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Artificial intelligence uncertainty quantification in radiotherapy applications − A scoping review
17
Zitationen
14
Autoren
2024
Jahr
Abstract
Our review revealed a lack of diversity in UQ for RT applications beyond auto-contouring. Moreover, we identified a clear need to study additional UQ methods, such as conformal prediction. Our results may incentivize the development of guidelines for reporting and implementation of UQ in RT.
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