Accepted for/Published in: Journal of Medical Internet Research
Date Submitted: Mar 25, 2025
Date Accepted: Jun 25, 2025
Generative AI in Primary Care: A qualitative study of UK General Practitioners’ Views
ABSTRACT
Background:
The potential for generative AI (GenAI) to assist with clinical tasks is the subject of ongoing debate within biomedical informatics and related fields.
Objective:
This study aimed to explore general practitioners’ (GPs’) opinions about GenAI on primary care.
Methods:
In January 2025, we conducted a Web-based survey of 1005 UK GPs’ experiences and opinions of GenAI in clinical practice. This study involved a qualitative descriptive analysis of a written response (“comments”) to an open-ended question in the survey.
Results:
Comments were classified into 3 major themes and 8 subthemes in relation to GenAI in clinical practice. The major themes were: (1) unfamiliarity, (2) ambivalence and anxiety, and (3) role in clinical tasks. ‘Unfamiliarity’ encompassed lack of experience and knowledge, and the need for training on GenAI. ‘Ambivalence and anxiety’ included mixed expectations among GPs in relation to these tools, beliefs about diminished human connection, and skepticism about AI accountability. Finally, commenting on the role of GenAI in clinical tasks, GPs believed it would help with documentation. However, respondents questioned AI’s clinical judgment and raised concerns about operational uncertainty concerning these tools.
Conclusions:
This study provides timely insights into GPs’ perspectives on the role, impact, and limitations of GenAI in primary care. A majority reported limited experience and training with these tools; however, many GPs perceived potential benefits of GenAI and ambient AI for documentation. Notably, two years after the widespread introduction of GenAI, GPs’ persistent lack of understanding and training remains a critical concern. More extensive qualitative work would provide a more in-depth understanding of GPs’ views.
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