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粒细胞集落刺激因子通过单细胞拉曼微光谱和机器学习分析研究的生化变化促进结肠和乳腺癌细胞的侵袭表型。

Granulocyte colony-stimulating factor promotes an aggressive phenotype of colon and breast cancer cells with biochemical changes investigated by single-cell Raman microspectroscopy and machine learning analysis.

机构信息

Department of Biological Engineering, Utah State University, Logan, UT 84322, USA.

Department of Internal Medicine, Division of Gastroenterology, University of Utah School of Medicine, Salt Lake City, UT84132, USA.

出版信息

Analyst. 2021 Oct 11;146(20):6124-6131. doi: 10.1039/d1an00938a.

Abstract

Granulocyte colony-stimulating factor (G-CSF) is produced at high levels in several cancers and is directly linked with metastasis in gastrointestinal (GI) cancers. In order to further understand the alteration of molecular compositions and biochemical features triggered by G-CSF treatment at molecular and cell levels, we sought to investigate the long term treatment of G-CSF on colon and breast cancer cells measured by label-free, non-invasive single-cell Raman microspectroscopy. Raman spectrum captures the molecule-specific spectral signatures ("fingerprints") of different biomolecules presented on cells. In this work, mouse breast cancer line 4T1 and mouse colon cancer line CT26 were treated with G-CSF for 7 weeks and subsequently analyzed by machine learning based Raman spectroscopy and gene/cytokine expression. The principal component analysis (PCA) identified the Raman bands that most significantly changed between the control and G-CSF treated cells. Notably, here we proposed the concept of aggressiveness score, which can be derived from the posterior probability of linear discriminant analysis (LDA), for quantitative spectral analysis of tumorigenic cells. The aggressiveness score was effectively applied to analyze and differentiate the overall cell biochemical changes of G-CSF-treated two model cancer cells. All these tumorigenic progressions suggested by Raman analysis were confirmed by pro-tumorigenic cytokine and gene analysis. A high correlation between gene expression data and Raman spectra highlights that the machine learning based non-invasive Raman spectroscopy offers emerging and powerful tools to better understand the regulation mechanism of cytokines in the tumor microenvironment that could lead to the discovery of new targets for cancer therapy.

摘要

粒细胞集落刺激因子 (G-CSF) 在多种癌症中高水平产生,并与胃肠道 (GI) 癌症的转移直接相关。为了进一步了解 G-CSF 治疗在分子和细胞水平上引发的分子组成和生化特征的改变,我们试图通过无标记、非侵入性单细胞拉曼微光谱技术研究 G-CSF 对结肠癌和乳腺癌细胞的长期治疗。拉曼光谱捕捉到细胞表面不同生物分子的分子特异性光谱特征(“指纹”)。在这项工作中,用 G-CSF 处理小鼠乳腺癌细胞系 4T1 和小鼠结肠癌细胞系 CT26 长达 7 周,并随后通过基于机器学习的拉曼光谱和基因/细胞因子表达进行分析。主成分分析(PCA)确定了在对照和 G-CSF 处理细胞之间变化最显著的拉曼带。值得注意的是,在这里我们提出了侵略性评分的概念,它可以从线性判别分析(LDA)的后验概率中得出,用于肿瘤细胞的定量光谱分析。侵略性评分有效地应用于分析和区分 G-CSF 处理的两种模型癌细胞的整体细胞生化变化。拉曼分析所提示的所有肿瘤进展都通过促肿瘤细胞因子和基因分析得到证实。基因表达数据和拉曼光谱之间的高度相关性突出表明,基于机器学习的非侵入性拉曼光谱为更好地了解细胞因子在肿瘤微环境中的调控机制提供了新兴的强大工具,这可能导致发现癌症治疗的新靶点。

相似文献

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Raman spectroscopy and machine learning for the classification of breast cancers.拉曼光谱和机器学习在乳腺癌分类中的应用。
Spectrochim Acta A Mol Biomol Spectrosc. 2022 Jan 5;264:120300. doi: 10.1016/j.saa.2021.120300. Epub 2021 Aug 21.

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