TY - JOUR
T1 - The impact of AI suggestions on radiologists’ decisions
T2 - a pilot study of explainability and attitudinal priming interventions in mammography examination
AU - Rezazade Mehrizi, Mohammad H.
AU - Mol, Ferdinand
AU - Peter, Marcel
AU - Ranschaert, Erik
AU - Dos Santos, Daniel Pinto
AU - Shahidi, Ramin
AU - Fatehi, Mansoor
AU - Dratsch, Thomas
N1 - Publisher Copyright:
© 2023, The Author(s).
PY - 2023/6/7
Y1 - 2023/6/7
N2 - Various studies have shown that medical professionals are prone to follow the incorrect suggestions offered by algorithms, especially when they have limited inputs to interrogate and interpret such suggestions and when they have an attitude of relying on them. We examine the effect of correct and incorrect algorithmic suggestions on the diagnosis performance of radiologists when (1) they have no, partial, and extensive informational inputs for explaining the suggestions (study 1) and (2) they are primed to hold a positive, negative, ambivalent, or neutral attitude towards AI (study 2). Our analysis of 2760 decisions made by 92 radiologists conducting 15 mammography examinations shows that radiologists’ diagnoses follow both incorrect and correct suggestions, despite variations in the explainability inputs and attitudinal priming interventions. We identify and explain various pathways through which radiologists navigate through the decision process and arrive at correct or incorrect decisions. Overall, the findings of both studies show the limited effect of using explainability inputs and attitudinal priming for overcoming the influence of (incorrect) algorithmic suggestions.
AB - Various studies have shown that medical professionals are prone to follow the incorrect suggestions offered by algorithms, especially when they have limited inputs to interrogate and interpret such suggestions and when they have an attitude of relying on them. We examine the effect of correct and incorrect algorithmic suggestions on the diagnosis performance of radiologists when (1) they have no, partial, and extensive informational inputs for explaining the suggestions (study 1) and (2) they are primed to hold a positive, negative, ambivalent, or neutral attitude towards AI (study 2). Our analysis of 2760 decisions made by 92 radiologists conducting 15 mammography examinations shows that radiologists’ diagnoses follow both incorrect and correct suggestions, despite variations in the explainability inputs and attitudinal priming interventions. We identify and explain various pathways through which radiologists navigate through the decision process and arrive at correct or incorrect decisions. Overall, the findings of both studies show the limited effect of using explainability inputs and attitudinal priming for overcoming the influence of (incorrect) algorithmic suggestions.
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U2 - 10.1038/s41598-023-36435-3
DO - 10.1038/s41598-023-36435-3
M3 - Article
C2 - 37286665
AN - SCOPUS:85161028957
SN - 2045-2322
VL - 13
SP - 1
EP - 14
JO - Scientific Reports
JF - Scientific Reports
M1 - 9230
ER -