Multinational attitudes towards AI in healthcare and diagnostics among hospital patients
Author:
Busch FelixORCID, Hoffmann LenaORCID, Xu LinaORCID, Zhang LongjiangORCID, Hu Bin, García-Juárez IgnacioORCID, Toapanta-Yanchapaxi Liz NORCID, Gorelik NataliaORCID, Gorelik ValérieORCID, Rodriguez-Granillo Gaston AORCID, Ferrarotti CarlosORCID, Cuong Nguyen NORCID, Thi Chau APORCID, Tuncel MuratORCID, Kaya GürsanORCID, Solis-Barquero Sergio MORCID, Mendez Avila Maria CORCID, Ivanova Nevena GORCID, Kitamura Felipe CORCID, Hayama Karina YIORCID, Puntunet Bates Monserrat L, Torres Pedro Iturralde, Ortiz-Prado EstebanORCID, Izquierdo-Condoy Juan SORCID, Schwarz Gilbert MORCID, Hofstaetter Jochen GORCID, Hide MichihiroORCID, Takeda KonagiORCID, Perić BarbaraORCID, Pilko GašperORCID, Thulesius Hans OORCID, Lindow Thomas AORCID, Kolawole Israel KORCID, Olatoke Samuel AdegboyegaORCID, Grzybowski AndrzejORCID, Corlateanu AlexandruORCID, Iaconi Oana-SiminaORCID, Li TingORCID, Domitrz IzabelaORCID, Kępczyńska Katarzyna, Mihalčin MatúšORCID, Fašaneková Lenka, Zatoński TomaszORCID, Fułek KatarzynaORCID, Molnár AndrásORCID, Maihoub StefaniORCID, Gama Zenewton A da SilvaORCID, Saba LucaORCID, Sountoulides PetrosORCID, Makowski Marcus RORCID, Aerts Hugo JWLORCID, Adams Lisa CORCID, Bressem Keno KORCID,
Abstract
AbstractThe successful implementation of artificial intelligence (AI) in healthcare is dependent upon the acceptance of this technology by key stakeholders, particularly patients, who are the primary beneficiaries of AI-driven outcomes. This international, multicenter, cross-sectional study assessed the attitudes of hospital patients towards AI in healthcare across 43 countries. A total of 13806 patients at 74 hospitals were surveyed between February and November 2023, with 64.8% from the Global North and 35.2% from the Global South. The findings indicate a predominantly favorable general view of AI in healthcare, with 57.6% of respondents expressing a positive attitude. However, attitudes exhibited notable variation based on demographic characteristics, health status, and technological literacy. Female respondents and those with poorer health status exhibited fewer positive attitudes towards AI use in medicine. Conversely, higher levels of AI knowledge and frequent use of technology devices were associated with more positive attitudes. It is noteworthy that less than half of the participants expressed positive attitudes regarding all items pertaining to trust in AI. The lowest level of trust was observed for the accuracy of AI in providing information regarding treatment responses. Patients exhibited a strong preference for explainable AI and physician-led decision-making, even if it meant slightly compromised accuracy. This large-scale, multinational study provides a comprehensive perspective on patient attitudes towards AI in healthcare across six continents. Findings suggest a need for tailored AI implementation strategies that consider patient demographics, health status, and preferences for explainable AI and physician oversight. All study data has been made publicly available to encourage replication and further investigation.
Publisher
Cold Spring Harbor Laboratory
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