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Discriminating Variable Test and Selectivity Ratio Plot: Quantitative Tools for Interpretation and Variable (Biomarker) Selection in Complex Spectral or Chromatographic Profiles

机译:区分变量测试和选择性比率图:用于复杂光谱或色谱图中的解释和变量(生物标志物)选择的定量工具

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The discriminating variable (DIVA) test and the selectivity ratio (SR) plot are developed as quantitative tools for revealing the variables in spectral or chromatographic profiles discriminating best between two groups of samples. The SR plot is visually similar to a spectrum or a chromatogram, but with the most intense regions corresponding to the most discriminating variables. Thus, the variables with highest SR represent the variables most important for interpretation of differences between groups. Regions with variables that are positively or negatively correlated to each other are displayed as corresponding negative and positive regions in the SR plot. The nonparametric DIVA test is designed for connecting SR to discriminatory ability of a variable quantified as probability for correct classification. A mean probability for a certain SR range is calculated as the mean correct classification rate (MCCR) for all variables in the same SR interval. The MCCR is thus similar to a mean sensitivity in each SR interval. In addition to the ranking of all variables according to their discriminatory ability provided by the SR plot, the DIVA test connects a probability measure to each SR interval. Thus, the DIVA test makes it possible to objectively define thresholds corresponding to mean probability levels in the SR plot and provides a quantitative means to select discriminating variables. In order to validate the approach, samples of untreated cerebrospinal fluid (CSF) and samples spiked with a multicomponent peptide standard were analyzed by matrix-assisted laser desorption ionization (MALDI) mass spectrometry. The differences in the multivariate spectral profiles of the two groups were revealed using partial least-squares discriminant analysis (PLS-DA) followed by target projection (TP). The most discriminating mass-to-charge (m/z) regions were revealed by calculating the ratio of explained to unexplained variance for each m/z number on the target-projected component and displaying this measure in SR plots with quantitative boundaries determined from the DIVA test. The results are compared to some established methods for variable selection.
机译:区分变量(DIVA)测试和选择性比(SR)图被开发为定量工具,用于揭示光谱或色谱图中的变量,以最佳区分两组样品。 SR图在视觉上类似于质谱图或色谱图,但最强的区域对应于最具区分性的变量。因此,具有最高SR的变量表示对于解释组间差异最重要的变量。变量相互正相关或负相关的区域在SR图中显示为相应的负区域和正区域。非参数DIVA检验旨在将SR与量化为正确分类概率的变量的区分能力联系起来。将某个SR范围的平均概率计算为同一SR间隔中所有变量的平均正确分类率(MCCR)。因此,MCCR类似于每个SR间隔中的平均灵敏度。除了根据SR图提供的区分能力对所有变量进行排名之外,DIVA测试还将概率度量值连接到每个SR区间。因此,DIVA测试可以客观地定义与SR图中的平均概率水平相对应的阈值,并提供定量手段来选择区分变量。为了验证该方法,通过基质辅助激光解吸电离(MALDI)质谱分析未处理的脑脊液(CSF)样品和加有多组分肽标准品的样品。使用偏最小二乘判别分析(PLS-DA)和目标投影(TP)揭示了两组多元光谱图的差异。通过计算目标投影组件上每个m / z数的解释方差与无法解释的方差之比,并在SR图中显示该度量,并从中确定定量边界,可以揭示出最有区别的质荷(m / z)区域。 DIVA测试。将结果与一些确定的变量选择方法进行比较。

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