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Artificial intelligence in breast cancer screening: A systematic review and meta-analysis of integration strategies
1
Zitationen
3
Autoren
2026
Jahr
Abstract
AI integration can match conventional double reading in detection performance, but its impact on workflow depends on the chosen model. Triage-based approaches consistently lower radiologist workload and recalls without compromising sensitivity, whereas replacing a second reader may simply shift effort to arbitration. Future implementation should focus on workflow-aware metrics and prospective threshold validation.
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