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Extraction of pure components from overlapped signals in gas chromatography-mass spectrometry (GC-MS)

机译:气相色谱-质谱法(GC-MS)从重叠信号中提取纯组分

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摘要

Gas chromatography-mass spectrometry (GC-MS) is a widely used analytical technique for the identification and quantification of trace chemicals in complex mixtures. When complex samples are analyzed by GC-MS it is common to observe co-elution of two or more components, resulting in an overlap of signal peaks observed in the total ion chromatogram. In such situations manual signal analysis is often the most reliable means for the extraction of pure component signals; however, a systematic manual analysis over a number of samples is both tedious and prone to error. In the past 30 years a number of computational approaches were proposed to assist in the process of the extraction of pure signals from co-eluting GC-MS components. This includes empirical methods, comparison with library spectra, eigenvalue analysis, regression and others. However, to date no approach has been recognized as best, nor accepted as standard. This situation hampers general GC-MS capabilities, and in particular has implications for the development of robust, high-throughput GC-MS analytical protocols required in metabolic profiling and biomarker discovery. Here we first discuss the nature of GC-MS data, and then review some of the approaches proposed for the extraction of pure signals from co-eluting components. We summarize and classify different approaches to this problem, and examine why so many approaches proposed in the past have failed to live up to their full promise. Finally, we give some thoughts on the future developments in this field, and suggest that the progress in general computing capabilities attained in the past two decades has opened new horizons for tackling this important problem.
机译:气相色谱-质谱(GC-MS)是一种用于鉴定和定量复杂混合物中痕量化学物质的分析技术。通过GC-MS分析复杂样品时,通常会观察到两种或多种组分的共洗脱,导致总离子色谱图中观察到的信号峰重叠。在这种情况下,手动信号分析通常是提取纯分量信号的最可靠方法。但是,对大量样本进行系统的人工分析既繁琐又容易出错。在过去的30年中,提出了许多计算方法来协助从共洗脱的GC-MS组分中提取纯信号。这包括经验方法,与库谱的比较,特征值分析,回归等。但是,迄今为止,尚未有任何方法被认为是最好的方法,也不是标准方法。这种情况会影响一般的GC-MS功能,特别是对于代谢谱分析和生物标记物发现所需的强大,高通量GC-MS分析规程的开发具有影响。在这里,我们首先讨论GC-MS数据的性质,然后回顾一些提出的从共洗脱组分中提取纯信号的方法。我们总结和分类解决此问题的不同方法,并检查为什么过去提出的这么多方法未能实现其全部承诺。最后,我们对这一领域的未来发展进行了一些思考,并提出过去二十年来通用计算能力的进步为解决这一重要问题开辟了新的视野。

著录项

  • 期刊名称 BioData Mining
  • 作者

    Vladimir A Likić;

  • 作者单位
  • 年(卷),期 2009(2),-1
  • 年度 2009
  • 页码 6
  • 总页数 11
  • 原文格式 PDF
  • 正文语种
  • 中图分类 生物学;
  • 关键词

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