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Development of a Comprehensive Flavonoid Analysis Computational Tool for Ultrahigh-Performance Liquid Chromatography-Diode Array Detection-High-Resolution Accurate Mass-Mass Spectrometry Data

机译:开发综合性黄酮分析计算工具,用于超高性能液相色谱 - 二极管阵列检测 - 高分辨率精确质量光谱数据

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摘要

Liquid chromatography and mass spectrometry methods, especially ultrahigh-performance liquid chromatography coupled with diode array detection and high-resolution accurate-mass multistage mass spectrometry (UHPLC-DAD-HRAM/MSn), have become the tool-of-the-trade for profiling flavonoids in foods. However, manually processing acquired UHPLC-DAD-HRAM/MSn data for flavonoid analysis is very challenging and highly expertise-dependent due to the complexities of the chemical structures of the flavonoids and the food matrixes. A computational expert data analysis program, FlavonQ-2.0v, has been developed to facilitate this process. The program first uses UV-vis spectra for an initial stepwise classification of flavonoids into classes and then identifies individual flavonoids in each class based on their mass spectra. Step-wise identification of flavonoid classes is based on a UV-vis spectral library compiled from 146 flavonoid reference standards and a novel chemometric model that uses stepwise strategy and projected distance resolution (PDR) method. Further identification of the flavonoids in each class is based on an in-house database that contains 5686 flavonoids analyzed in-house or previously reported in the literature. Quantitation is based on the UV-vis spectra. The stepwise classification strategy to identify classes significantly improved the performance of the program and resulted in more accurate and reliable classification results. The program was validated by analyzing data from a variety of samples, including mixed flavonoid standards, blueberry, mizuna, purple mustard, red cabbage, and red mustard green. Accuracies of identification for all samples were above 88%. FlavonQ-2.0v greatly facilitates the identification and quantitation of flavonoids from UHPLC-HRAM-MSn data. It saves time and resources and allows less experienced people to analyze the data.
机译:液相色谱和质谱法,尤其是超高性能液相色谱,耦合二极管阵列检测和高分辨率精确质量多级质谱(UHPLC-DAD-HRAM / MSN),已成为剖析的工具食品中的黄酮类化合物。然而,由于类黄酮类化合物和食物基质的化学结构的复杂性,手动处理的FlaVOnoid分析的UHPLC-DAD-HRAM / MSN数据非常具有挑战性和高度专业知识。已经开发了一种计算专家数据分析程序FlavOnq-2.0V以促进此过程。该程序首先使用UV-Vis光谱用于初始逐步分类的黄酮类化合物进入类别,然后基于其质量光谱识别每个阶级中的个体类黄酮。逐步鉴定类黄酮类别基于UV-Vis光谱库,由146种异样参考标准和新的化学计量模型,使用逐步策略和投影距离分辨率(PDR)方法。进一步鉴定每种类中的类黄酮基于内部数据库,含有5686种黄酮类化合物在内部分析或先前在文献中报告。定量基于UV-Vis光谱。逐步分类策略识别课程显着提高了该计划的性能,并导致了更准确和可靠的分类结果。通过分析来自各种样品的数据,包括混合的黄酮类标准,蓝莓,mizuna,紫色芥末,红甘蓝和红色芥末绿色。所有样品的鉴定的准确性高于88%。 FlaVOnq-2.0V大大促进了来自UHPLC-HRAM-MSN数据的类黄酮的鉴定和定量。它节省了时间和资源,并允许经验丰富的人分析数据。

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  • 来源
    《Analytical chemistry》 |2017年第14期|共10页
  • 作者单位

    ARS Food Composit &

    Methods Dev Lab Beltsville Human Nutr Res Ctr USDA Beltsville MD 20705 USA;

    ARS Food Composit &

    Methods Dev Lab Beltsville Human Nutr Res Ctr USDA Beltsville MD 20705 USA;

    ARS Food Composit &

    Methods Dev Lab Beltsville Human Nutr Res Ctr USDA Beltsville MD 20705 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分析化学;
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