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Compound Identification in Comprehensive Gas Chromatography--Mass Spectrometry-Based Metabolomics by Blind Source Separation

机译:通过盲源分离综合气相色谱 - 质谱基代代谢物中的复合鉴定

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Comprehensive gas chromatography - mass spectromety (GCxGC-MS) has become a promising tool in metabolomics. However, algorithms for GCxGC-MS data processing are needed in order to automatically process the data and extract the most pure information about the compounds appearing in the complex biological samples. This study shows the capability of orthogonal signal deconvolution (OSD), a novel algorithm based on blind source separation, to extract the spectra of the compounds appearing in GCxGC-MS samples. Results include a comparison between OSD and multivariate curve resolution - alternating least squares (MCRALS) with the extraction of metabolites spectra in a human serum sample analyzed through GCxGC-MS. This study concludes that OSD is a promising alternative for GCxGC-MS data processing.
机译:综合气相色谱 - 质谱(GCXGC-MS)已成为代谢组科的有前途的工具。然而,需要用于GCXGC-MS数据处理的算法,以便自动处理数据并提取有关在复杂生物样品中出现的化合物的最纯粹的信息。本研究表明正交信号折耦合(OSD),基于盲源分离的新算法,提取出现在GCXGC-MS样品中的化合物的光谱。结果包括OSD和多变量曲线分辨率 - 交替的最小二乘(Currals)在通过GCXGC-MS分析的人血清样品中提取代谢物光谱的萃取。本研究得出结论,OSD是GCXGC-MS数据处理的有希望的替代方案。

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