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Artificial Intelligence in Screening Mammography: A Population Survey of Women’s Preferences
112
Zitationen
4
Autoren
2020
Jahr
Abstract
Despite recent breakthroughs in the diagnostic performance of AI algorithms for the interpretation of screening mammograms, the general population currently does not support a fully independent use of such systems without involving a radiologist. The combination of a radiologist as a first reader and an AI system as a second reader in a breast cancer screening program finds most support at present. Accountability in case of AI-related diagnostic errors in screening mammography is still an unresolved conundrum.
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