Xue Peng, Dang Le, Kong Ling-Hua, Tang Hong-Ping, Xu Hai-Miao, Weng Hai-Yan, Wang Zhe, Wei Rong-Gan, Xu Lian, Li Hong-Xia, Niu Hai-Yan, Wang Ming-Juan, Ye Zi-Chen, Li Zhi-Fang, Chen Wen, Pan Qin-Jing, Zhang Xun, Rezhake Remila, Zhang Li, Jiang Yu, Qiao You-Lin, Zhu Lan, Zhao Fang-Hui
School of Population Medicine and Public Health, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.
National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.
Nat Commun. 2025 Apr 13;16(1):3506. doi: 10.1038/s41467-025-58883-3.
Deep learning (DL) enabled liquid-based cytology has potential for cervical cancer screening or triage. Here, we develop a DL model using whole cytology slides from 17,397 women and test it on 10,826 additional cases through a three-stage process. The DL model achieves robust performance across nine hospitals. In a multi-reader, multi-case study, it outperforms cytopathologists' sensitivity by 9%. Reading time significantly decreases with DL assistance (218s vs 30s; p < 0.0001). In community-based organized screening, the DL model's sensitivity matches that of senior cytopathologists (0.878 vs 0.854; p > 0.999), yet it has reduced specificity (0.831 vs 0.901; p < 0.0001). Notably, hospital-based opportunistic screening shows that junior cytopathologists with DL assistance significantly improve both their sensitivity and specificity (0.857 vs 0.657, 0.840 vs 0.737; both p < 0.0001). When triaging human papillomavirus-positive cases, DL assistance exhibits better performance than junior cytopathologists alone. These findings support using the DL model as an assistance tool in cervical screening and case triage.
基于深度学习(DL)的液基细胞学检查在宫颈癌筛查或分流方面具有潜力。在此,我们使用来自17397名女性的全细胞涂片开发了一种DL模型,并通过三个阶段的过程在另外10826例病例上对其进行了测试。该DL模型在九家医院均表现出稳健的性能。在一项多阅片者、多病例研究中,它的灵敏度比细胞病理学家高出9%。在DL的辅助下,阅片时间显著缩短(218秒对30秒;p < 0.0001)。在基于社区的组织性筛查中,DL模型的灵敏度与资深细胞病理学家相当(0.878对0.854;p > 0.999),但其特异性有所降低(0.831对0.901;p < 0.0001)。值得注意的是,在基于医院的机会性筛查中,在DL辅助下的初级细胞病理学家的灵敏度和特异性均显著提高(0.857对0.657,0.840对0.737;p均< 0.0001)。在对人乳头瘤病毒阳性病例进行分流时,DL辅助的表现优于单独的初级细胞病理学家。这些发现支持将DL模型用作宫颈癌筛查和病例分流的辅助工具。