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首页> 外文期刊>European journal of mass spectrometry >Exploratory data fusion of untargeted multimodal LC-HRMS with annotation by LCMS-TOF-ion mobility: White wine case study
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Exploratory data fusion of untargeted multimodal LC-HRMS with annotation by LCMS-TOF-ion mobility: White wine case study

机译:非靶向多模态LC-HRMS与LCMS-TOF离子淌度注释的探索性数据融合:白葡萄酒案例研究

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摘要

Applied sciences have increased focus on omics studies which merge data science with analytical tools. These studies often result in large amounts of data produced and the objective is to generate meaningful interpretations from them. This can sometimes mean combining and integrating different datasets through data fusion techniques. The most strategic course of action when dealing with products of unknown profile is to use exploratory approaches. For omics, this means using untargeted analytical methods and exploratory data analysis techniques. The current study aimed to perform data fusion on untargeted multimodal (negative and positive mode) liquid chromatography-high-resolution mass spectrometry data using multiple factor analysis. The data fusion results were interpreted using agglomerative hierarchical clustering on biplot projections. The study reduced the thousands of spectral signals processed to less than a hundred features (a primary parameter combination of retention time and mass-to-charge ratios, RT_m/z). The correlations between cluster members (samples and features from) were calculated and the top 10 highly correlated features were identified for each cluster. These features were then tentatively identified using secondary parameters (drift time, ion mobility constant and collision cross-section values) from the ion mobility spectra. These ion mobility (secondary) parameters can be used for future studies in wine chemical analysis and added to the growing list of annotated chemical signals in applied sciences.
机译:应用科学越来越关注将数据科学与分析工具相结合的组学研究。这些研究通常会产生大量数据,目的是从中产生有意义的解释。这有时可能意味着通过数据融合技术组合和集成不同的数据集。在处理未知产品时,最具战略性的行动方案是使用探索性方法。对于组学来说,这意味着使用非靶向分析方法和探索性数据分析技术。本研究旨在利用多因素分析对非靶向多模态(阴性和阳性模式)液相色谱-高分辨率质谱数据进行数据融合。使用基于双图投影的集聚分层聚类来解释数据融合结果。该研究将处理的数千个频谱信号减少到不到一百个特征(保留时间和质荷比的主要参数组合,RT_m/z)。计算聚类成员(样本和特征)之间的相关性,并确定每个聚类的前 10% 高度相关的特征。然后使用离子淌度谱图中的次要参数(漂移时间、离子淌度常数和碰撞截面值)初步鉴定这些特征。这些离子淌度(二次)参数可用于葡萄酒化学分析的未来研究,并添加到应用科学中越来越多的注释化学信号列表中。

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