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Explainable Artificial Intelligence in Paediatric: Challenges for the Future
5
Zitationen
4
Autoren
2024
Jahr
Abstract
Paediatrics is a very sensitive domain where consequences of misinterpreting AI outcomes might be very significant. XAI should be adopted carefully with focus on evaluating the outcomes primarily by including paediatricians in the loop, enriching the pipeline by injecting domain knowledge promoting a cross-fertilization perspective aiming at filling the gaps still preventing its adoption.
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