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Factors Affecting the Attitude of Medical Doctors in Türkiye towards Using Artificial Intelligence Applications in Healthcare Services
5
Zitationen
2
Autoren
2024
Jahr
Abstract
Objective: Artificial intelligence (AI) is transforming various sectors, including healthcare. The aim of this research was to examine the factors that determined acceptance of and intention to use AI applications by medical doctors. Methods: This research was based on an online survey conducted with 275 medical doctors in Türkiye. The survey was prepared in English and was later translated into Turkish by the researchers. The study employed a convenience sampling technique. The partial least squares-structural equation modeling was employed to ascertain causal relationships for theory confirmation. The data analysis utilized SmartPLS 3. Descriptive statistics were calculated with the SPSS 25 software. Results: According to the findings, trust (b=0.651; t=25.876; p<0.01) was the strongest positive factor for increased intention to use AI applications. Perceived usefulness (b=0.613; t=22.851; p<0.01) and perceived ease of use (PEOU) (b=0.644; t=14.577; p<0.01), significantly predicted ıntension to use. Technological anxiety was not a significant predictor for intension to use (b=0.067; t=1.014; p=0.093) as well as facilitating conditions (b=0.071; t=1.041; p=0.102). Conclusion: This research reveals that trust, perceived usefulness, and PEOU are the major positive factors for AI to be accepted and used by medical doctors. The greater trust and ease of use that comes with more knowledge and experience about AI may lead to more action to be taken to benefit from AI in the healthcare sector.
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