User and Developer Views on Using AI Technologies to Facilitate the Early Detection of Skin Cancers in Primary Care Settings: Qualitative Semistructured Interview Study.

IF 3.3 Q2 ONCOLOGY
JMIR Cancer Pub Date : 2025-01-28 DOI:10.2196/60653
Owain Tudor Jones, Natalia Calanzani, Suzanne E Scott, Rubeta N Matin, Jon Emery, Fiona M Walter
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引用次数: 0

Abstract

Background: Skin cancers, including melanoma and keratinocyte cancers, are among the most common cancers worldwide, and their incidence is rising in most populations. Earlier detection of skin cancer leads to better outcomes for patients. Artificial intelligence (AI) technologies have been applied to skin cancer diagnosis, but many technologies lack clinical evidence and/or the appropriate regulatory approvals. There are few qualitative studies examining the views of relevant stakeholders or evidence about the implementation and positioning of AI technologies in the skin cancer diagnostic pathway.

Objective: This study aimed to understand the views of several stakeholder groups on the use of AI technologies to facilitate the early diagnosis of skin cancer, including patients, members of the public, general practitioners, primary care nurse practitioners, dermatologists, and AI researchers.

Methods: This was a qualitative, semistructured interview study with 29 stakeholders. Participants were purposively sampled based on age, sex, and geographical location. We conducted the interviews via Zoom between September 2022 and May 2023. Transcribed recordings were analyzed using thematic framework analysis. The framework for the Nonadoption, Abandonment, and Challenges to Scale-Up, Spread, and Sustainability was used to guide the analysis to help understand the complexity of implementing diagnostic technologies in clinical settings.

Results: Major themes were "the position of AI in the skin cancer diagnostic pathway" and "the aim of the AI technology"; cross-cutting themes included trust, usability and acceptability, generalizability, evaluation and regulation, implementation, and long-term use. There was no clear consensus on where AI should be placed along the skin cancer diagnostic pathway, but most participants saw the technology in the hands of either patients or primary care practitioners. Participants were concerned about the quality of the data used to develop and test AI technologies and the impact this could have on their accuracy in clinical use with patients from a range of demographics and the risk of missing skin cancers. Ease of use and not increasing the workload of already strained health care services were important considerations for participants. Health care professionals and AI researchers reported a lack of established methods of evaluating and regulating AI technologies.

Conclusions: This study is one of the first to examine the views of a wide range of stakeholders on the use of AI technologies to facilitate early diagnosis of skin cancer. The optimal approach and position in the diagnostic pathway for these technologies have not yet been determined. AI technologies need to be developed and implemented carefully and thoughtfully, with attention paid to the quality and representativeness of the data used for development, to achieve their potential.

用户和开发者对使用人工智能技术促进初级保健环境中皮肤癌早期检测的看法:定性半结构化访谈研究。
背景:皮肤癌,包括黑色素瘤和角化细胞癌,是世界上最常见的癌症之一,其发病率在大多数人群中都在上升。早期发现皮肤癌可以为患者带来更好的结果。人工智能(AI)技术已被应用于皮肤癌诊断,但许多技术缺乏临床证据和/或适当的监管批准。很少有定性研究检查相关利益相关者的观点或关于人工智能技术在皮肤癌诊断途径中的实施和定位的证据。目的:本研究旨在了解几个利益相关者群体对使用人工智能技术促进皮肤癌早期诊断的看法,包括患者、公众、全科医生、初级保健护士、皮肤科医生和人工智能研究人员。方法:对29名利益相关者进行定性、半结构化访谈研究。参与者根据年龄、性别和地理位置进行了有目的的抽样。我们在2022年9月至2023年5月期间通过Zoom进行了访谈。使用主题框架分析对转录记录进行分析。“不采用、放弃和挑战扩大、传播和可持续性”框架被用来指导分析,以帮助理解在临床环境中实施诊断技术的复杂性。结果:主要主题为“人工智能在皮肤癌诊断路径中的地位”和“人工智能技术的目的”;横切主题包括信任、可用性和可接受性、泛化性、评估和规范、实现以及长期使用。关于人工智能在皮肤癌诊断过程中应该放在哪里,目前还没有明确的共识,但大多数参与者认为,这项技术要么掌握在患者手中,要么掌握在初级保健医生手中。与会者担心用于开发和测试人工智能技术的数据的质量,以及这可能对人工智能技术在临床应用于各种人口统计数据的准确性产生的影响,以及遗漏皮肤癌的风险。易用性和不增加本已紧张的保健服务的工作量是与会者的重要考虑因素。卫生保健专业人员和人工智能研究人员报告说,缺乏评估和管理人工智能技术的既定方法。结论:这项研究是第一个研究广泛利益相关者对使用人工智能技术促进皮肤癌早期诊断的看法的研究之一。这些技术在诊断途径中的最佳途径和位置尚未确定。人工智能技术的开发和实施需要仔细和深思熟虑,注意用于开发的数据的质量和代表性,以发挥其潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JMIR Cancer
JMIR Cancer ONCOLOGY-
CiteScore
4.10
自引率
0.00%
发文量
64
审稿时长
12 weeks
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