Medillustrator: Improving Retrospective Learning in Physicians' Continuous Medical Education via Multimodal Diagnostic Data Alignment and Representation
November 23, 2024 Β· Declared Dead Β· π Proceedings of the Twelfth International Symposium of Chinese CHI
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Authors
Yuansong Xu, Jiahe Dong, Yijie Fan, Yuheng Shao, Chang Jiang, Lixia Jin, Yuanwu Cao, Quan Li
arXiv ID
2411.15593
Category
cs.HC: Human-Computer Interaction
Citations
0
Venue
Proceedings of the Twelfth International Symposium of Chinese CHI
Last Checked
4 months ago
Abstract
Continuous Medical Education (CME) plays a vital role in physicians' ongoing professional development. Beyond immediate diagnoses, physicians utilize multimodal diagnostic data for retrospective learning, engaging in self-directed analysis and collaborative discussions with peers. However, learning from such data effectively poses challenges for novice physicians, including screening and identifying valuable research cases, achieving fine-grained alignment and representation of multimodal data at the semantic level, and conducting comprehensive contextual analysis aided by reference data. To tackle these challenges, we introduce Medillustrator, a visual analytics system crafted to facilitate novice physicians' retrospective learning. Our structured approach enables novice physicians to explore and review research cases at an overview level and analyze specific cases with consistent alignment of multimodal and reference data. Furthermore, physicians can record and review analyzed results to facilitate further retrospection. The efficacy of Medillustrator in enhancing physicians' retrospective learning processes is demonstrated through a comprehensive case study and a controlled in-lab between-subject user study.
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