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Which explanations do clinicians prefer? A comparative evaluation of XAI understandability and actionability in predicting the need for hospitalization
4
Zitationen
20
Autoren
2025
Jahr
Abstract
The findings suggest that SHAP and AraucanaXAI are promising candidates for improving the use of XAI in clinical decision support systems (DSSs), highlighting the importance of clinicians' expertise, specialty, and setting on the selection and development of supportive XAI advice. Finally, the study provides valuable insights into the design of future XAI DSSs.
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Autoren
- Laura Bergomi
- Giovanna Nicora
- Marta Anna Orlowska
- Chiara Podrecca
- Riccardo Bellazzi
- Caterina Fregosi
- Francesco Salinaro
- Marco Bonzano
- Giuseppe Crescenzi
- Francesco Speciale
- S. Di Pietro
- Valentina Zuccaro
- Erika Asperges
- Paolo Sacchi
- Pietro Valsecchi
- Elisabetta Pagani
- Michele Catalano
- Chandra Bortolotto
- Lorenzo Preda
- Enea Parimbelli