Evolution of radiology staff perspectives during artificial intelligence (AI) implementation for expedited lung cancer triage.

IF 2.1 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Clinical radiology Pub Date : 2024-09-21 DOI:10.1016/j.crad.2024.09.010
D Togher, G Dean, J Moon, R Mayola, A Medina, J Repec, M Meheux, S Mather, M Storey, S Rickaby, M Z Abubacker, S C Shelmerdine
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Abstract

Aims: To investigate radiology staff perceptions of an AI tool for chest radiography triage, flagging findings suspicious for lung cancer to expedite same-day CT chest examination studies.

Materials and methods: Surveys were distributed to all radiology staff at three time points: at pre-implementation, one month and also seven months post-implementation of artificial intelligence (AI). Survey questions captured feedback on AI use and patient impact.

Results: Survey response rates at the three time periods were 23.1% (45/195), 14.9% (29/195) and 27.2% (53/195), respectively. Most respondents initially anticipated AI to be time-saving for the department and patient (50.8%), but this shifted to faster follow-up care for patients after AI implementation (51.7%). From the free text comments, early apprehension about job role changes evolved into frustration regarding technical integration challenges after implementation. This later transitioned to a more balanced view of recognised patient benefits versus minor ongoing logistical issues by the late post-implementation stage. There was majority disagreement across all survey periods that AI could be considered to be used autonomously (53.3-72.5%), yet acceptance grew for personal AI usage if staff were to be patients themselves (from 31.1% pre-implementation to 47.2% post-implementation).

Conclusion: Successful AI integration in radiology demands active staff engagement, addressing concerns to transform initial mixed excitement and resistance into constructive adaptation. Continual feedback is vital for refining AI deployment strategies, ensuring its beneficial and sustainable incorporation into clinical care pathways.

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人工智能(AI)在肺癌快速分诊过程中放射科工作人员观点的演变。
目的:调查放射科员工对用于胸部放射成像分诊的人工智能工具的看法,该工具可标记肺癌可疑结果,以加快当天的胸部 CT 检查研究:在人工智能(AI)实施前、实施后一个月和实施后七个月的三个时间点,向所有放射科员工发放调查问卷。调查问题包括对人工智能使用情况和对患者影响的反馈:三个时间段的调查回复率分别为 23.1%(45/195)、14.9%(29/195)和 27.2%(53/195)。大多数受访者最初预期人工智能可为科室和患者节省时间(50.8%),但这一预期在人工智能实施后转变为为患者提供更快的后续护理(51.7%)。从自由文本评论来看,早期对工作角色变化的担忧逐渐演变为对实施后技术集成挑战的沮丧。后来,到了实施后期,这种情况转变为一种更加平衡的观点,即患者获得的公认益处与持续存在的微小后勤问题相比较。在所有调查期间,大多数人都不同意人工智能可被视为自主使用(53.3%-72.5%),但如果员工自己是患者,则对个人使用人工智能的接受度有所提高(从实施前的31.1%提高到实施后的47.2%):将人工智能成功融入放射学需要员工的积极参与,解决员工关心的问题,将最初的兴奋和抵触转化为建设性的适应。持续反馈对完善人工智能部署策略至关重要,可确保将其有益且可持续地纳入临床护理路径。
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来源期刊
Clinical radiology
Clinical radiology 医学-核医学
CiteScore
4.70
自引率
3.80%
发文量
528
审稿时长
76 days
期刊介绍: Clinical Radiology is published by Elsevier on behalf of The Royal College of Radiologists. Clinical Radiology is an International Journal bringing you original research, editorials and review articles on all aspects of diagnostic imaging, including: • Computed tomography • Magnetic resonance imaging • Ultrasonography • Digital radiology • Interventional radiology • Radiography • Nuclear medicine Papers on radiological protection, quality assurance, audit in radiology and matters relating to radiological training and education are also included. In addition, each issue contains correspondence, book reviews and notices of forthcoming events.
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