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德国40家医院信息技术决策者对影响人工智能技术采用与实施因素的看法:描述性分析

Perspective of Information Technology Decision Makers on Factors Influencing Adoption and Implementation of Artificial Intelligence Technologies in 40 German Hospitals: Descriptive Analysis.

作者信息

Weinert Lina, Müller Julia, Svensson Laura, Heinze Oliver

机构信息

Institute of Medical Informatics, Heidelberg University Hospital, Heidelberg, Germany.

出版信息

JMIR Med Inform. 2022 Jun 15;10(6):e34678. doi: 10.2196/34678.

Abstract

BACKGROUND

New artificial intelligence (AI) tools are being developed at a high speed. However, strategies and practical experiences surrounding the adoption and implementation of AI in health care are lacking. This is likely because of the high implementation complexity of AI, legacy IT infrastructure, and unclear business cases, thus complicating AI adoption. Research has recently started to identify the factors influencing AI readiness of organizations.

OBJECTIVE

This study aimed to investigate the factors influencing AI readiness as well as possible barriers to AI adoption and implementation in German hospitals. We also assessed the status quo regarding the dissemination of AI tools in hospitals. We focused on IT decision makers, a seldom studied but highly relevant group.

METHODS

We created a web-based survey based on recent AI readiness and implementation literature. Participants were identified through a publicly accessible database and contacted via email or invitational leaflets sent by mail, in some cases accompanied by a telephonic prenotification. The survey responses were analyzed using descriptive statistics.

RESULTS

We contacted 609 possible participants, and our database recorded 40 completed surveys. Most participants agreed or rather agreed with the statement that AI would be relevant in the future, both in Germany (37/40, 93%) and in their own hospital (36/40, 90%). Participants were asked whether their hospitals used or planned to use AI technologies. Of the 40 participants, 26 (65%) answered "yes." Most AI technologies were used or planned for patient care, followed by biomedical research, administration, and logistics and central purchasing. The most important barriers to AI were lack of resources (staff, knowledge, and financial). Relevant possible opportunities for using AI were increase in efficiency owing to time-saving effects, competitive advantages, and increase in quality of care. Most AI tools in use or in planning have been developed with external partners.

CONCLUSIONS

Few tools have been implemented in routine care, and many hospitals do not use or plan to use AI in the future. This can likely be explained by missing or unclear business cases or the need for a modern IT infrastructure to integrate AI tools in a usable manner. These shortcomings complicate decision-making and resource attribution. As most AI technologies already in use were developed in cooperation with external partners, these relationships should be fostered. IT decision makers should assess their hospitals' readiness for AI individually with a focus on resources. Further research should continue to monitor the dissemination of AI tools and readiness factors to determine whether improvements can be made over time. This monitoring is especially important with regard to government-supported investments in AI technologies that could alleviate financial burdens. Qualitative studies with hospital IT decision makers should be conducted to further explore the reasons for slow AI.

摘要

背景

新型人工智能(AI)工具正在高速发展。然而,围绕在医疗保健领域采用和实施人工智能的策略及实践经验却很匮乏。这可能是由于人工智能的实施复杂性高、遗留的信息技术基础设施以及不明确的商业案例,从而使人工智能的采用变得复杂。最近研究已开始确定影响组织人工智能准备情况的因素。

目的

本研究旨在调查影响德国医院人工智能准备情况的因素以及人工智能采用和实施可能存在的障碍。我们还评估了医院中人工智能工具的传播现状。我们关注的是信息技术决策者,这是一个很少被研究但高度相关的群体。

方法

我们根据近期有关人工智能准备情况和实施的文献创建了一项基于网络的调查。通过一个公开可用的数据库确定参与者,并通过电子邮件或邮寄的邀请传单与他们联系,在某些情况下还会提前进行电话通知。使用描述性统计分析调查回复。

结果

我们联系了609名可能的参与者,我们的数据库记录了40份完成的调查。大多数参与者同意或比较同意人工智能在未来会有相关性这一说法,在德国是37/40(93%),在他们自己的医院是36/40(90%)。参与者被问及他们的医院是否使用或计划使用人工智能技术。在40名参与者中,26名(65%)回答“是”。大多数人工智能技术用于或计划用于患者护理,其次是生物医学研究、行政管理以及物流和集中采购。人工智能面临的最重要障碍是缺乏资源(人员、知识和资金)。使用人工智能的相关潜在机会是由于节省时间带来的效率提高、竞争优势以及护理质量提升。大多数正在使用或计划中的人工智能工具是与外部合作伙伴共同开发的。

结论

很少有工具在常规护理中得到实施,许多医院未来不使用或不计划使用人工智能。这很可能可以通过缺失或不明确的商业案例,或者需要现代信息技术基础设施以便以可用方式集成人工智能工具来解释。这些不足使决策和资源分配变得复杂。由于大多数已使用的人工智能技术是与外部合作伙伴合作开发的,应促进这些关系。信息技术决策者应单独评估其医院对人工智能的准备情况,重点关注资源。进一步的研究应继续监测人工智能工具的传播和准备情况因素,以确定随着时间推移是否可以有所改进。这种监测对于政府对人工智能技术的支持性投资尤其重要,这些投资可以减轻财政负担。应该对医院信息技术决策者进行定性研究,以进一步探讨人工智能发展缓慢的原因。

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