首页> 外文期刊>The Analyst: The Analytical Journal of the Royal Society of Chemistry: A Monthly International Publication Dealing with All Branches of Analytical Chemistry >Colocalization of fluorescence and Raman microscopic images for the identification of subcellular compartments: a validation study
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Colocalization of fluorescence and Raman microscopic images for the identification of subcellular compartments: a validation study

机译:荧光和拉曼显微图像的共定位以鉴定亚细胞区室:一项验证研究

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摘要

A major promise of Raman microscopy is the label-free detailed recognition of cellular and subcellular structures. To this end, identifying colocalization patterns between Raman spectral images and fluorescence microscopic images is a key step to annotate subcellular components in Raman spectroscopic images. While existing approaches to resolve subcellular structures are based on fluorescence labeling, we propose a combination of a colocalization scheme with subsequent training of a supervised classifier that allows label-free resolution of cellular compartments. Our colocalization scheme unveils statistically significant overlapping regions by identifying correlation between the fluorescence color channels and clusters from unsupervised machine learning methods like hierarchical cluster analysis. The colocalization scheme is used as a pre-selection to gather appropriate spectra as training data. These spectra are used in the second part as training data to establish a supervised random forest classifier to automatically identify lipid droplets and nucleus. We validate our approach by examining Raman spectral images overlaid with fluorescence labelings of different cellular compartments, indicating that specific components may indeed be identified label-free in the spectral image. A Matlab implementation of our colocalization software is available at http://www.mathworks.de/matlabcentral/fileexchange/46608-frcoloc.
机译:拉曼显微镜的主要前景是细胞和亚细胞结构的无标记详细识别。为此,识别拉曼光谱图像和荧光显微图像之间的共定位模式是注释拉曼光谱图像中亚细胞成分的关键步骤。虽然解决亚细胞结构的现有方法基于荧光标记,但我们提出了共定位方案与随后训练的有监督分类器的组合,该分类器允许无标签分辨细胞室。我们的共定位方案通过从无监督机器学习方法(例如层次聚类分析)中识别荧光颜色通道和聚类之间的相关性,揭示了统计学上重要的重叠区域。共定位方案用作预选,以收集适当的光谱作为训练数据。这些光谱在第二部分中用作训练数据,以建立有监督的随机森林分类器,以自动识别脂质滴和细胞核。我们通过检查覆盖有不同细胞区室荧光标记的拉曼光谱图像来验证我们的方法,表明特定成分确实可以在光谱图像中被识别为无标签。我们的共本地化软件的Matlab实现可从http://www.mathworks.de/matlabcentral/fileexchange/46608-frcoloc获得。

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