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Insights on the Current State and Future Outlook of AI in Health Care: Expert Interview Study.

作者信息

Hummelsberger Pia, Koch Timo K, Rauh Sabrina, Dorn Julia, Lermer Eva, Raue Martina, Hudecek Matthias F C, Schicho Andreas, Colak Errol, Ghassemi Marzyeh, Gaube Susanne

机构信息

LMU Center for Leadership and People Management, Department of Psychology, LMU Munich, Munich, Germany.

Department of Psychology, LMU Munich, Munich, Germany.

出版信息

JMIR AI. 2023 Oct 31;2:e47353. doi: 10.2196/47353.


DOI:10.2196/47353
PMID:38875571
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11041415/
Abstract

BACKGROUND: Artificial intelligence (AI) is often promoted as a potential solution for many challenges health care systems face worldwide. However, its implementation in clinical practice lags behind its technological development. OBJECTIVE: This study aims to gain insights into the current state and prospects of AI technology from the stakeholders most directly involved in its adoption in the health care sector whose perspectives have received limited attention in research to date. METHODS: For this purpose, the perspectives of AI researchers and health care IT professionals in North America and Western Europe were collected and compared for profession-specific and regional differences. In this preregistered, mixed methods, cross-sectional study, 23 experts were interviewed using a semistructured guide. Data from the interviews were analyzed using deductive and inductive qualitative methods for the thematic analysis along with topic modeling to identify latent topics. RESULTS: Through our thematic analysis, four major categories emerged: (1) the current state of AI systems in health care, (2) the criteria and requirements for implementing AI systems in health care, (3) the challenges in implementing AI systems in health care, and (4) the prospects of the technology. Experts discussed the capabilities and limitations of current AI systems in health care in addition to their prevalence and regional differences. Several criteria and requirements deemed necessary for the successful implementation of AI systems were identified, including the technology's performance and security, smooth system integration and human-AI interaction, costs, stakeholder involvement, and employee training. However, regulatory, logistical, and technical issues were identified as the most critical barriers to an effective technology implementation process. In the future, our experts predicted both various threats and many opportunities related to AI technology in the health care sector. CONCLUSIONS: Our work provides new insights into the current state, criteria, challenges, and outlook for implementing AI technology in health care from the perspective of AI researchers and IT professionals in North America and Western Europe. For the full potential of AI-enabled technologies to be exploited and for them to contribute to solving current health care challenges, critical implementation criteria must be met, and all groups involved in the process must work together.

摘要

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本文引用的文献

[1]
Exploring Stakeholder Requirements to Enable Research and Development of Artificial Intelligence Algorithms in a Hospital-Based Generic Infrastructure: Results of a Multistep Mixed Methods Study.

JMIR Form Res. 2023-4-18

[2]
Artificial Intelligence Teaching as Part of Medical Education: Qualitative Analysis of Expert Interviews.

JMIR Med Educ. 2023-4-24

[3]
Determinants of implementing artificial intelligence-based clinical decision support tools in healthcare: a scoping review protocol.

BMJ Open. 2023-2-23

[4]
Digital health technology-specific risks for medical malpractice liability.

NPJ Digit Med. 2022-10-20

[5]
Artificial intelligence in (gastrointestinal) healthcare: patients' and physicians' perspectives.

Sci Rep. 2022-10-6

[6]
Perspective of Information Technology Decision Makers on Factors Influencing Adoption and Implementation of Artificial Intelligence Technologies in 40 German Hospitals: Descriptive Analysis.

JMIR Med Inform. 2022-6-15

[7]
Clinical Applications of Artificial Intelligence-An Updated Overview.

J Clin Med. 2022-4-18

[8]
The future of artificial intelligence in medicine: Medical-legal considerations for health leaders.

Healthc Manage Forum. 2022-5

[9]
The COVID-19 Pandemic Crisis and Patient Safety Culture: A Mixed-Method Study.

Int J Environ Res Public Health. 2022-2-16

[10]
Artificial Intelligence: Review of Current and Future Applications in Medicine.

Fed Pract. 2021-11

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