Abstract
The rise of complex AI systems in healthcare and other sectors has led to a growing area of research called Explainable AI (XAI) designed to increase transparency. In this area, quantitative and qualitative studies focus on improving user trust and task performance by providing system- and prediction-level XAI features. We analyze stakeholder engagement events (interviews and workshops) on the use of AI for kidney transplantation. From this we identify themes which we use to frame a scoping literature review on current XAI features. The stakeholder engagement process lasted over nine months covering three stakeholder group's workflows, determining where AI could intervene and assessing a mock XAI decision support system. Based on the stakeholder engagement, we identify four major themes relevant to designing XAI systems – 1) use of AI predictions, 2) information included in AI predictions, 3) personalization of AI predictions for individual differences, and 4) customizing AI predictions for specific cases. Using these themes, our scoping literature review finds that providing AI predictions before, during, or after decision-making could be beneficial depending on the complexity of the stakeholder's task. Additionally, expert stakeholders like surgeons prefer minimal to no XAI features, AI prediction, and uncertainty estimates for easy use cases. However, almost all stakeholders prefer to have optional XAI features to review when needed, especially in hard-to-predict cases. The literature also suggests that providing both system- and prediction-level information is necessary to build the user's mental model of the system appropriately. Although XAI features improve users' trust in the system, human-AI team performance is not always enhanced. Overall, stakeholders prefer to have agency over the XAI interface to control the level of information based on their needs and task complexity. We conclude with suggestions for future research, especially on customizing XAI features based on preferences and tasks.
Recommended Citation
H. V. Subramanian et al., "Designing Explainable AI To Improve Human-AI Team Performance: A Medical Stakeholder-Driven Scoping Review," Artificial Intelligence in Medicine, vol. 149, article no. 102780, Elsevier, Mar 2024.
The definitive version is available at https://doi.org/10.1016/j.artmed.2024.102780
Department(s)
Engineering Management and Systems Engineering
Second Department
Psychological Science
Publication Status
Open Access
Keywords and Phrases
Explainable AI; Human-AI team; Human-centered design; Kidney transplant; Stakeholder engagement; Trust in AI
International Standard Serial Number (ISSN)
1873-2860; 0933-3657
Document Type
Article - Journal
Document Version
Citation
File Type
text
Language(s)
English
Rights
© 2024 Elsevier, All rights reserved.
Publication Date
01 Mar 2024
Included in
Operations Research, Systems Engineering and Industrial Engineering Commons, Psychology Commons
Comments
National Science Foundation, Grant 2026324