尼日利亚肿瘤实践中的人工智能:肿瘤学家视角的定性探索。

IF 2 Q3 HEALTH POLICY & SERVICES
David B. Olawade , Iyanuoluwa O. Ojo , Emmanuel O. Oisakede , Victor Idowu Joel-Medewase , Ojima Z. Wada
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引用次数: 0

摘要

背景:人工智能(AI)为应对肿瘤学实践中的关键挑战提供了潜在的解决方案,特别是在尼日利亚等资源受限的环境中。然而,成功的实施需要了解医疗保健提供者的观点,这在尼日利亚的情况下仍然很大程度上未被探索。目的:探讨尼日利亚肿瘤学家对人工智能在肿瘤学实践中的应用的看法,确定人工智能整合的知识水平、感知效益、实施障碍和优先领域。方法:本定性研究采用描述性探索性设计。对来自尼日利亚9个主要保健机构的15名肿瘤学家进行了半结构化访谈。所有访谈均以英语进行。这些机构代表了主要位于尼日利亚不同地缘政治区域的城市化地区的三级转诊中心,包括西南(OAUTH、LUTH、UCH、LASUTH、LAUTH)、南南(ISTH、UBTH)、中北部(UATH)和中北部(BSUTH)。与会者代表不同的肿瘤学专业,经验从1-20年以上不等。数据分析采用Braun和Clarke的六阶段主题分析方法,由多名研究人员独立编码,以确保编码间的可靠性。结果:出现了9个关键主题:(1)肿瘤学中人工智能的现状知识和意识;(2)人工智能在肿瘤学实践中的感知效益;(3)人工智能实施的感知障碍;(4)肿瘤学研究中的人工智能;(5)数据管理和道德问题;(6)信任和采用准备;(7)人机交互与患者动力学;(8)未来发展方向及知识需求;(9)资源配置和基础设施建设。参与者对人工智能应用的理论知识有限,大多数人缺乏实际实施经验。与会者认识到人工智能在解决劳动力短缺和提高诊断准确性方面的潜力,但也发现了重大障碍,包括资金限制、基础设施限制和技术专长不足。结论:尽管面临巨大的实施挑战,尼日利亚肿瘤学家对人工智能改变癌症护理服务的潜力表示谨慎乐观。成功的人工智能集成需要解决基础设施缺陷,制定适当的监管框架,并建立技术能力。建议采取分阶段实施的方法,首先侧重于诊断支持应用,同时持续投资于数字基础设施和劳动力发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence in Nigerian oncology practice: A qualitative exploration of oncologists' perspectives

Background

Artificial intelligence (AI) offers potential solutions to address critical challenges in oncology practice, particularly in resource-constrained settings like Nigeria. However, successful implementation requires understanding healthcare providers' perspectives, which remain largely unexplored in the Nigerian context.

Aim

To explore Nigerian oncologists' perspectives on AI applications in oncology practice, identifying knowledge levels, perceived benefits, implementation barriers, and priority areas for AI integration.

Methods

This qualitative study employed a descriptive exploratory design. Semi-structured interviews were conducted with 15 oncologists from nine major Nigerian healthcare institutions. All interviews were conducted in English. These institutions represent tertiary referral centres predominantly located in urbanised areas across different Nigerian geopolitical zones, including Southwest (OAUTH, LUTH, UCH, LASUTH, LAUTH), South-South (ISTH, UBTH), and North-Central (BSUTH, UATH). Participants represented various oncology specialties with experience ranging from 1 to 20 + years. Data were analysed using Braun and Clarke's six-phase thematic analysis approach with independent coding by multiple researchers to ensure inter-coder reliability.

Results

Nine key themes emerged: (1) Current Knowledge and Awareness of AI in Oncology; (2) Perceived Benefits of AI in Oncology Practice; (3) Perceived Barriers to AI Implementation; (4) AI in Oncology Research; (5) Data Management and Ethical Concerns; (6) Trust and Adoption Readiness; (7) Human-AI Interaction and Patient Dynamics; (8) Future Directions and Knowledge Requirements; and (9) Resource Allocation and Infrastructure Development. Participants demonstrated limited theoretical knowledge of AI applications, with most lacking practical implementation experience. Participants recognised AI's potential to address workforce shortages and improve diagnostic accuracy but identified significant barriers including financial constraints, infrastructure limitations, and insufficient technical expertise.

Conclusion

Nigerian oncologists expressed cautious optimism about AI's potential to transform cancer care delivery despite substantial implementation challenges. Successful AI integration requires addressing infrastructure deficits, developing appropriate regulatory frameworks, and building technical capacity. A phased implementation approach focusing initially on diagnostic support applications is recommended, alongside sustained investment in digital infrastructure and workforce development.
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来源期刊
Journal of Cancer Policy
Journal of Cancer Policy Medicine-Health Policy
CiteScore
2.40
自引率
7.70%
发文量
47
审稿时长
65 days
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