光谱分束作为一种高分辨率fe - ms代谢组指纹数据采集后处理方法。

Jasen P Finch, Thomas Wilson, Laura Lyons, Helen Phillips, Manfred Beckmann, John Draper
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引用次数: 0

摘要

简介:流动输注电喷雾高分辨率质谱(FIE-HRMS)指纹识别产生复杂的高维数据集,需要专业的计算机软件工具在分析之前处理数据。目的:提出光谱分割作为一种实用的方法,在采集后处理5 - hrms代谢组指纹数据。方法:开发了一种光谱分形方法,包括消除单扫描m/z事件,光谱分形和整个输液剖面的光谱平均。然后提取每个bin的模态精度m/z。该方法使用四种不同的生物基质和31种已知化学标准的混合物进行了评估,这些标准由5 - hrms使用Exactive Orbitrap分析。制定了Bin纯度和中心性指标,分别客观评估准确m/z在单个Bin中的分布和位置。结果:最佳光谱分束宽度为0.01 μ m。与化学标准混合物的预测电离产物相匹配的提取精确m/z的80.8%被发现误差低于3ppm。开源R包binneR是作为该方法的用户友好实现而开发的。它能够使用4个中央处理单元(CPU)在55秒内处理100个数据文件,最大内存使用量为1.36 GB。结论:光谱分束是一种快速、鲁棒的5 - hrms数据采集后处理方法。开源R包binneR允许用户使用标准台式计算机上可用的资源有效地处理来自5 - hrms实验的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Spectral binning as an approach to post-acquisition processing of high resolution FIE-MS metabolome fingerprinting data.

Spectral binning as an approach to post-acquisition processing of high resolution FIE-MS metabolome fingerprinting data.

Spectral binning as an approach to post-acquisition processing of high resolution FIE-MS metabolome fingerprinting data.

Spectral binning as an approach to post-acquisition processing of high resolution FIE-MS metabolome fingerprinting data.

Introduction: Flow infusion electrospray high resolution mass spectrometry (FIE-HRMS) fingerprinting produces complex, high dimensional data sets which require specialist in-silico software tools to process the data prior to analysis.

Objectives: Present spectral binning as a pragmatic approach to post-acquisition procession of FIE-HRMS metabolome fingerprinting data.

Methods: A spectral binning approach was developed that included the elimination of single scan m/z events, the binning of spectra and the averaging of spectra across the infusion profile. The modal accurate m/z was then extracted for each bin. This approach was assessed using four different biological matrices and a mix of 31 known chemical standards analysed by FIE-HRMS using an Exactive Orbitrap. Bin purity and centrality metrics were developed to objectively assess the distribution and position of accurate m/z within an individual bin respectively.

Results: The optimal spectral binning width was found to be 0.01 amu. 80.8% of the extracted accurate m/z matched to predicted ionisation products of the chemical standards mix were found to have an error of below 3 ppm. The open-source R package binneR was developed as a user friendly implementation of the approach. This was able to process 100 data files using 4 Central Processing Units (CPU) workers in only 55 seconds with a maximum memory usage of 1.36 GB.

Conclusion: Spectral binning is a fast and robust method for the post-acquisition processing of FIE-HRMS data. The open-source R package binneR allows users to efficiently process data from FIE-HRMS experiments with the resources available on a standard desktop computer.

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