Department of Molecular Cell Biology and Immunology, Amsterdam UMC location Vrije Universiteit Amsterdam, Amsterdam, The Netherlands.
Amsterdam Institute for Immunology and Infectious Diseases, Amsterdam, The Netherlands.
Cytometry A. 2024 Aug;105(8):595-606. doi: 10.1002/cyto.a.24856. Epub 2024 Jun 12.
Autofluorescence is an intrinsic feature of cells, caused by the natural emission of light by photo-excitatory molecular content, which can complicate analysis of flow cytometry data. Different cell types have different autofluorescence spectra and, even within one cell type, heterogeneity of autofluorescence spectra can be present, for example, as a consequence of activation status or metabolic changes. By using full spectrum flow cytometry, the emission spectrum of a fluorochrome is captured by a set of photo detectors across a range of wavelengths, creating an unique signature for that fluorochrome. This signature is then used to identify, or unmix, that fluorochrome's unique spectrum from a multicolor sample containing different fluorescent molecules. Importantly, this means that this technology can also be used to identify intrinsic autofluorescence signal of an unstained sample, which can be used for unmixing purposes and to separate the autofluorescence signal from the fluorophore signals. However, this only works if the sample has a singular, relatively homogeneous and bright autofluorescence spectrum. To analyze samples with heterogeneous autofluorescence spectral profiles, we setup an unbiased workflow to more quickly identify differing autofluorescence spectra present in a sample to include as "autofluorescence signatures" during the unmixing of the full stained samples. First, clusters of cells with similar autofluorescence spectra are identified by unbiased dimensional reduction and clustering of unstained cells. Then, unique autofluorescence clusters are determined and are used to improve the unmixing accuracy of the full stained sample. Independent of the intensity of the autofluorescence and immunophenotyping of cell subsets, this unbiased method allows for the identification of most of the distinct autofluorescence spectra present in a sample, leading to less confounding autofluorescence spillover and spread into extrinsic phenotyping markers. Furthermore, this method is equally useful for spectral analysis of different biological samples, including tissue cell suspensions, peripheral blood mononuclear cells, and in vitro cultures of (primary) cells.
自发荧光是细胞的固有特征,由光致激分子内容物的自然发射引起,这可能会使流式细胞术数据的分析变得复杂。不同的细胞类型具有不同的自发荧光光谱,即使在一种细胞类型内,自发荧光光谱的异质性也可能存在,例如,由于激活状态或代谢变化。通过使用全光谱流式细胞术,一组光电探测器可以在一系列波长范围内捕获荧光染料的发射光谱,为该荧光染料创建一个独特的特征。然后,该特征用于从包含不同荧光分子的多色样品中识别或混合该荧光染料的独特光谱。重要的是,这意味着该技术还可用于识别未染色样品的固有自发荧光信号,该信号可用于混合目的,并将自发荧光信号与荧光团信号分离。但是,只有在样品具有单一、相对均匀且明亮的自发荧光光谱的情况下,这才有效。为了分析具有异质自发荧光光谱分布的样品,我们建立了一个无偏的工作流程,以便更快速地识别样品中存在的不同自发荧光光谱,并在混合完整染色样品时将其作为“自发荧光特征”包括在内。首先,通过无偏的降维和未染色细胞的聚类来识别具有相似自发荧光光谱的细胞簇。然后,确定独特的自发荧光簇,并将其用于提高完整染色样品的混合准确性。独立于自发荧光的强度和细胞亚群的免疫表型,这种无偏的方法允许识别样品中存在的大多数不同的自发荧光光谱,从而减少自发荧光溢出和扩散到外在表型标记物的干扰。此外,该方法同样适用于不同生物样品的光谱分析,包括组织细胞悬液、外周血单核细胞和(原代)细胞的体外培养物。