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首页> 外文期刊>Analytical chemistry >Visualizing ToF-SIMS Hyperspectral Imaging Data Using Color-Tagged Toroidal Self-Organizing Maps
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Visualizing ToF-SIMS Hyperspectral Imaging Data Using Color-Tagged Toroidal Self-Organizing Maps

机译:使用颜色标记的环形自组织地图可视化TOF-SIMS高光谱成像数据

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摘要

Time-of-flight secondary ion mass spectrometry (ToF-SIMS) is a powerful surface characterization technique capable of producing high spatial resolution hyperspectral images, in which each pixel comprises an entire mass spectrum. Such images can provide insight into the chemical composition across a surface. However, issues arise due to the size and complexity of the data produced. Data are particularly complicated for biological samples, primarily due to overlapping spectra produced by similar components. The traditional approach of selecting individual ion peaks as representative of particular components is insufficient for such complex data sets. Multivariate analysis (MVA) can help to overcome this significant hurdle. We demonstrate that Kohonen self-organizing maps (SOMs) with a toroidal topology can be used to analyze a ToF-SIMS hyperspectral imaging data set and identify spectral similarities between pixels. We present a method for color-tagging the toroidal SOM output, which reduces the entire data set to a single RGB image in which similar pixels-based on their associated mass spectra-are assigned a similar color. This method was exemplified using a ToF-SIMS image of dried large multilamellar vesicles (LMVs), loaded with the antibiotic cefditoren pivoxil (CP). We successfully identified CP-loaded and empty LMVs without the need for any prior knowledge of the sample, despite their highly similar spectra. We also identified which specific ion peaks were most important in differentiating the two LMV populations. This approach is entirely unsupervised and requires minimal experimenter input. It was developed with the aim of providing a user-friendly yet sophisticated workflow for understanding complex biological samples using ToF-SIMS images.
机译:飞行时间二次离子质谱(TOF-SIMS)是一种强大的表面表征技术,能够产生高空间分辨率高光谱图像,其中每个像素包括整个质谱。这种图像可以在表面上提供对化学成分的洞察。但是,由于所产生的数据的大小和复杂性而出现问题。数据对于生物样品特别复杂,主要是由于通过类似组分产生的重叠光谱。选择各个离子峰作为特定组件代表的传统方法对于这种复杂数据集不足。多变量分析(MVA)可以帮助克服这一重要障碍。我们证明,具有环形拓扑的Kohonen自组织地图(SOM)可用于分析TOF-SIMS高光谱成像数据集并识别像素之间的光谱相似性。我们介绍了一种用于颜色标记的方法,用于将环形峰值输出输出,这将整个数据设置为单个RGB图像,其中基于其相关的质谱 - 被分配了类似的颜色。使用加载与抗生素Cefditoren Pivoxil(CP)的干燥大型多层囊泡(LMV)的TOF-SIMS图像举例说明该方法。尽管它们高度相似,但我们成功地确定了CP加载和空的LMV,而无需任何先前的样本知识。我们还识别出哪种特定的离子峰在区分两种LMV群体方面最重要。这种方法完全无监督,需要最少的实验者输入。它的目的是提供用户友好但精致的工作流程,用于使用TOF-SIMS图像了解复杂的生物样本。

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