Co-design of human-centered, explainable AI for clinical decision support

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2023-03-14 DOI:https://dl.acm.org/doi/10.1145/3587271
Cecilia Panigutti, Andrea Beretta, Daniele Fadda, Fosca Giannotti, Dino Pedreschi, Alan Perotti, Salvatore Rinzivillo
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Abstract

eXplainable AI (XAI) involves two intertwined but separate challenges: the development of techniques to extract explanations from black-box AI models, and the way such explanations are presented to users, i.e., the explanation user interface. Despite its importance, the second aspect has received limited attention so far in the literature. Effective AI explanation interfaces are fundamental for allowing human decision-makers to take advantage and oversee high-risk AI systems effectively. Following an iterative design approach, we present the first cycle of prototyping-testing-redesigning of an explainable AI technique, and its explanation user interface for clinical Decision Support Systems (DSS). We first present an XAI technique that meets the technical requirements of the healthcare domain: sequential, ontology-linked patient data, and multi-label classification tasks. We demonstrate its applicability to explain a clinical DSS, and we design a first prototype of an explanation user interface. Next, we test such a prototype with healthcare providers and collect their feedback, with a two-fold outcome: first, we obtain evidence that explanations increase users’ trust in the XAI system, and second, we obtain useful insights on the perceived deficiencies of their interaction with the system, so that we can re-design a better, more human-centered explanation interface.

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为临床决策支持共同设计以人为本、可解释的人工智能
可解释的人工智能(XAI)涉及两个相互交织但又相互独立的挑战:开发从黑盒人工智能模型中提取解释的技术,以及将这些解释呈现给用户的方式,即解释用户界面。尽管第二方面很重要,但迄今为止在文献中得到的关注有限。有效的人工智能解释界面是允许人类决策者有效利用和监督高风险人工智能系统的基础。遵循迭代设计方法,我们提出了可解释的人工智能技术的原型-测试-重新设计的第一个周期,以及临床决策支持系统(DSS)的解释用户界面。我们首先提出了一种满足医疗保健领域技术需求的XAI技术:顺序的、本体链接的患者数据和多标签分类任务。我们论证了它在临床决策支持系统解释中的适用性,并设计了一个解释用户界面的第一个原型。接下来,我们与医疗保健提供者一起测试这样的原型并收集他们的反馈,结果有两个方面:首先,我们获得了解释增加用户对XAI系统信任的证据,其次,我们获得了关于他们与系统交互的感知缺陷的有用见解,以便我们可以重新设计更好、更以人为本的解释界面。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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