Mangal Jyoti, Monga Rashi, Mathur Sandeep R, Dinda Amit K, Joseph Joby, Ahlawat Sarita, Khare Kedar
Department of Physics, Indian Institute of Technology Delhi, New Delhi, India.
Department of Pathology, All India Institute of Medical Sciences, New Delhi, India.
J Biophotonics. 2019 Aug;12(8):e201800409. doi: 10.1002/jbio.201800409. Epub 2019 May 2.
We report results on unsupervised organization of cervical cells using microscopy of Pap-smear samples in brightfield (3-channel color) as well as high-resolution quantitative phase imaging modalities. A number of morphological parameters are measured for each of the 1450 cell nuclei (from 10 woman subjects) imaged in this study. The principal component analysis (PCA) methodology applied to this data shows that the cell image clustering performance improves significantly when brightfield as well as phase information is utilized for PCA as compared to when brightfield-only information is used. The results point to the feasibility of an image-based tool that will be able to mark suspicious cells for further examination by the pathologist. More importantly, our results suggest that the information in quantitative phase images of cells that is typically not used in clinical practice is valuable for automated cell classification applications in general.
我们报告了使用巴氏涂片样本在明场(三通道彩色)显微镜以及高分辨率定量相成像模式下对宫颈细胞进行无监督组织的结果。本研究对1450个细胞核(来自10名女性受试者)进行成像,并为每个细胞核测量了许多形态学参数。将主成分分析(PCA)方法应用于该数据表明,与仅使用明场信息相比,当将明场以及相位信息用于PCA时,细胞图像聚类性能显著提高。结果表明基于图像的工具能够标记可疑细胞以供病理学家进一步检查的可行性。更重要的是,我们的结果表明,细胞定量相图像中通常在临床实践中未被使用的信息对于一般的自动细胞分类应用是有价值的。