How Explainable Artificial Intelligence Can Increase or Decrease Clinicians' Trust in AI Applications in Health Care: Systematic Review.

JMIR AI Pub Date : 2024-10-30 DOI:10.2196/53207
Rikard Rosenbacke, Åsa Melhus, Martin McKee, David Stuckler
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Abstract

Background: Artificial intelligence (AI) has significant potential in clinical practice. However, its "black box" nature can lead clinicians to question its value. The challenge is to create sufficient trust for clinicians to feel comfortable using AI, but not so much that they defer to it even when it produces results that conflict with their clinical judgment in ways that lead to incorrect decisions. Explainable AI (XAI) aims to address this by providing explanations of how AI algorithms reach their conclusions. However, it remains unclear whether such explanations foster an appropriate degree of trust to ensure the optimal use of AI in clinical practice.

Objective: This study aims to systematically review and synthesize empirical evidence on the impact of XAI on clinicians' trust in AI-driven clinical decision-making.

Methods: A systematic review was conducted in accordance with PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) guidelines, searching PubMed and Web of Science databases. Studies were included if they empirically measured the impact of XAI on clinicians' trust using cognition- or affect-based measures. Out of 778 articles screened, 10 met the inclusion criteria. We assessed the risk of bias using standard tools appropriate to the methodology of each paper.

Results: The risk of bias in all papers was moderate or moderate to high. All included studies operationalized trust primarily through cognitive-based definitions, with 2 also incorporating affect-based measures. Out of these, 5 studies reported that XAI increased clinicians' trust compared with standard AI, particularly when the explanations were clear, concise, and relevant to clinical practice. In addition, 3 studies found no significant effect of XAI on trust, and the presence of explanations does not automatically improve trust. Notably, 2 studies highlighted that XAI could either enhance or diminish trust, depending on the complexity and coherence of the provided explanations. The majority of studies suggest that XAI has the potential to enhance clinicians' trust in recommendations generated by AI. However, complex or contradictory explanations can undermine this trust. More critically, trust in AI is not inherently beneficial, as AI recommendations are not infallible. These findings underscore the nuanced role of explanation quality and suggest that trust can be modulated through the careful design of XAI systems.

Conclusions: Excessive trust in incorrect advice generated by AI can adversely impact clinical accuracy, just as can happen when correct advice is distrusted. Future research should focus on refining both cognitive and affect-based measures of trust and on developing strategies to achieve an appropriate balance in terms of trust, preventing both blind trust and undue skepticism. Optimizing trust in AI systems is essential for their effective integration into clinical practice.

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可解释的人工智能如何增加或减少临床医生对医疗领域人工智能应用的信任?系统回顾。
背景:人工智能(AI)在临床实践中具有巨大潜力。然而,人工智能的 "黑箱 "特性会让临床医生质疑其价值。我们面临的挑战是如何建立足够的信任,让临床医生能够放心使用人工智能,但又不能过度依赖人工智能,即使人工智能得出的结果与他们的临床判断相冲突,从而导致错误的决策。可解释的人工智能(XAI)旨在通过解释人工智能算法如何得出结论来解决这一问题。然而,这种解释是否能促进适当程度的信任,以确保在临床实践中优化使用人工智能,目前仍不清楚:本研究旨在系统回顾和综合 XAI 对临床医生信任人工智能驱动的临床决策的影响的实证证据:方法:根据PRISMA(系统综述和Meta分析的首选报告项目)指南,搜索PubMed和Web of Science数据库,进行系统综述。如果研究使用基于认知或情感的测量方法实证测量了 XAI 对临床医生信任度的影响,则被纳入研究。在筛选出的 778 篇文章中,有 10 篇符合纳入标准。我们使用适合每篇论文方法的标准工具对偏倚风险进行了评估:所有论文的偏倚风险均为中度或中度至高度。所有纳入的研究都主要通过基于认知的定义对信任进行操作,其中两篇研究还采用了基于情感的测量方法。其中,5 项研究报告称,与标准人工智能相比,XAI 增加了临床医生的信任度,尤其是在解释清晰、简明且与临床实践相关的情况下。此外,3 项研究发现 XAI 对信任度没有显著影响,而且解释的存在并不会自动提高信任度。值得注意的是,有 2 项研究强调,根据所提供解释的复杂性和连贯性,XAI 可以增强或削弱信任。大多数研究表明,XAI 有可能提高临床医生对人工智能生成的建议的信任度。然而,复杂或自相矛盾的解释可能会破坏这种信任。更关键的是,对人工智能的信任并非天生有益,因为人工智能的建议并非无懈可击。这些发现强调了解释质量的微妙作用,并表明可以通过精心设计 XAI 系统来调节信任度:结论:过度信任人工智能生成的错误建议会对临床准确性产生不利影响,正如不信任正确建议一样。未来的研究应侧重于完善基于认知和情感的信任测量方法,并制定策略以实现信任方面的适当平衡,防止盲目信任和过度怀疑。优化对人工智能系统的信任对其有效融入临床实践至关重要。
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