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细胞形态特征是癌症细胞状态的预测标志物。

Cellular morphological features are predictive markers of cancer cell state.

机构信息

Department of Chemical and Biological Engineering, USA.

Department of Biology, USA.

出版信息

Comput Biol Med. 2020 Nov;126:104044. doi: 10.1016/j.compbiomed.2020.104044. Epub 2020 Oct 8.

Abstract

Even genetically identical cells have heterogeneous properties because of stochasticity in gene or protein expression. Single cell techniques that assay heterogeneous properties would be valuable for basic science and diseases like cancer, where accurate estimates of tumor properties is critical for accurate diagnosis and grading. Cell morphology is an emergent outcome of many cellular processes, potentially carrying information about cell properties at the single cell level. Here we study whether morphological parameters are sufficient for classification of single cells, using a set of 15 cell lines, representing three processes: (i) the transformation of normal cells using specific genetic mutations; (ii) metastasis in breast cancer and (iii) metastasis in osteosarcomas. Cellular morphology is defined as quantitative measures of the shape of the cell and the structure of the actin. We use a toolbox that calculates quantitative morphological parameters of cell images and apply it to hundreds of images of cells belonging to different cell lines. Using a combination of dimensional reduction and machine learning, we test whether these different processes have specific morphological signatures and whether single cells can be classified based on morphology alone. Using morphological parameters we could accurately classify cells as belonging to the correct class with high accuracy. Morphological signatures could distinguish between cells that were different only because of a different mutation on a parental line. Furthermore, both oncogenesis and metastasis appear to be characterized by stereotypical morphology changes. Thus, cellular morphology is a signature of cell phenotype, or state, at the single cell level.

摘要

即使是基因相同的细胞,由于基因或蛋白质表达的随机性,也具有异质性。能够检测异质性的单细胞技术对于基础科学和癌症等疾病将非常有价值,因为准确估计肿瘤特性对于准确诊断和分级至关重要。细胞形态是许多细胞过程的综合结果,可能携带有关单细胞水平细胞特性的信息。在这里,我们使用一组代表三种过程的 15 种细胞系来研究形态参数是否足以对单细胞进行分类:(i)使用特定基因突变转化正常细胞;(ii)乳腺癌转移和(iii)骨肉瘤转移。细胞形态学被定义为细胞形状和肌动蛋白结构的定量测量。我们使用一个计算细胞图像定量形态参数的工具箱,并将其应用于属于不同细胞系的数百个细胞图像。通过降维和机器学习的组合,我们测试这些不同的过程是否具有特定的形态特征,以及是否可以仅基于形态对单细胞进行分类。使用形态参数,我们可以以高精度准确地将细胞分类为属于正确的类别。形态特征可以区分仅由于亲本系上的不同突变而不同的细胞。此外,致癌和转移似乎都具有典型的形态变化特征。因此,细胞形态是单细胞水平细胞表型或状态的特征。

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