Chun Jaewoo, Yu Ando, Ko Seokhwan, Chong Gunoh, Park Jiyoung, Han Hyungsoo, Park Nora Jeeyoung, Cho Junghwan
Department of Biomedical Science, Graduate School, Kyungpook National University, Daegu 41944, Republic of Korea.
Clinical Omics Institute, Kyungpook National University, Daegu 41405, Republic of Korea.
Life (Basel). 2024 Nov 28;14(12):1565. doi: 10.3390/life14121565.
Cervical cancer is a significant health challenge, yet it can be effectively prevented through early detection. Cytology-based screening is critical for identifying cancerous and precancerous lesions; however, the process is labor-intensive and reliant on trained experts to scan through hundreds of thousands of mostly normal cells. To address these challenges, we propose a novel distribution-augmented approach using contrastive self-supervised learning for detecting abnormal squamous cervical cells from cytological images. Our method utilizes color augmentations to enhance the model's ability to differentiate between normal and high-grade precancerous cells; specifically, high-grade squamous intraepithelial lesions (HSILs) and atypical squamous cells-cannot exclude HSIL (ASC-H). Our model was trained exclusively on normal cervical cell images and achieved high diagnostic accuracy, demonstrating robustness against color distribution shifts. We employed kernel density estimation (KDE) to assess cell type distributions, further facilitating the identification of abnormalities. Our results indicate that our approach improves screening accuracy and reduces the workload for cytopathologists, contributing to more efficient cervical cancer screening programs.
宫颈癌是一项重大的健康挑战,但通过早期检测可以有效预防。基于细胞学的筛查对于识别癌性和癌前病变至关重要;然而,这个过程劳动强度大,并且依赖训练有素的专家来扫描数十万大部分为正常的细胞。为应对这些挑战,我们提出一种新颖的分布增强方法,使用对比自监督学习从细胞学图像中检测异常的宫颈鳞状细胞。我们的方法利用颜色增强来提高模型区分正常细胞和高级别癌前细胞的能力;具体来说,就是高级别鳞状上皮内病变(HSILs)和不能排除HSIL的非典型鳞状细胞(ASC-H)。我们的模型仅在正常宫颈细胞图像上进行训练,并取得了高诊断准确率,证明了对颜色分布变化的鲁棒性。我们采用核密度估计(KDE)来评估细胞类型分布,进一步便于识别异常情况。我们的结果表明,我们的方法提高了筛查准确率,减轻了细胞病理学家的工作量,有助于开展更高效的宫颈癌筛查项目。