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Trust and Acceptance Challenges in the Adoption of AI Applications in Health Care: Quantitative Survey Analysis
41
Zitationen
3
Autoren
2025
Jahr
Abstract
The findings highlight the complex interplay of factors influencing trust and acceptance of AI in health care. Consumer trust and intention to use AI in health care are driven by technology attitudes and use rather than specific use cases. AI service providers should consider demographic factors, personality traits, and technology attitudes when designing and implementing AI systems in health care. The study demonstrates the potential of using predictive AI models as decision-making tools for implementing and interacting with clients in health care AI applications.
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