Diagnostic accuracy, fairness and clinical implementation of AI for breast cancer screening: results of multicenter retrospective and prospective technical feasibility studies

作者信息Christopher J Kelly, Marc Wilson, Lucy M Warren, Richard Sidebottom, Mark Halling-Brown, Lin Yang, Megumi Morigami, Jenny Venton, Reena Chopra, Jane Chang, Jonathan Dixon, Fiona J Gilbert, Daniel I Golden, Elzbieta Gruzewska, Lesley Honeyfield, Amandeep Hujan, Delara Khodabakhshi, Emma Lewis, Namrata Malhotra, Rachita Mallya, Della Ogunleye, Charlotte Purdy, Rory Sayres, Marcin Sieniek, Tsvetina Stoycheva, Aminata Sy, Susan Thomas, Dominic Ward, Lihong Xi, Shawn Xu, Shravya Shetty, Ara Darzi, Kenneth Young, Hema Purushothaman, Lisanne Khoo, Mamatha Reddy, Hutan Ashrafian, Deborah Cunningham
PMID41807818
期刊Nat Cancer
发布时间2026-03-10
DOI10.1038/s43018-026-01127-0

摘要

Artificial intelligence (AI) promises to enhance breast cancer screening. Here we evaluated Google's mammography AI system (version 1.2) across two phases: a retrospective study using 115,973 mammograms from five National Health Service screening services with 39-month follow-up and prospective noninterventional feasibility deployment at 12 sites (9,266 cases). The primary endpoint was AI sensitivity and specificity versus first reader using a 5% noninferiority margin. The secondary endpoints were performance versus second or consensus readers and breast-level analyses. Retrospectively, AI achieved superior sensitivity (0.541 versus 0.437 for first reader, P < 0.001) and noninferior specificity (0.943 versus 0.952, P < 0.001). Cancer detection rate increased from 7.54 to 9.33 per 1,000 women, with AI detecting 25.0% of interval cancers. Performance was particularly strong for first screens (39.3% fewer recalls, 8.8% higher detection) and invasive cancers. No systematic demographic disparities were observed. Simulated second-reader replacement reduced reading time by 32% while increasing detection by 17.7%. Prospective deployment confirmed technical feasibility but revealed a distribution shift requiring threshold recalibration. Implementation requires adaptive calibration and continuous monitoring to ensure safety and equity.

实验方法

产品清单

名称品牌货号
Hologic设备Hologic--
乳腺X线摄影系统----
数字标记工具Royal SurreyRiViewer
本地托管中继器Royal SurreySmartBox