• LOGIN
    Login with username and password
Repository logo

BORIS Portal

Bern Open Repository and Information System

  • Publications
  • Projects
  • Funding
  • Research Data
  • Organizations
  • Researchers
  • LOGIN
    Login with username and password
Repository logo
Unibern.ch
  1. Home
  2. Publications
  3. AI for IMPACTS Framework for Evaluating the Long-Term Real-World Impacts of AI-Powered Clinician Tools: Systematic Review and Narrative Synthesis.
 

AI for IMPACTS Framework for Evaluating the Long-Term Real-World Impacts of AI-Powered Clinician Tools: Systematic Review and Narrative Synthesis.

Options
  • Details
BORIS DOI
10.48620/85435
Date of Publication
February 5, 2025
Publication Type
Article
Division/Institute

ARTORG Center for Bio...

Contributor
Jacob, Christine
Brasier, Noé
Laurenzi, Emanuele
Heuss, Sabina
Mougiakakou, Stavroula-Georgia
ARTORG Center for Biomedical Engineering Research
ARTORG Center - Artificial Intelligence in Health and Nutrition
Cöltekin, Arzu
Peter, Marc K
Subject(s)

600 - Technology::610...

Series
Journal of Medical Internet Research
ISSN or ISBN (if monograph)
1438-8871
Publisher
JMIR Publications
Language
English
Publisher DOI
10.2196/67485
PubMed ID
39909417
Uncontrolled Keywords

adoption

artificial intelligen...

assessment

clinical practice

clinician

eHealth

efficiency

health technology ass...

implementation

Description
Background
Artificial intelligence (AI) has the potential to revolutionize health care by enhancing both clinical outcomes and operational efficiency. However, its clinical adoption has been slower than anticipated, largely due to the absence of comprehensive evaluation frameworks. Existing frameworks remain insufficient and tend to emphasize technical metrics such as accuracy and validation, while overlooking critical real-world factors such as clinical impact, integration, and economic sustainability. This narrow focus prevents AI tools from being effectively implemented, limiting their broader impact and long-term viability in clinical practice.Objective
This study aimed to create a framework for assessing AI in health care, extending beyond technical metrics to incorporate social and organizational dimensions. The framework was developed by systematically reviewing, analyzing, and synthesizing the evaluation criteria necessary for successful implementation, focusing on the long-term real-world impact of AI in clinical practice.Methods
A search was performed in July 2024 across the PubMed, Cochrane, Scopus, and IEEE Xplore databases to identify relevant studies published in English between January 2019 and mid-July 2024, yielding 3528 results, among which 44 studies met the inclusion criteria. The systematic review followed PRISMA (Preferred Reporting Items for Systematic reviews and Meta-Analyses) guidelines and the Cochrane Handbook for Systematic Reviews. Data were analyzed using NVivo through thematic analysis and narrative synthesis to identify key emergent themes in the studies.Results
By synthesizing the included studies, we developed a framework that goes beyond the traditional focus on technical metrics or study-level methodologies. It integrates clinical context and real-world implementation factors, offering a more comprehensive approach to evaluating AI tools. With our focus on assessing the long-term real-world impact of AI technologies in health care, we named the framework AI for IMPACTS. The criteria are organized into seven key clusters, each corresponding to a letter in the acronym: (1) I-integration, interoperability, and workflow; (2) M-monitoring, governance, and accountability; (3) P-performance and quality metrics; (4) A-acceptability, trust, and training; (5) C-cost and economic evaluation; (6) T-technological safety and transparency; and (7) S-scalability and impact. These are further broken down into 28 specific subcriteria.Conclusions
The AI for IMPACTS framework offers a holistic approach to evaluate the long-term real-world impact of AI tools in the heterogeneous and challenging health care context and lays the groundwork for further validation through expert consensus and testing of the framework in real-world health care settings. It is important to emphasize that multidisciplinary expertise is essential for assessment, yet many assessors lack the necessary training. In addition, traditional evaluation methods struggle to keep pace with AI's rapid development. To ensure successful AI integration, flexible, fast-tracked assessment processes and proper assessor training are needed to maintain rigorous standards while adapting to AI's dynamic evolution.Trial Registration
reviewregistry1859; https://tinyurl.com/ysn2d7sh.
Handle
https://boris-portal.unibe.ch/handle/20.500.12422/205123
Show full item
File(s)
FileFile TypeFormatSizeLicensePublisher/Copright statementContent
jmir-2025-1-e67485.pdftextAdobe PDF1.04 MBpublishedOpen
BORIS Portal
Bern Open Repository and Information System
Build: 960e9e [21.08. 13:49]
Explore
  • Projects
  • Funding
  • Publications
  • Research Data
  • Organizations
  • Researchers
More
  • About BORIS Portal
  • Send Feedback
  • Cookie settings
  • Service Policy
Follow us on
  • Mastodon
  • YouTube
  • LinkedIn
UniBe logo