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首页> 外文期刊>Canadian Journal of Chemistry >Implications of measurement error structure on the visualization of multivariate chemical data: hazards and alternatives
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Implications of measurement error structure on the visualization of multivariate chemical data: hazards and alternatives

机译:测量误差结构对多变量化学数据可视化的影响:危险与替代品

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摘要

The analysis of multivariate chemical data is commonplace in fields ranging from metabolomics to forensic classification. Many of these studies rely on exploratory visualization methods that represent the multidimensional data in spaces of lower dimensionality, such as hierarchical cluster analysis (HCA) or principal components analysis (PCA). However, such methods rely on assumptions of independent measurement errors with uniform variance and can fail to reveal important information when these assumptions are violated, as they often are for chemical data. This work demonstrates how two alternative methods, maximum likelihood principal components analysis (MLPCA) and projection pursuit analysis (PPA), can reveal chemical information hidden from more traditional techniques. Experimental data to compare different methods consists of near-infrared (NIR) reflectance spectra from 108 samples of wood that are derived from four different species of Brazilian trees. The measurement error characteristics of the spectra are examined and it is shown that, by incorporating measurement error information into the data analysis (through MLPCA) or using alternative projection criteria (i.e., PPA), samples can be separated by species. These techniques are proposed as powerful tools for multivariate data analysis in chemistry.
机译:多变量化学数据分析是在代谢组织到法医分类的田野中的常见。这些研究中的许多研究依赖于探索性可视化方法,该方法代表较低维度的空间中的多维数据,例如分层集群分析(HCA)或主成分分析(PCA)。然而,这种方法依赖于具有均匀方差的独立测量误差的假设,并且当这些假设违反这些假设时,可能无法揭示重要信息,因为它们通常是化学数据。这项工作展示了如何替代方法,最大似然主成分分析(MLPCA)和投影追踪分析(PPA),可以揭示隐藏更多传统技术的化学信息。比较不同方法的实验数据包括近红外(NIR)反射光谱,从108种木材样品中衍生自四种不同的巴西树木。检查光谱的测量误差特性,并示出了通过将测量误差信息结合到数据分析(通过MLPCA)或使用替代投影标准(即,PPA),可以通过物种分离样品。这些技术被提出为化学中的多变量数据分析的强大工具。

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