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人工智能在病理学中的应用和影响的采用和效果如何:对现实主义评价理论的回顾。

What Works Where and How for Uptake and Impact of Artificial Intelligence in Pathology: Review of Theories for a Realist Evaluation.

机构信息

Faculty of Medicine & Health, University of Leeds, Leeds, United Kingdom.

Leeds Teaching Hospitals NHS Trust, Leeds, United Kingdom.

出版信息

J Med Internet Res. 2023 Apr 24;25:e38039. doi: 10.2196/38039.

Abstract

BACKGROUND

There is increasing interest in the use of artificial intelligence (AI) in pathology to increase accuracy and efficiency. To date, studies of clinicians' perceptions of AI have found only moderate acceptability, suggesting the need for further research regarding how to integrate it into clinical practice.

OBJECTIVE

The aim of the study was to determine contextual factors that may support or constrain the uptake of AI in pathology.

METHODS

To go beyond a simple listing of barriers and facilitators, we drew on the approach of realist evaluation and undertook a review of the literature to elicit stakeholders' theories of how, for whom, and in what circumstances AI can provide benefit in pathology. Searches were designed by an information specialist and peer-reviewed by a second information specialist. Searches were run on the arXiv.org repository, MEDLINE, and the Health Management Information Consortium, with additional searches undertaken on a range of websites to identify gray literature. In line with a realist approach, we also made use of relevant theory. Included documents were indexed in NVivo 12, using codes to capture different contexts, mechanisms, and outcomes that could affect the introduction of AI in pathology. Coded data were used to produce narrative summaries of each of the identified contexts, mechanisms, and outcomes, which were then translated into theories in the form of context-mechanism-outcome configurations.

RESULTS

A total of 101 relevant documents were identified. Our analysis indicates that the benefits that can be achieved will vary according to the size and nature of the pathology department's workload and the extent to which pathologists work collaboratively; the major perceived benefit for specialist centers is in reducing workload. For uptake of AI, pathologists' trust is essential. Existing theories suggest that if pathologists are able to "make sense" of AI, engage in the adoption process, receive support in adapting their work processes, and can identify potential benefits to its introduction, it is more likely to be accepted.

CONCLUSIONS

For uptake of AI in pathology, for all but the most simple quantitative tasks, measures will be required that either increase confidence in the system or provide users with an understanding of the performance of the system. For specialist centers, efforts should focus on reducing workload rather than increasing accuracy. Designers also need to give careful thought to usability and how AI is integrated into pathologists' workflow.

摘要

背景

人工智能(AI)在病理学中的应用日益受到关注,以提高准确性和效率。迄今为止,对临床医生对 AI 的看法的研究发现,其接受程度仅为中等,这表明需要进一步研究如何将其整合到临床实践中。

目的

本研究旨在确定可能支持或限制 AI 在病理学中应用的情境因素。

方法

为了超越简单地列出障碍和促进因素,我们借鉴了现实主义评估方法,并对文献进行了综述,以引出利益相关者关于 AI 在病理学中如何、为谁以及在何种情况下可以提供益处的理论。信息专家设计了检索,并由第二位信息专家进行了同行评审。检索在 arXiv.org 存储库、MEDLINE 和健康管理信息联盟上进行,并在一系列网站上进行了额外的检索,以确定灰色文献。根据现实主义方法,我们还利用了相关理论。纳入的文件在 NVivo 12 中进行了索引,使用代码捕获可能影响 AI 在病理学中引入的不同情境、机制和结果。对编码数据进行了分析,以生成每个确定情境、机制和结果的叙述性摘要,然后将其转换为上下文-机制-结果配置的理论形式。

结果

共确定了 101 篇相关文献。我们的分析表明,所能实现的益处将根据病理学部门工作量的大小和性质以及病理学家合作程度的不同而有所不同;对于专科中心,主要的益处是减少工作量。对于 AI 的采用,病理学家的信任至关重要。现有理论表明,如果病理学家能够“理解” AI、参与采用过程、在调整工作流程方面得到支持,并能够识别其引入的潜在益处,那么 AI 更有可能被接受。

结论

对于 AI 在病理学中的应用,除了最简单的定量任务外,还需要采取措施来提高系统的可信度,或者让用户了解系统的性能。对于专科中心,应努力减少工作量,而不是提高准确性。设计者还需要仔细考虑可用性以及如何将 AI 集成到病理学家的工作流程中。

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