Author:
Salih Ahmed M.,Galazzo Ilaria Boscolo,Gkontra Polyxeni,Rauseo Elisa,Lee Aaron Mark,Lekadir Karim,Radeva Petia,Petersen Steffen E.,Menegaz Gloria
Abstract
AbstractExplainable artificial intelligence (XAI) elucidates the decision-making process of complex AI models and is important in building trust in model predictions. XAI explanations themselves require evaluation as to accuracy and reasonableness and in the context of use of the underlying AI model. This review details the evaluation of XAI in cardiac AI applications and has found that, of the studies examined, 37% evaluated XAI quality using literature results, 11% used clinicians as domain-experts, 11% used proxies or statistical analysis, with the remaining 43% not assessing the XAI used at all. We aim to inspire additional studies within healthcare, urging researchers not only to apply XAI methods but to systematically assess the resulting explanations, as a step towards developing trustworthy and safe models.
Funder
British Heart Foundation
Barts Charity
Horizon Europe
National Institute for Health and Care Research Barts Biomedical Research Centre
European Union’s Horizon
Publisher
Springer Science and Business Media LLC