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Perceived Trust in Artificial Intelligence in Eye Care: Demographic Determinants and Variations in Attitudes Among Ophthalmologists and Residents
0
Zitationen
5
Autoren
2026
Jahr
Abstract
Purpose: To investigate demographic and professional determinants of perceived trust and attitudes toward artificial intelligence (AI) in ophthalmology among ophthalmologists and residents, addressing gaps in understanding factors influencing AI adoption in eye care. Patients and Methods: This cross-sectional study surveyed 156 participants (73.1% female; median age 35 years) from Bulgaria, including specialists (two-thirds) and residents (one-third). A structured questionnaire assessed awareness, trust in AI for diagnostics and therapeutics, expectations, and concerns. Ethical approval was obtained, and informed consent secured. Data were analyzed using chi-square tests for gender differences, Spearman correlations for age, Kruskal-Wallis tests for experience, and thematic analysis for qualitative responses. Results: = 11.29, p =0.010). Residents showed greater awareness and readiness to follow AI recommendations than specialists (p <0.05). Overall, 64.6% were informed about AI, but trust was low (7.5% for diagnostics); qualitative themes highlighted benefits like diagnostic precision and challenges like regulation gaps. Conclusion: Demographic and professional factors significantly influence AI attitudes in ophthalmology, with limited trust despite optimism. Targeted education and regulatory frameworks are essential to enhance adoption and address variations.
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