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WiPP: Workflow for Improved Peak Picking for Gas Chromatography-Mass Spectrometry (GC-MS) Data

机译:WiPP:改进气相色谱-质谱(GC-MS)数据峰提取的工作流程

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摘要

Lack of reliable peak detection impedes automated analysis of large-scale gas chromatography-mass spectrometry (GC-MS) metabolomics datasets. Performance and outcome of individual peak-picking algorithms can differ widely depending on both algorithmic approach and parameters, as well as data acquisition method. Therefore, comparing and contrasting between algorithms is difficult. Here we present a workflow for improved peak picking (WiPP), a parameter optimising, multi-algorithm peak detection for GC-MS metabolomics. WiPP evaluates the quality of detected peaks using a machine learning-based classification scheme based on seven peak classes. The quality information returned by the classifier for each individual peak is merged with results from different peak detection algorithms to create one final high-quality peak set for immediate down-stream analysis. Medium- and low-quality peaks are kept for further inspection. By applying WiPP to standard compound mixes and a complex biological dataset, we demonstrate that peak detection is improved through the novel way to assign peak quality, an automated parameter optimisation, and results in integration across different embedded peak picking algorithms. Furthermore, our approach can provide an impartial performance comparison of different peak picking algorithms. WiPP is freely available on GitHub () under MIT licence.
机译:缺乏可靠的峰检测阻碍了大型气相色谱-质谱(GC-MS)代谢组学数据集的自动分析。各个峰提取算法的性能和结果可能会因算法方法和参数以及数据采集方法而有很大差异。因此,很难在算法之间进行比较和对比。在这里,我们介绍了用于改进峰选择(WiPP),GC-MS代谢组学的参数优化,多算法峰检测的工作流程。 WiPP使用基于机器学习的分类方案(基于七个峰类别)来评估检测到的峰的质量。分类器针对每个单独峰返回的质量信息会与来自不同峰检测算法的结果合并,以创建一个最终的高质量峰集,以便立即进行下游分析。保留中低质量的峰以供进一步检查。通过将WiPP应用于标准化合物混合物和复杂的生物学数据集,我们证明了通过新颖的方法来分配峰质量,自动优化参数并改进了跨不同嵌入式峰选择算法的集成,从而改善了峰检测。此外,我们的方法可以提供不同峰选择算法的公正性能比较。在MIT许可下,WiPP可在GitHub()上免费获得。

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