Department of Obstetrics and Gynecology, Amsterdam UMC Location VUmc, Amsterdam, The Netherlands
Department of Computer Science, Vrije Universiteit Amsterdam, Amsterdam, The Netherlands.
BMJ Open. 2023 Oct 24;13(10):e076017. doi: 10.1136/bmjopen-2023-076017.
This work explores the perceptions of obstetrical clinicians about artificial intelligence (AI) in order to bridge the gap in uptake of AI between research and medical practice. Identifying potential areas where AI can contribute to clinical practice, enables AI research to align with the needs of clinicians and ultimately patients.
Qualitative interview study.
A national study conducted in the Netherlands between November 2022 and February 2023.
Dutch clinicians working in obstetrics with varying relevant work experience, gender and age.
Thematic analysis of qualitative interview transcripts.
Thirteen gynaecologists were interviewed about hypothetical scenarios of an implemented AI model. Thematic analysis identified two major themes: perceived usefulness and trust. Usefulness involved AI extending human brain capacity in complex pattern recognition and information processing, reducing contextual influence and saving time. Trust required validation, explainability and successful personal experience. This result shows two paradoxes: first, AI is expected to provide added value by surpassing human capabilities, yet also a need to understand the parameters and their influence on predictions for trust and adoption was expressed. Second, participants recognised the value of incorporating numerous parameters into a model, but they also believed that certain contextual factors should only be considered by humans, as it would be undesirable for AI models to use that information.
Obstetricians' opinions on the potential value of AI highlight the need for clinician-AI researcher collaboration. Trust can be built through conventional means like randomised controlled trials and guidelines. Holistic impact metrics, such as changes in workflow, not just clinical outcomes, should guide AI model development. Further research is needed for evaluating evolving AI systems beyond traditional validation methods.
本研究旨在探讨产科临床医生对人工智能(AI)的认知,以弥合 AI 在研究与医疗实践之间应用差距。确定 AI 可在哪些方面为临床实践做出贡献,使 AI 研究与临床医生的需求相契合,最终使患者受益。
定性访谈研究。
2022 年 11 月至 2023 年 2 月在荷兰进行的全国性研究。
具有不同相关工作经验、性别和年龄的荷兰产科临床医生。
对定性访谈记录进行主题分析。
对 13 名妇产科医生进行了关于已实施 AI 模型的假设情景的访谈。主题分析确定了两个主要主题:感知有用性和信任。有用性涉及 AI 在复杂模式识别和信息处理方面扩展人类大脑能力,减少背景影响和节省时间。信任需要验证、可解释性和成功的个人经验。这一结果表明存在两个悖论:首先,AI 有望通过超越人类能力提供附加值,但也需要理解参数及其对信任和采用的影响,才能获得信任和采用;其次,参与者认识到将大量参数纳入模型的价值,但他们也认为某些背景因素只能由人类考虑,因为 AI 模型使用该信息是不可取的。
产科医生对 AI 潜在价值的看法强调了临床医生与 AI 研究人员合作的必要性。可以通过传统方法(如随机对照试验和指南)建立信任。整体影响指标,如工作流程的变化,而不仅仅是临床结果,应指导 AI 模型的开发。需要进一步研究评估不断发展的 AI 系统,超越传统的验证方法。