Multinational Attitudes Toward AI in Health Care and Diagnostics Among Hospital Patients

Felix Busch, Lena Hoffmann, Lina Xu, Longjiang Zhang, Bin Hu, Ignacio García-Juárez, Liz N Toapanta-Yanchapaxi, Natalia Gorelik, Valérie Gorelik, Gaston A Rodriguez-Granillo, Carlos Ferrarotti, Nguyen N Cuong, Chau AP Thi, Murat Tuncel, Gürsan Kaya, Sergio M Solis-Barquero, Maria C Mendez Avila, Nevena G Ivanova, Felipe C Kitamura, Karina YI HayamaMonserrat L Puntunet Bates, Pedro Iturralde Torres, Esteban Ortiz-Prado, Juan S Izquierdo-Condoy, Gilbert M Schwarz, Jochen G Hofstaetter, Michihiro Hide, Konagi Takeda, Barbara Perić, Gašper Pilko, Hans O Thulesius, Thomas A Lindow, Israel K Kolawole, Samuel Adegboyega Olatoke, Andrzej Grzybowski, Alexandru Corlateanu, Oana-Simina Iaconi, Ting Li, Izabela Domitrz, Katarzyna Kępczyńska, Matúš Mihalčin, Lenka Fašaneková, Tomasz Zatoński, Katarzyna Fułek, András Molnár, Stefani Maihoub, Zenewton A da Silva Gama, Luca Saba, Petros Sountoulides, Marcus R Makowski, Hugo JWL Aerts, Lisa C Adams, Keno K Bressem, Sonyia McFadden,

Research output: Contribution to journalArticlepeer-review

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Abstract

Importance The successful implementation of artificial intelligence (AI) in health care depends on its acceptance by key stakeholders, particularly patients, who are the primary beneficiaries of AI-driven outcomes.

Objectives To survey hospital patients to investigate their trust, concerns, and preferences toward the use of AI in health care and diagnostics and to assess the sociodemographic factors associated with patient attitudes.

Design, Setting, and Participants This cross-sectional study developed and implemented an anonymous quantitative survey between February 1 and November 1, 2023, using a nonprobability sample at 74 hospitals in 43 countries. Participants included hospital patients 18 years of age or older who agreed with voluntary participation in the survey presented in 1 of 26 languages.

Exposure Information sheets and paper surveys handed out by hospital staff and posted in conspicuous hospital locations.

Main Outcomes and Measures The primary outcome was participant responses to a 26-item instrument containing a general data section (8 items) and 3 dimensions (trust in AI, AI and diagnosis, preferences and concerns toward AI) with 6 items each. Subgroup analyses used cumulative link mixed and binary mixed-effects models.

Results In total, 13 806 patients participated, including 8951 (64.8%) in the Global North and 4855 (35.2%) in the Global South. Their median (IQR) age was 48 (34-62) years, and 6973 (50.5%) were male. The survey results indicated a predominantly favorable general view of AI in health care, with 57.6% of respondents (7775 of 13 502) expressing a positive attitude. However, attitudes exhibited notable variation based on demographic characteristics, health status, and technological literacy. Female respondents (3511 of 6318 [55.6%]) exhibited fewer positive attitudes toward AI use in medicine than male respondents (4057 of 6864 [59.1%]), and participants with poorer health status exhibited fewer positive attitudes toward AI use in medicine (eg, 58 of 199 [29.2%] with rather negative views) than patients with very good health (eg, 134 of 2538 [5.3%] with rather negative views). Conversely, higher levels of AI knowledge and frequent use of technology devices were associated with more positive attitudes. Notably, fewer 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 (5637 of 13 480 respondents [41.8%] trusted AI). Patients preferred explainable AI (8816 of 12 563 [70.2%]) and physician-led decision-making (9222 of 12 652 [72.9%]), even if it meant slightly compromised accuracy.

Conclusions and Relevance In this cross-sectional study of patient attitudes toward AI use in health care across 6 continents, findings indicated that tailored AI implementation strategies should take patient demographics, health status, and preferences for explainable AI and physician oversight into account.
Original languageEnglish
Pages (from-to)1-23
Number of pages23
JournalJAMA Network Open
Volume8
Issue number6
Early online date10 Jun 2025
DOIs
Publication statusPublished (in print/issue) - 30 Jun 2025

Bibliographical note

Publisher Copyright:
© 2025 Busch F et al.

Data Access Statement

Busch. Multinational Attitudes Toward AI in Health Care and Diagnostics Among Hospital
Patients. JAMA Netw Open. Published June 10, 2025.
doi:10.1001/jamanetworkopen.2025.14452

Data
Data available: Yes

Data types: Deidentified participant data, Data dictionary

How to access data: The full dataset and a data dictionary are publicly available under CC-BY 4.0 international license at figshare: https://doi.org/10.6084/m9.figshare.24964488.

When available: beginning date: 09-01-2024

Supporting Documents
Document types: Statistical/analytic code

How to access documents: The code for all statistical analyses is publicly available from our GitHub repository: https://gist.github.com/kbressem/7028613a6a16ad9594a18f0c1b85a0ee

When available: With publication

Additional Information
Who can access the data: To anyone under CC-BY 4.0 international license.

Types of analyses: For any purpose.

Mechanisms of data availability: Without investigator support

Keywords

  • AI
  • patients
  • healthcare
  • perceptions and attitudes
  • Cross-Sectional Studies
  • Humans
  • Middle Aged
  • Artificial Intelligence
  • Male
  • Trust
  • Hospitals
  • Delivery of Health Care
  • Internationality
  • Female
  • Adult
  • Surveys and Questionnaires
  • Aged

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