Quantitative scoring of epithelial and mesenchymal qualities of cancer cells using machine learning and quantitative phase imaging

被引:37
|
作者
Lam, Van K. [1 ]
Thanh Nguyen [2 ]
Vy Bui [2 ]
Byung Min Chung [3 ]
Chang, Lin-Ching [2 ]
Nehmetallah, George [2 ]
Raub, Christopher B. [1 ]
机构
[1] Catholic Univ Amer, Dept Biomed Engn, Washington, DC 20064 USA
[2] Catholic Univ Amer, Dept Elect Engn & Comp Sci, Washington, DC 20064 USA
[3] Catholic Univ Amer, Dept Biol, Washington, DC 20064 USA
关键词
holography; quantitative phase; machine learning; epithelial; mesenchymal; cancer cells; support vector machine; DIGITAL HOLOGRAPHIC MICROSCOPY; BREAST-CANCER; GINGIVAL FIBROBLASTS; LINE; MORPHOLOGY; CLASSIFICATION; TRANSITION; SIGNATURES;
D O I
10.1117/1.JBO.25.2.026002
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Significance: We introduce an application of machine learning trained on optical phase features of epithelial and mesenchymal cells to grade cancer cells' morphologies, relevant to evaluation of cancer phenotype in screening assays and clinical biopsies. Aim: Our objective was to determine quantitative epithelial and mesenchymal qualities of breast cancer cells through an unbiased, generalizable, and linear score covering the range of observed morphologies. Approach: Digital holographic microscopy was used to generate phase height maps of noncancerous epithelial (Gie-No3B11) and fibroblast (human gingival) cell lines, as well as MDA-MB-231 and MCF-7 breast cancer cell lines. Several machine learning algorithms were evaluated as binary classifiers of the noncancerous cells that graded the cancer cells by transfer learning. Results: Epithelial and mesenchymal cells were classified with 96% to 100% accuracy. Breast cancer cells had scores in between the noncancer scores, indicating both epithelial and mesenchymal morphological qualities. The MCF-7 cells skewed toward epithelial scores, while MDA-MB-231 cells skewed toward mesenchymal scores. Linear support vector machines (SVMs) produced the most distinct score distributions for each cell line. Conclusions: The proposed epithelial-mesenchymal score, derived from linear SVM learning, is a sensitive and quantitative approach for detecting epithelial and mesenchymal characteristics of unknown cells based on well-characterized cell lines. We establish a framework for rapid and accurate morphological evaluation of single cells and subtle phenotypic shifts in imaged cell populations. (C) The Authors. Published by SPIE under a Creative Commons Attribution 4.0 Unported License.
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页数:17
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