We evaluated an AI chatbot's ability to suggest diagnostic and therapeutic pathways for renal cell carcinoma (RCC) in a multidisciplinary tumor board (MDT). A retrospective analysis of 103 cases (2023-2024) found 62.1% agreement with MDT decisions (kappa = 0.44, p< 0.001). Concordance was highest in when follow-up imaging was suggested (p = 0.001), with disease status influencing agreement (p = 0.004). These results suggest AI could assist in RCC case assessments, warranting further research.

Role of large language models in the multidisciplinary decision-making process for patients with renal cell carcinoma: a pilot experience

Bertolo, Riccardo
;
De Bon, Lorenzo;Caudana, Filippo;Pettenuzzo, Greta;Malandra, Sarah;Casolani, Chiara;Fantinel, Emanuela;Borsato, Alessandro;Negrelli, Riccardo;Brunelli, Matteo;Cerruto, Maria Angela;Antonelli, Alessandro
2025-01-01

Abstract

We evaluated an AI chatbot's ability to suggest diagnostic and therapeutic pathways for renal cell carcinoma (RCC) in a multidisciplinary tumor board (MDT). A retrospective analysis of 103 cases (2023-2024) found 62.1% agreement with MDT decisions (kappa = 0.44, p< 0.001). Concordance was highest in when follow-up imaging was suggested (p = 0.001), with disease status influencing agreement (p = 0.004). These results suggest AI could assist in RCC case assessments, warranting further research.
2025
Oncology, renal cell carcinoma (RCC)
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11562/1168627
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