基于人工智能的系统如何引发反思:以人工智能增强诊断工作为例

IF 7 2区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Mis Quarterly Pub Date : 2023-12-01 DOI:10.25300/misq/2022/16773
Benjamin M. Abdel-Karim, Nicolas Pfeuffer, K. Valerie Carl, Oliver Hinz
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引用次数: 0

摘要

本文解决了人类人工智能(AI)增强中迄今为止被忽视的一个维度:机器诱导反射。通过建立一个基于理论的机器诱导反射模型,我们为信息系统(IS)中关于人工智能和反射理论研究的持续讨论做出了贡献。在我们的多阶段研究中,医生使用基于机器学习(ML)的临床决策支持系统(CDSS)来观察这种相互作用是否以及如何在x射线诊断任务的背景下刺激反思实践。通过分析口头协议、绩效指标和调查数据,我们建立了一个综合的理论基础来解释基于机器学习的系统如何帮助激发反思实践。个人参与更关键或更浅的模式取决于他们是否认为与这些CDSS系统有冲突或一致,这反过来又导致不同层次的反思深度。通过揭示机器引发的反思过程,我们为信息系统研究提供了一个不同的视角,即基于人工智能的系统如何帮助个人变得更善于反思,从而更有效地成为专业人士。这一观点与传统的、以效率为中心的基于ml的决策支持系统的观点形成鲜明对比,也丰富了人类-人工智能增强的理论。
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How AI-Based Systems Can Induce Reflections: The Case of AI-Augmented Diagnostic Work
This paper addresses a thus-far neglected dimension in human-artificial intelligence (AI) augmentation: machine-induced reflections. By establishing a grounded theoretical-informed model of machine-induced reflection, we contribute to the ongoing discussion in information systems (IS) regarding AI and research on reflection theories. In our multistage study, physicians used a machine learning-based (ML) clinical decision support system (CDSS) to see if and how this interaction can stimulate reflective practice in the context of an X-ray diagnosis task. By analyzing verbal protocols, performance metrics, and survey data, we developed an integrative theoretical foundation to explain how ML-based systems can help stimulate reflective practice. Individuals engage in more critical or shallower modes depending on whether they perceive a conflict or agreement with these CDSS systems, which in turn leads to different levels of reflection depth. By uncovering the process of machine-induced reflections, we offer IS research a different perspective on how such AI-based systems can help individuals become more reflective, and consequently more effective, professionals. This perspective stands in stark contrast to the traditional, efficiency-focused view of ML-based decision support systems and also enriches theories on human-AI augmentation.
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来源期刊
Mis Quarterly
Mis Quarterly 工程技术-计算机:信息系统
CiteScore
13.30
自引率
4.10%
发文量
36
审稿时长
6-12 weeks
期刊介绍: Journal Name: MIS Quarterly Editorial Objective: The editorial objective of MIS Quarterly is focused on: Enhancing and communicating knowledge related to: Development of IT-based services Management of IT resources Use, impact, and economics of IT with managerial, organizational, and societal implications Addressing professional issues affecting the Information Systems (IS) field as a whole Key Focus Areas: Development of IT-based services Management of IT resources Use, impact, and economics of IT with managerial, organizational, and societal implications Professional issues affecting the IS field as a whole
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