FIM Research Center for Information Management, University of Hohenheim, Branch Business & Information Systems Engineering of the Fraunhofer FIT, Stuttgart, Germany.
FIM Research Center for Information Management, Branch Business & Information Systems Engineering of the Fraunhofer FIT, University of Applied Sciences Augsburg, Augsburg, Germany.
J Med Internet Res. 2024 Nov 27;26:e53986. doi: 10.2196/53986.
To cope with the enormous burdens placed on health care systems around the world, from the strains and stresses caused by longer life expectancy to the large-scale emergency relief actions required by pandemics like COVID-19, many health care companies have been using artificial intelligence (AI) to adapt their services. Nevertheless, conceptual insights into how AI has been transforming the health care sector are still few and far between. This study aims to provide an overarching structure with which to classify the various real-world phenomena. A clear and comprehensive taxonomy will provide consensus on AI-based health care service offerings and sharpen the view of their adoption in the health care sector.
The goal of this study is to identify the design characteristics of AI-based health care services.
We propose a multilayered taxonomy created in accordance with an established method of taxonomy development. In doing so, we applied 268 AI-based health care services, conducted a structured literature review, and then evaluated the resulting taxonomy. Finally, we performed a cluster analysis to identify the archetypes of AI-based health care services.
We identified 4 critical perspectives: agents, data, AI, and health impact. Furthermore, a cluster analysis yielded 13 archetypes that demonstrate our taxonomy's applicability.
This contribution to conceptual knowledge of AI-based health care services enables researchers as well as practitioners to analyze such services and improve their theory-led design.
为应对全球医疗体系面临的巨大压力,包括预期寿命延长带来的压力和负担,以及 COVID-19 等大流行所需的大规模紧急救援行动,许多医疗保健公司一直在利用人工智能 (AI) 来调整其服务。然而,关于人工智能如何改变医疗保健行业的概念性见解仍然很少。本研究旨在提供一个总体结构,以便对各种现实世界现象进行分类。一个清晰全面的分类法将为基于人工智能的医疗保健服务提供共识,并锐化其在医疗保健领域的采用。
本研究旨在确定基于人工智能的医疗服务的设计特点。
我们提出了一个多层分类法,该分类法是根据已建立的分类法开发方法创建的。为此,我们应用了 268 种基于人工智能的医疗保健服务,进行了结构化文献综述,然后评估了由此产生的分类法。最后,我们进行了聚类分析以确定基于人工智能的医疗保健服务的原型。
我们确定了 4 个关键视角:代理、数据、人工智能和健康影响。此外,聚类分析产生了 13 个原型,展示了我们分类法的适用性。
这一贡献为基于人工智能的医疗保健服务的概念知识提供了依据,使研究人员和从业者能够分析这些服务并改进其基于理论的设计。