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Differentiation of Eight Phenotypes and Discovery of Potential Biomarkers for a Single Plant Organ Class Using Laser Electrospray Mass Spectrometry and Multivariate Statistical Analysis

机译:使用激光电喷雾质谱法和多元统计分析法对单个植物器官类别的八种表型进行区分并发现潜在的生物标记

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摘要

Laser electrospray mass spectrometry (LEMS) coupled with offline multivariate statistical analysis is used to discriminate eight phenotypes from a single plant organ class and to find potential biomarkers. Direct analysis of the molecules from the flower petal is enabled by interfacing intense (10~(13) W/cm~(2)), nonresonant, femtosecond laser vaporization at ambient pressure with electrospray ionization for postionization of the vaporized analytes. The observed mass spectral signatures allowed for the discrimination of various phenotypes using principal component analysis (PCA) and either linear discriminant analysis (LDA) or K-nearest neighbor (KNN) classifiers. Cross-validation was performed using multiple training sets to evaluate the predictive ability of the classifiers, which showed 93.7percent and 96.8percent overall accuracies for the LDA and KNN classifiers, respectively. Linear combinations of significant mass spectral features were extracted from the PCA loading plots, demonstrating the capability to discover potential biomarkers from the direct analysis of tissue samples.
机译:激光电喷雾质谱(LEMS)与离线多元统计分析相结合可用于从单个植物器官类别中区分出八种表型,并寻找潜在的生物标记。通过在环境压力下将强烈的(10〜(13)W / cm〜(2)),非共振,飞秒激光汽化与电喷雾电离相接口,可以对花瓣中的分子进行直接分析,从而使汽化的分析物发生电离。观察到的质谱特征可以使用主成分分析(PCA)和线性判别分析(LDA)或K近邻(KNN)分类器来区分各种表型。使用多个训练集进行交叉验证,以评估分类器的预测能力,该分类器分别显示LDA和KNN分类器的总体准确度为93.7%和96.8%。从PCA加载图中提取了具有重要质谱特征的线性组合,这表明了从组织样品的直接分析中发现潜在生物标志物的能力。

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