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Attitudes Toward AI Usage in Patient Health Care: Evidence From a Population Survey Vignette Experiment
10
Zitationen
4
Autoren
2025
Jahr
Abstract
Our study fills a critical research gap by identifying the key factors that shape public trust and acceptance of AI in health care, particularly reliability, transparency, and patient-centered approaches. Our findings provide evidence-based recommendations for policy makers, health care providers, and AI developers to enhance trust and accountability, key concerns often overlooked in system development and real-world applications. The study highlights the need for targeted policy and educational initiatives to support the responsible integration of AI in patient care.
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