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The Use of Artificial Intelligence in Head and Neck Cancers: A Multidisciplinary Survey
4
Zitationen
22
Autoren
2024
Jahr
Abstract
Artificial intelligence (AI) approaches have been introduced in various disciplines but remain rather unused in head and neck (H&N) cancers. This survey aimed to infer the current applications of and attitudes toward AI in the multidisciplinary care of H&N cancers. From November 2020 to June 2022, a web-based questionnaire examining the relationship between AI usage and professionals' demographics and attitudes was delivered to different professionals involved in H&N cancers through social media and mailing lists. A total of 139 professionals completed the questionnaire. Only 49.7% of the respondents reported having experience with AI. The most frequent AI users were radiologists (66.2%). Significant predictors of AI use were primary specialty (V = 0.455; <i>p</i> < 0.001), academic qualification and age. AI's potential was seen in the improvement of diagnostic accuracy (72%), surgical planning (64.7%), treatment selection (57.6%), risk assessment (50.4%) and the prediction of complications (45.3%). Among participants, 42.7% had significant concerns over AI use, with the most frequent being the 'loss of control' (27.6%) and 'diagnostic errors' (57.0%). This survey reveals limited engagement with AI in multidisciplinary H&N cancer care, highlighting the need for broader implementation and further studies to explore its acceptance and benefits.
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Autoren
- Caterina Giannitto
- Giorgia Carnicelli
- Stefano Lusi
- Angela Ammirabile
- Elena Casiraghi
- Armando De Virgilio
- Andrea Esposito
- Davide Farina
- Fabio Ferreli
- Ciro Franzese
- Gian Marco Frigerio
- Antonio Lo Casto
- Luca Malvezzi
- Luigi Lorini
- Ahmed E. Othman
- Lorenzo Preda
- Marta Scorsetti
- Paolo Bossi
- Giuseppe Mercante
- Giuseppe Spriano
- Luca Balzarini
- Marco Francone
Institutionen
- Humanitas University(IT)
- IRCCS Humanitas Research Hospital(IT)
- University of Milan(IT)
- Lawrence Berkeley National Laboratory(US)
- Azienda Ospedaliera Treviglio(IT)
- Azienda Socio Sanitaria Territoriale di Bergamo Ovest
- University of Brescia(IT)
- University of Palermo(IT)
- University Medical Center of the Johannes Gutenberg University Mainz(DE)
- Johannes Gutenberg University Mainz(DE)
- University of Pavia(IT)