Abstract
Despite significant advancements in medical artificial intelligence (AI) systems, these technologies are prone to mistake in their predictions. These mis- takes can significantly affect medical experts’ willingness to continue using these systems. To mitigate potential discontinuation, existing research indicates that providing additional information alongside predictions, can lessen negative out- comes like discontinuation. Given the potential impact on users’ information pro- cessing, we hypothesize that AI explanations, detailing the system's decision- making process, can also influence the likelihood of discontinuing use after an AI mistake. Through an online experiment with medical experts (n=227), we demonstrate that such explanations can influence medical experts’ information processing and, consequently, mitigate the adverse effects on the actual discon- tinuation of AI systems following a mistake.
Recommended Citation
Aslan, Aycan; Greve, Maike; and Kolbe, Lutz, "Mitigating Discontinuance in Medical AI Systems: The Role of AI Explanations" (2024). Wirtschaftsinformatik 2024 Proceedings. 88.
https://aisel.aisnet.org/wi2024/88