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Reader bias in breast cancer screening related to cancer prevalence and artificial intelligence decision support—a reader study
22
Zitationen
3
Autoren
2024
Jahr
Abstract
• Breast radiologists' sensitivity and specificity will be affected by changes brought by artificial intelligence. • Reading in a high cancer prevalence setting markedly increased sensitivity and decreased specificity. • Reviewing the binary reads by AI, negative or positive, biased screening radiologists towards the sensitivity and specificity of the AI system.
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