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Principal component analysis of TOF-SIMS images of organic monolayers

机译:有机单层TOF-SIMS图像的主成分分析

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Principal component analysis (PCA) is a statistical method used to find combinations of variables or factors that describe the most important trends in the data. PCA has been combined with time-of-flight secondary ion mass spectrometry (TOF-SIMS) data to extract new information and find relations between species contained in complex systems. Monolayers of dipalmitoylphosphatidylcholine alone and mixed with palmitoyloleoylphosphatidylglycerol prepared using the Langmuir- Blodgett technique are discussed. PCA software provides image scores and corresponding loadings for each significant principal component. Image plots of the scores show the spatial distribution and intensity of the species defined by the loading plots (mass spectral features). The intensity and resolution of the image scores can result in substantial improvement over that of the regular TOF-SIMS images especially when static conditions are used for small analysis areas. Also, some of the effects of topography and matrix in the images can be removed, allowing for a better presentation of chemical variations. [References: 14]
机译:主成分分析(PCA)是一种统计方法,用于查找描述数据中最重要趋势的变量或因素的组合。 PCA已与飞行时间二次离子质谱(TOF-SIMS)数据相结合,以提取新信息并查找复杂系统中所含物种之间的关系。讨论了单独的二棕榈酰磷脂酰胆碱单层和与使用Langmuir-Blodgett技术制备的棕榈酰油酰磷脂酰甘油的单层混合。 PCA软件为每个重要的主要成分提供图像评分和相应的负载。分数的图像图显示了由加载图定义的物种的空间分布和强度(质谱特征)。图像分数的强度和分辨率可以比常规的TOF-SIMS图像带来显着改善,尤其是当静态条件用于较小的分析区域时。同样,可以消除图像中形貌和基体的某些影响,从而更好地呈现化学变化。 [参考:14]

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