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An AI-assisted, failure mode-based toolkit for proactive risk management in radiotherapy: A feasibility study
0
Zitationen
7
Autoren
2026
Jahr
Abstract
AI-assisted toolkit (i-SART) supports proactive risk management in radiotherapy Harmonised failure mode (FM) database, FM submission portal and LLM assistant in one toolkit Assistant delivers structured FM analyses aligned with safety guidelines; citation inaccuracies occur Submission portal captures additional prospective risks reported by clinical users Multinational survey shows good usability and perceived value for safety work
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