Faculty, Staff and Student Publications
Language
English
Publication Date
11-1-2023
Journal
Journal of Biomedical Informatics
DOI
10.1016/j.jbi.2023.104531
PMID
37884177
Abstract
Introduction: The use of artificial intelligence (AI), particularly machine learning and predictive analytics, has shown great promise in health care. Despite its strong potential, there has been limited use in health care settings. In this systematic review, we aim to determine the main barriers to successful implementation of AI in healthcare and discuss potential ways to overcome these challenges.
Methods: We conducted a literature search in PubMed (1/1/2001-1/1/2023). The search was restricted to publications in the English language, and human study subjects. We excluded articles that did not discuss AI, machine learning, predictive analytics, and barriers to the use of these techniques in health care. Using grounded theory methodology, we abstracted concepts to identify major barriers to AI use in medicine.
Results: We identified a total of 2,382 articles. After reviewing the 306 included papers, we developed 19 major themes, which we categorized into three levels: the Technical/Algorithm, Stakeholder, and Social levels (TASS). These themes included: Lack of Explainability, Need for Validation Protocols, Need for Standards for Interoperability, Need for Reporting Guidelines, Need for Standardization of Performance Metrics, Lack of Plan for Updating Algorithm, Job Loss, Skills Loss, Workflow Challenges, Loss of Patient Autonomy and Consent, Disturbing the Patient-Clinician Relationship, Lack of Trust in AI, Logistical Challenges, Lack of strategic plan, Lack of Cost-effectiveness Analysis and Proof of Efficacy, Privacy, Liability, Bias and Social Justice, and Education.
Conclusion: We identified 19 major barriers to the use of AI in healthcare and categorized them into three levels: the Technical/Algorithm, Stakeholder, and Social levels (TASS). Future studies should expand on barriers in pediatric care and focus on developing clearly defined protocols to overcome these barriers.
Keywords
Algorithms, Artificial Intelligence, Benchmarking, Machine Learning, Medicine, Artificial intelligence, Augmented intelligence, Barriers, Implementation, Machine learning, Predictive analytics
Published Open-Access
yes
Recommended Citation
Li, Linda T; Haley, Lauren C; Boyd, Alexandra K; et al., "Technical/Algorithm, Stakeholder, and Society (Tass) Barriers to the Application of Artificial Intelligence in Medicine: A Systematic Review" (2023). Faculty, Staff and Student Publications. 694.
https://digitalcommons.library.tmc.edu/uthshis_docs/694