@inproceedings{46dc9fe4619249fbb094c835067bc7e4,
title = "Trust in Clinical AI: Expanding the Unit of Analysis",
abstract = "From diagnosis to patient scheduling, AI is increasingly being considered across different clinical applications. Despite increasingly powerful clinical AI, uptake into actual clinical workflows remains limited. One of the major challenges is developing appropriate trust with clinicians. In this paper, we investigate trust in clinical AI in a wider perspective beyond user interactions with the AI. We offer several points in the clinical AI development, usage, and monitoring process that can have a significant impact on trust. We argue that the calibration of trust in AI should go beyond explainable AI and focus on the entire process of clinical AI deployment. We illustrate our argument with case studies from practitioners implementing clinical AI in practice to show how trust can be affected by different stages in the deployment cycle. ",
keywords = "Artificial Intelligence, Clinical AI, Trust, Trust Calibration",
author = "Browne, {Jacob T.} and Saskia Bakker and Bin Yu and Peter Lloyd and {Ben Allouch}, Somaya",
year = "2022",
doi = "10.3233/FAIA220192",
language = "English",
series = "Frontiers in Artificial Intelligence and Applications",
publisher = "IOS Press",
pages = "96--113",
editor = "Stefan Schlobach and Maria Perez-Ortiz and Myrthe Tielman",
booktitle = "HHAI2022",
address = "Netherlands",
note = "1st International Conference on Hybrid Human-Artificial Intelligence, HHAI 2022 ; Conference date: 13-06-2022 Through 17-06-2022",
}