Centre for Healthcare Innovation Research, City, University of London, London, UK.
School of Health Sciences, City, University of London, Northampton Square, London, EC1V 0HB, UK.
BMC Health Serv Res. 2021 Aug 14;21(1):813. doi: 10.1186/s12913-021-06861-y.
Artificial Intelligence (AI) innovations in radiology offer a potential solution to the increasing demand for imaging tests and the ongoing workforce crisis. Crucial to their adoption is the involvement of different professional groups, namely radiologists and radiographers, who work interdependently but whose perceptions and responses towards AI may differ. We aim to explore the knowledge, awareness and attitudes towards AI amongst professional groups in radiology, and to analyse the implications for the future adoption of these technologies into practice.
We conducted 18 semi-structured interviews with 12 radiologists and 6 radiographers from four breast units in National Health Services (NHS) organisations and one focus group with 8 radiographers from a fifth NHS breast unit, between 2018 and 2020.
We found that radiographers and radiologists vary with respect to their awareness and knowledge around AI. Through their professional networks, conference attendance, and contacts with industry developers, radiologists receive more information and acquire more knowledge of the potential applications of AI. Radiographers instead rely more on localized personal networks for information. Our results also show that although both groups believe AI innovations offer a potential solution to workforce shortages, they differ significantly regarding the impact they believe it will have on their professional roles. Radiologists believe AI has the potential to take on more repetitive tasks and allow them to focus on more interesting and challenging work. They are less concerned that AI technology might constrain their professional role and autonomy. Radiographers showed greater concern about the potential impact that AI technology could have on their roles and skills development. They were less confident of their ability to respond positively to the potential risks and opportunities posed by AI technology.
In summary, our findings suggest that professional responses to AI are linked to existing work roles, but are also mediated by differences in knowledge and attitudes attributable to inter-professional differences in status and identity. These findings question broad-brush assertions about the future deskilling impact of AI which neglect the need for AI innovations in healthcare to be integrated into existing work processes subject to high levels of professional autonomy.
人工智能(AI)在放射学领域的创新为满足日益增长的影像学检查需求和持续的劳动力危机提供了潜在的解决方案。采用 AI 的关键是涉及不同的专业群体,即放射科医生和放射技师,他们相互依存,但对 AI 的看法和反应可能不同。我们旨在探讨放射科专业人员对 AI 的知识、意识和态度,并分析这些技术未来在实践中采用的影响。
我们在 2018 年至 2020 年间,在 NHS 组织的四个乳腺单位中对 12 名放射科医生和 6 名放射技师进行了 18 次半结构化访谈,并在一个 NHS 乳腺单位进行了 8 名放射技师的焦点小组讨论。
我们发现,放射技师和放射科医生在 AI 的意识和知识方面存在差异。通过他们的专业网络、会议出席情况以及与行业开发者的联系,放射科医生获得了更多有关 AI 潜在应用的信息和知识。而放射技师则更多地依赖于本地化的个人网络获取信息。我们的研究结果还表明,尽管两个群体都认为 AI 创新为劳动力短缺提供了潜在的解决方案,但他们对 AI 对其专业角色的影响的看法存在显著差异。放射科医生认为 AI 有潜力承担更多重复性任务,并使他们能够专注于更有趣和具有挑战性的工作。他们不太担心 AI 技术可能会限制他们的专业角色和自主权。放射技师则对 AI 技术可能对其角色和技能发展产生的潜在影响表示更多关注。他们对自己应对 AI 技术带来的潜在风险和机遇的能力缺乏信心。
总之,我们的研究结果表明,对 AI 的专业反应与现有工作角色有关,但也受到知识和态度的差异所中介,这些差异归因于专业地位和身份的不同导致的专业间差异。这些发现质疑了关于 AI 未来去技能化影响的泛泛断言,忽视了 AI 创新在医疗保健领域的应用需要融入高度自主的现有工作流程。