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Nearline acquisition and processing of liquid chromatography-tandem mass spectrometry data

机译:液相色谱-串联质谱数据的近线采集和处理

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摘要

Liquid chromatography–mass spectrometry (LC–MS) is a commonly used analytical platform for non-targeted metabolite profiling experiments. Although data acquisition, processing and statistical analyses are almost routine in such experiments, further annotation and subsequent identification of chemical compounds are not. For identification, tandem mass spectra provide valuable information towards the structure of chemical compounds. These are typically acquired online, in data-dependent mode, or offline, using handcrafted acquisition methods and manually extracted from raw data. Here, we present several methods to fast-track and improve both the acquisition and processing of LC–MS/MS data. Our nearly online (nearline) data-dependent tandem MS strategy creates a minimal set of LC–MS/MS acquisition methods for relevant features revealed by a preceding non-targeted profiling experiment. Using different filtering criteria, such as intensity or ion type, the acquisition of irrelevant spectra is minimized. Afterwards, LC–MS/MS raw data are processed with feature detection and grouping algorithms. The extracted tandem mass spectra can be used for both library search and de-novo identification methods. The algorithms are implemented in the R package MetShot and support the export to Bruker, Agilent or Waters QTOF instruments and the vendor-independent TraML standard. We evaluate the performance of our workflow on a Bruker micrOTOF-Q by comparison of automatically acquired and extracted tandem mass spectra obtained from a mixture of natural product standards against manually extracted reference spectra. Using Arabidopsis thaliana wild-type and biosynthetic gene knockout plants, we characterize the metabolic products of a biosynthetic pathway and demonstrate the integration of our approach into a typical non-targeted metabolite profiling workflow.
机译:液相色谱-质谱法(LC-MS)是非目标代谢物谱分析实验的常用分析平台。尽管在此类实验中数据采集,处理和统计分析几乎是常规的,但对化合物的进一步注释和随后的鉴定却并非如此。为了鉴定,串联质谱为化合物的结构提供了有价值的信息。这些通常使用手工获取方法在线获取,以数据依赖模式或离线获取,并从原始数据中手动提取。在这里,我们介绍了几种快速跟踪和改善LC-MS / MS数据采集和处理的方法。我们几乎在线(近线)数据相关的串联MS策略为先前的非目标分析实验所揭示的相关功能创建了一套最小的LC-MS / MS采集方法。使用不同的过滤标准(例如强度或离子类型),最小化无关光谱的采集。然后,使用特征检测和分组算法处理LC-MS / MS原始数据。提取的串联质谱可用于谱库搜索和新型鉴定方法。该算法在R包MetShot中实现,并支持导出到Bruker,Agilent或Waters QTOF仪器以及与供应商无关的TraML标准。我们通过比较从天然产物标准品混合物中获得的自动采集和提取的串联质谱图与手动提取的参考质谱图,来评估我们在Bruker micrOTOF-Q上的工作流程性能。使用拟南芥野生型和生物合成基因敲除植物,我们表征了生物合成途径的代谢产物,并证明了我们的方法集成到典型的非目标代谢物分析工作流程中。

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