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通过拉曼光谱的多变量分析鉴定共培养物中单个细胞的谱系。

Identifying the lineages of individual cells in cocultures by multivariate analysis of Raman spectra.

作者信息

Ilin Yelena, Kraft Mary L

机构信息

Department of Chemical and Biomolecular Engineering, University of Illinois at Urbana-Champaign, Urbana, Illinois 61801, USA.

出版信息

Analyst. 2014 May 7;139(9):2177-85. doi: 10.1039/c3an02156d.

Abstract

The cellular and matrix cues that induce stem cell differentiation into distinct cell lineages must be identified to permit the ex vivo expansion of desired cell populations for clinical applications. Combinatorial biomaterials enable screening multiple different microenvironments while using small numbers of rare stem cells. New methods to identify the phenotypes of individual cells in cocultures with location specificity would increase the efficiency and throughput of these screening platforms. Here, we demonstrate that partial least-squares discriminant analysis (PLS-DA) models of calibration Raman spectra from cells in pure cultures can be used to identify the lineages of individual cells in more complex culture environments. The calibration Raman spectra were collected from individual cells of four different lineages, and a PLS-DA model that captured the Raman spectral profiles characteristic of each cell line was created. The application of these models to Raman spectra from test sets of cells indicated individual, fixed and living cells in separate monocultures, as well as those in more complex culture environments, such as cocultures, could be identified with low error. Cells from populations with very similar biochemistries could also be identified with high accuracy. We show that these identifications are based on reproducible cell-related spectral features, and not spectral contributions from the culture environment. This work demonstrates that PLS-DA of Raman spectra acquired from pure monocultures provides an objective, noninvasive, and label-free approach for accurately identifying the lineages of individual, living cells in more complex coculture environments.

摘要

为了能够在体外扩增出临床上所需的细胞群体,必须明确诱导干细胞分化为不同细胞谱系的细胞及基质信号。组合生物材料能够在使用少量稀有干细胞的同时,筛选多种不同的微环境。能够识别共培养中具有位置特异性的单个细胞表型的新方法,将提高这些筛选平台的效率和通量。在此,我们证明,来自纯培养细胞的校准拉曼光谱的偏最小二乘判别分析(PLS-DA)模型,可用于识别更复杂培养环境中单个细胞的谱系。从四个不同谱系的单个细胞收集校准拉曼光谱,并创建了一个捕获每个细胞系拉曼光谱特征的PLS-DA模型。将这些模型应用于细胞测试集的拉曼光谱表明,在单独的单培养物中以及在更复杂的培养环境(如共培养)中的单个、固定和活细胞,都能以低误差被识别。来自生物化学性质非常相似群体的细胞也能被高精度识别。我们表明,这些识别是基于与细胞相关的可重复光谱特征,而非来自培养环境的光谱贡献。这项工作表明,从纯单培养物中获取的拉曼光谱的PLS-DA,为准确识别更复杂共培养环境中单个活细胞的谱系提供了一种客观、非侵入性且无标记的方法。

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