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Imaging Multiple Endogenous and Exogenous Fluorescent Species in Cells and Tissues

机译:成像细胞和组织中的多个内源性和外源性荧光物质

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Hyperspectral imaging provides complex image data with spectral information from many fluorescent species contained within the sample such as the fluorescent labels and cellular or pigment autofluorescence. To maximize the utility of this spectral imaging technique it is necessary to couple hyperspectral imaging with sophisticated multivariate analysis methods to extract meaningful relationships from the overlapped spectra. Many commonly employed multivariate analysis techniques require the identity of the emission spectra of each component to be known or pure component pixels within the image, a condition rarely met in biological samples. Multivariate curve resolution (MCR) has proven extremely useful for analyzing hyperspectral and multispectral images of biological specimens because it can operate with little or no a priori information about the emitting species, making it appropriate for interrogating samples containing autofluorescence and unanticipated contaminating fluorescence. To demonstrate the unique ability of our hyperspectral imaging system coupled with MCR analysis techniques we will analyze hyperspectral images of four-color in-situ hybridized rat brain tissue containing 455 spectral pixels from 550 - 850 nm. Even though there were only four colors imparted onto the tissue in this case, analysis revealed seven fluorescent species, including contributions from cellular autofluorescence and the tissue mounting media. Spectral image analysis will be presented along with a detailed discussion of the origin of the fluorescence and specific illustrations of the adverse effects of ignoring these additional fluorescent species in a traditional microscopy experiment and a hyperspectral imaging system.
机译:高光谱成像可提供复杂的图像数据,以及来自样品中包含的许多荧光物质的光谱信息,例如荧光标记和细胞或色素自发荧光。为了最大程度地利用这种光谱成像技术,有必要将高光谱成像与复杂的多元分析方法结合起来,以从重叠光谱中提取有意义的关系。许多常用的多元分析技术要求图像中每个成分的发射光谱必须是已知的或纯像素,这是生物样品中很少满足的条件。多元曲线分辨率(MCR)已被证明对分析生物样本的高光谱和多光谱图像非常有用,因为它可以在很少或没有先验信息的情况下操作发光物种,从而使其适用于询问含有自发荧光和未预期污染荧光的样品。为了证明我们的高光谱成像系统结合MCR分析技术的独特能力,我们将分析四色原位杂交大鼠脑组织的高光谱图像,其中包含550-850 nm的455个光谱像素。即使在这种情况下仅将四种颜色赋予组织,分析也显示出七种荧光物质,包括细胞自发荧光和组织固定介质的贡献。将提供光谱图像分析,以及对荧光起源的详细讨论,以及在传统的显微镜实验和高光谱成像系统中忽略这些额外荧光物质的不利影响的具体说明。

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