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The impact of AI on reader behaviour in cancer detection: a scoping review protocol v1
0
Zitationen
4
Autoren
2025
Jahr
Abstract
This protocol outlines a scoping review methodology to map existing literature on the impact of artificial intelligence (AI) on reader behaviour in cancer detection. It focuses on how AI influences the cognitive and decision-making processes of radiologists, pathologists, and other healthcare professionals during diagnostic interpretation. The review is expected to identify key themes, gaps, and trends in how AI affects diagnostic confidence, workflow efficiency, and the interaction between human readers and AI-assisted systems. Findings will provide an evidence base for understanding behavioural and cognitive implications of AI integration in diagnostic practice and guide future research directions in oncology imaging and pathology.
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