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A Framework for Intelligent Data Acquisition and Real-Time Database Searching for Shotgun Proteomics

机译:Shot弹枪蛋白质组学的智能数据采集和实时数据库搜索框架

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摘要

In the analysis of complex peptide mixtures by MS-based proteomics, many more peptides elute at any given time than can be identified and quantified by the mass spectrometer. This makes it desirable to optimally allocate peptide sequencing and narrow mass range quantification events. In computer science, intelligent agents are frequently used to make autonomous decisions in complex environments. Here we develop and describe a framework for intelligent data acquisition and real-time database searching and showcase selected examples. The intelligent agent is implemented in the MaxQuant computational proteomics environment, termed MaxQuant Real-Time. It analyzes data as it is acquired on the mass spectrometer, constructs isotope patterns and SILAC pair information as well as controls MS and tandem MS events based on real-time and prior MS data or external knowledge. Re-implementing a top10 method in the intelligent agent yields similar performance to the data dependent methods running on the mass spectrometer itself. We demonstrate the capabilities of MaxQuant Real-Time by creating a real-time search engine capable of identifying peptides “on-the-fly” within 30 ms, well within the time constraints of a shotgun fragmentation “topN” method. The agent can focus sequencing events onto peptides of specific interest, such as those originating from a specific gene ontology (GO) term, or peptides that are likely modified versions of already identified peptides. Finally, we demonstrate enhanced quantification of SILAC pairs whose ratios were poorly defined in survey spectra. MaxQuant Real-Time is flexible and can be applied to a large number of scenarios that would benefit from intelligent, directed data acquisition. Our framework should be especially useful for new instrument types, such as the quadrupole-Orbitrap, that are currently becoming available.
机译:在基于MS的蛋白质组学分析复杂的肽混合物时,在任何给定的时间洗脱的肽比质谱仪所鉴定和定量的肽要多。这使得理想的是最佳地分配肽测序和窄的质量范围定量事件。在计算机科学中,智能代理经常用于在复杂环境中做出自主决策。在这里,我们开发并描述了用于智能数据采集和实时数据库搜索的框架,并展示了选定的示例。智能代理在称为MaxQuant Real-Time的MaxQuant计算蛋白质组学环境中实现。它可以分析在质谱仪上采集的数据,构建同位素模式和SILAC对信息,并基于实时和先前的MS数据或外部知识来控制MS和串联MS事件。在智能代理中重新实现top10方法可获得与在质谱仪本身上运行的依赖数据的方法相似的性能。我们通过创建一个实时搜索引擎来演示MaxQuant Real-Time的功能,该引擎能够在30 ms内“即时”识别肽段,并且在a弹枪片段化“ topN”方法的时间限制内。该试剂可以将测序事件集中在特定感兴趣的肽上,例如那些源自特定基因本体论(GO)术语的肽,或可能是已鉴定肽的修饰版本的肽。最后,我们证明了SILAC对的定量增强,其比率在调查光谱中定义不佳。 MaxQuant Real-Time具有灵活性,可以应用于从智能定向数据采集中受益的大量场景。对于当前可用的新仪器类型,例如四极Orbitrap,我们的框架应该特别有用。

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