evaluation, participants using RadGame achieved a 68% improvement in localization accuracy compared to 17% with traditional passive methods and a 31% improvement in report-writing accuracy compared to 4% with traditional methods after seeing the same cases. RadGame highlights the potential of AI-driven gamification to deliver scalable, feedback-rich radiology training and reimagines the application of medical AI resources in education.
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Autoren
- Mohammed Baharoon
- Sasan R. Raissi
- Jae‐Bum Jun
- Thibault Heintz
- Mahmoud Alabbad
- Ali Alburkani
- Sung‐Eun Kim
- Kent Kleinschmidt
- Abdulrahman O. Alhumaydhi
- Mohammed Alghamdi
- José Pérez del Palacio
- Mohammed Bukhaytan
- Noah Michael Prudlo
- Rithvik Akula
- Brady Chrisler
- Benjamin Galligos
- Mutlaq Almutairi
- Mohammad Alanazi
- Nasser M. Alrashdi
- Ji Young Hwang
- Sri Sai Dinesh Jaliparthi
- L. Nelson
- Ninh T. Nguyen
- Sailaja Suryadevara
- Steven Kim
- Mohammed F. Mohammed
- Yevgeniy R. Semenov
- Kun‐Hsing Yu
- Abdulrhman Aljouie
- Hassan Alomaish
- Adam Rodman
- Pranav Rajpurkar