Liu Chao, Yuan Zeng, Liu Qiao, Song Kun, Kong Beihua, Su Xuantao
School of Integrated Circuits, Shandong University, Jinan 250101, China.
Institute of Biomedical Engineering, School of Control Science & Engineering, Shandong University, Jinan 250061, China.
Biomed Opt Express. 2024 Mar 4;15(4):2063-2077. doi: 10.1364/BOE.510022. eCollection 2024 Apr 1.
Automatic and label-free screening methods may help to reduce cervical cancer mortality rates, especially in developing regions. The latest advances of deep learning in the biomedical optics field provide a more automatic approach to solving clinical dilemmas. However, existing deep learning methods face challenges, such as the requirement of manually annotated training sets for clinical sample analysis. Here, we develop Siamese deep learning video flow cytometry for the analysis of clinical cervical cancer cell samples in a smear-free manner. High-content light scattering images of label-free single cells are obtained via the video flow cytometer. Siamese deep learning, a self-supervised method, is built to introduce cell lineage cells into an analysis of clinical cells, which utilizes generated similarity metrics as label annotations for clinical cells. Compared with other deep learning methods, Siamese deep learning achieves a higher accuracy of up to 87.11%, with about 5.62% improvement for label-free clinical cervical cancer cell classification. The Siamese deep learning video flow cytometry demonstrated here is promising for automatic, label-free analysis of many types of cells from clinical samples without cell smears.
自动且无标记的筛查方法可能有助于降低宫颈癌死亡率,尤其是在发展中地区。生物医学光学领域深度学习的最新进展为解决临床难题提供了一种更自动化的方法。然而,现有的深度学习方法面临挑战,例如临床样本分析需要手动标注的训练集。在此,我们开发了暹罗深度学习视频流式细胞术,以无涂片方式分析临床宫颈癌细胞样本。通过视频流式细胞仪获取无标记单细胞的高内涵光散射图像。暹罗深度学习是一种自监督方法,用于将细胞系细胞引入临床细胞分析,它利用生成的相似性度量作为临床细胞的标记注释。与其他深度学习方法相比,暹罗深度学习实现了高达87.11%的更高准确率,在无标记临床宫颈癌细胞分类方面提高了约5.62%。本文展示的暹罗深度学习视频流式细胞术有望对来自无细胞涂片临床样本的多种类型细胞进行自动、无标记分析。