Author
Listed:
- Jue Wang
(Sun Yat-sen University
Sun Yat-sen University)
- Yunfang Yu
(Sun Yat-sen University
Sun Yat-sen University
Sun Yat-sen University
Macau University of Science and Technology)
- Yujie Tan
(Sun Yat-sen University
Sun Yat-sen University
Sun Yat-sen University)
- Huan Wan
(Sun Yat-sen University
Sun Yat-sen University)
- Nafen Zheng
(Sun Yat-sen University
Sun Yat-sen University)
- Zifan He
(Sun Yat-sen University
Sun Yat-sen University
Sun Yat-sen University)
- Luhui Mao
(Sun Yat-sen University
Sun Yat-sen University
Sun Yat-sen University)
- Wei Ren
(Sun Yat-sen University
Sun Yat-sen University
Sun Yat-sen University)
- Kai Chen
(Sun Yat-sen University
Sun Yat-sen University
Sun Yat-sen University)
- Zhen Lin
(Cells Vision (Guangzhou) Medical Technology Inc.)
- Gui He
(Sun Yat-sen University
Sun Yat-sen University)
- Yongjian Chen
(Center for Molecular Medicine, Karolinska Institutet)
- Ruichao Chen
(The Third Affiliated Hospital of Guangzhou Medical University)
- Hui Xu
(Guangzhou Medical University)
- Kai Liu
(Cells Vision (Guangzhou) Medical Technology Inc.)
- Qinyue Yao
(Cells Vision (Guangzhou) Medical Technology Inc.)
- Sha Fu
(Sun Yat-sen University
Sun Yat-sen University)
- Yang Song
(Sun Yat-sen University
Sun Yat-sen University)
- Qingyu Chen
(Sun Yat-sen University)
- Lina Zuo
(Sun Yat-sen University)
- Liya Wei
(Sun Yat-sen University)
- Jin Wang
(Cells Vision (Guangzhou) Medical Technology Inc.)
- Nengtai Ouyang
(Sun Yat-sen University
Sun Yat-sen University)
- Herui Yao
(Sun Yat-sen University
Sun Yat-sen University
Sun Yat-sen University
Sun Yat-sen University)
Abstract
Cervical cancer is a significant global health issue, its prevalence and prognosis highlighting the importance of early screening for effective prevention. This research aimed to create and validate an artificial intelligence cervical cancer screening (AICCS) system for grading cervical cytology. The AICCS system was trained and validated using various datasets, including retrospective, prospective, and randomized observational trial data, involving a total of 16,056 participants. It utilized two artificial intelligence (AI) models: one for detecting cells at the patch-level and another for classifying whole-slide image (WSIs). The AICCS consistently showed high accuracy in predicting cytology grades across different datasets. In the prospective assessment, it achieved an area under curve (AUC) of 0.947, a sensitivity of 0.946, a specificity of 0.890, and an accuracy of 0.892. Remarkably, the randomized observational trial revealed that the AICCS-assisted cytopathologists had a significantly higher AUC, specificity, and accuracy than cytopathologists alone, with a notable 13.3% enhancement in sensitivity. Thus, AICCS holds promise as an additional tool for accurate and efficient cervical cancer screening.
Suggested Citation
Jue Wang & Yunfang Yu & Yujie Tan & Huan Wan & Nafen Zheng & Zifan He & Luhui Mao & Wei Ren & Kai Chen & Zhen Lin & Gui He & Yongjian Chen & Ruichao Chen & Hui Xu & Kai Liu & Qinyue Yao & Sha Fu & Yan, 2024.
"Artificial intelligence enables precision diagnosis of cervical cytology grades and cervical cancer,"
Nature Communications, Nature, vol. 15(1), pages 1-14, December.
Handle:
RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-48705-3
DOI: 10.1038/s41467-024-48705-3
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