以用户为中心设计的现状和前景,利用可解释的人工智能在中枢神经系统肿瘤患者的临床决策支持系统中。

Frontiers in radiology Pub Date : 2025-01-13 eCollection Date: 2024-01-01 DOI:10.3389/fradi.2024.1433457
Eric W Prince, David M Mirsky, Todd C Hankinson, Carsten Görg
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引用次数: 0

摘要

在神经肿瘤学中,磁共振成像对于获得详细的脑图像来识别肿瘤、计划治疗、指导手术干预和监测肿瘤反应至关重要。最近人工智能在神经影像学方面的进展在神经肿瘤学方面有很好的应用,包括指导临床决策和改善患者管理。然而,人工智能如何实现预测的不明确阻碍了它的临床应用。可解释人工智能(XAI)方法旨在提高可信度和信息性,但它们的成功取决于考虑最终用户(临床医生)的具体背景和偏好。以用户为中心的设计(UCD)在迭代设计过程中优先考虑用户需求,使用户始终参与其中,为设计适合临床神经肿瘤学的XAI系统提供了机会。这篇综述的重点是神经肿瘤学患者管理的MR成像解释、临床决策支持的可解释人工智能和以用户为中心的设计的交叉。我们提供了一个资源,组织必要的概念,包括设计和评估,临床翻译,用户体验和效率提高,以及人工智能,以改善神经肿瘤患者管理的临床结果。我们讨论了多学科技能和以用户为中心的设计在创建成功的神经肿瘤学人工智能系统中的重要性。我们还讨论了可解释的人工智能工具如何嵌入以人为中心的决策过程中,与全自动解决方案不同,可以潜在地提高临床医生的表现。遵循UCD原则来建立信任,最大限度地减少错误和偏见,并创建适应性强的软件,有望满足医疗保健专业人员的需求和期望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Current state and promise of user-centered design to harness explainable AI in clinical decision-support systems for patients with CNS tumors.

In neuro-oncology, MR imaging is crucial for obtaining detailed brain images to identify neoplasms, plan treatment, guide surgical intervention, and monitor the tumor's response. Recent AI advances in neuroimaging have promising applications in neuro-oncology, including guiding clinical decisions and improving patient management. However, the lack of clarity on how AI arrives at predictions has hindered its clinical translation. Explainable AI (XAI) methods aim to improve trustworthiness and informativeness, but their success depends on considering end-users' (clinicians') specific context and preferences. User-Centered Design (UCD) prioritizes user needs in an iterative design process, involving users throughout, providing an opportunity to design XAI systems tailored to clinical neuro-oncology. This review focuses on the intersection of MR imaging interpretation for neuro-oncology patient management, explainable AI for clinical decision support, and user-centered design. We provide a resource that organizes the necessary concepts, including design and evaluation, clinical translation, user experience and efficiency enhancement, and AI for improved clinical outcomes in neuro-oncology patient management. We discuss the importance of multi-disciplinary skills and user-centered design in creating successful neuro-oncology AI systems. We also discuss how explainable AI tools, embedded in a human-centered decision-making process and different from fully automated solutions, can potentially enhance clinician performance. Following UCD principles to build trust, minimize errors and bias, and create adaptable software has the promise of meeting the needs and expectations of healthcare professionals.

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