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How much radiologist time can be saved by implementing AI in screen-reading mammograms?
0
Zitationen
3
Autoren
2026
Jahr
Abstract
Question How much radiology time is expected to be saved if AI were used as one of the two readers of screening mammograms? Findings Use of AI as one of the two readers, reducing the screen reading volume by 50%, was of moderate influence on the total workload for breast radiologists. Clinical relevance Implementing AI was shown to have limited potential in saving radiologists' time in screen-reading mammograms. The main benefit of implementing AI in screen-reading might thus be related to increased sensitivity of the screening test.
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