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Unremarkable AI: Fitting Intelligent Decision Support into Critical, Clinical Decision-Making Processes

机译:不起眼的AI:拟合智能决策支持危急,临床决策过程

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Clinical decision support tools (DST) promise improved healthcare outcomes by offering data-driven insights. While effective in lab settings, almost all DSTs have failed in practice. Empirical research diagnosed poor contextual fit as the cause. This paper describes the design and field evaluation of a radically new form of DST. It automatically generates slides for clinicians' decision meetings with subtly embedded machine prognostics. This design took inspiration from the notion of Unremarkable Computing, that by augmenting the users' routines technology/AI can have significant importance for the users yet remain unobtrusive. Our field evaluation suggests clinicians are more likely to encounter and embrace such a DST. Drawing on their responses, we discuss the importance and intricacies of finding the right level of unremarkable-ness in DST design, and share lessons learned in prototyping critical AI systems as a situated experience.
机译:临床决策支持工具(DST)承诺通过提供数据驱动的洞察力来改善医疗保健结果。 虽然实验室设置有效,但几乎所有DST都在实践中失败了。 实证研究被诊断为贫困情境适应作为原因。 本文介绍了DST的根本新形式的设计和现场评价。 它自动为临床医生的决策会议生成幻灯片,并使用巧妙的机器预测。 这种设计从不起级计算的概念中获取了灵感,即通过增强用户的例程技术/ ai对用户来说可能具有重要意义,但仍然不引人注目。 我们的现场评估表明临床医生更有可能遇到并拥抱这样的DST。 借鉴他们的回答,我们讨论了在DST设计中找到了未解密的不起级的合适程度的重要性和复杂性,并在原型设计中分享了作为位于经验的原型设计。

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