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可解释人工智能技术及其在乳腺钼靶乳腺癌筛查中的评估综述。

A review of explainable AI techniques and their evaluation in mammography for breast cancer screening.

作者信息

Shifa Noora, Saleh Moutaz, Akbari Younes, Al Maadeed Sumaya

机构信息

Department of Computer Science and Engineering, Qatar University, Doha, Qatar.

出版信息

Clin Imaging. 2025 May 12;123:110492. doi: 10.1016/j.clinimag.2025.110492.

DOI:10.1016/j.clinimag.2025.110492
PMID:40378639
Abstract

Explainable AI (XAI) methods are gaining prominence in medical imaging, addressing the critical need for transparency and trust in AI-driven diagnostic tools. Mammography, as the cornerstone of early breast cancer detection, holds immense potential for improving outcomes when integrated with AI solutions. However, widespread adoption of AI in clinical settings depends on explainability, which enhances clinicians' confidence in these tools. By exploring various XAI techniques and evaluating their strengths and weaknesses, researchers can significantly advance precision medicine. This review synthesizes existing research on XAI in medical imaging, focusing on mammography, a domain often overlooked in XAI studies. It provides a comparative analysis of XAI techniques employed in mammography, assessing their diagnostic efficacy and identifying research gaps, such as the lack of specialized evaluation frameworks. Additionally, the review examines evaluation methods for XAI in medical imaging and proposes modifications tailored to mammography diagnostics. Insights from XAI advancements in other fields are also explored for their potential to enhance interpretability and clinical relevance in breast cancer detection. The study concludes by highlighting critical research gaps and proposing directions for developing reliable, effective AI models that integrate XAI to transform breast cancer diagnostics.

摘要

可解释人工智能(XAI)方法在医学成像领域正日益受到关注,以满足对人工智能驱动的诊断工具透明度和信任的迫切需求。乳腺钼靶检查作为早期乳腺癌检测的基石,与人工智能解决方案相结合时,在改善治疗效果方面具有巨大潜力。然而,人工智能在临床环境中的广泛应用取决于其可解释性,这能增强临床医生对这些工具的信心。通过探索各种XAI技术并评估其优缺点,研究人员可以显著推动精准医学的发展。本综述综合了医学成像中关于XAI的现有研究,重点关注乳腺钼靶检查,这是一个在XAI研究中经常被忽视的领域。它对乳腺钼靶检查中使用的XAI技术进行了比较分析,评估其诊断效果并找出研究差距,如缺乏专门的评估框架。此外,该综述还研究了医学成像中XAI的评估方法,并提出了针对乳腺钼靶诊断的改进方法。还探讨了其他领域XAI进展的见解,以了解其在增强乳腺癌检测的可解释性和临床相关性方面的潜力。该研究最后强调了关键的研究差距,并提出了开发可靠、有效的人工智能模型的方向,这些模型整合了XAI以改变乳腺癌诊断。

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