| Literature DB >> 33840152 |
Shanshan Liu1,2, Zeng Yuan3, Xu Qiao2, Qiao Liu4, Kun Song3, Beihua Kong3, Xuantao Su1.
Abstract
Cervical cancer is a major gynecological malignant tumor that threatens women's health. Current cytological methods have certain limitations for cervical cancer early screening. Light scattering patterns can reflect small differences in the internal structure of cells. In this study, we develop a light scattering pattern specific convolutional network (LSPS-net) based on deep learning algorithm and integrate it into a 2D light scattering static cytometry for automatic, label-free analysis of single cervical cells. An accuracy rate of 95.46% for the classification of normal cervical cells and cancerous ones (mixed C-33A and CaSki cells) is obtained. When applied for the subtyping of label-free cervical cell lines, we obtain an accuracy rate of 93.31% with our LSPS-net cytometric technique. Furthermore, the three-way classification of the above different types of cells has an overall accuracy rate of 90.90%, and comparisons with other feature descriptors and classification algorithms show the superiority of deep learning for automatic feature extraction. The LSPS-net static cytometry may potentially be used for cervical cancer early screening, which is rapid, automatic and label-free.Entities:
Keywords: cell analysis; cervical cancer; deep learning; label-free; light scattering pattern
Year: 2021 PMID: 33840152 DOI: 10.1002/cyto.a.24349
Source DB: PubMed Journal: Cytometry A ISSN: 1552-4922 Impact factor: 4.355