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PyQuant: A Versatile Framework for Analysis of Quantitative Mass Spectrometry Data

机译:PyQuant:用于定量质谱数据分析的多功能框架

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摘要

Quantitative mass spectrometry data necessitates an analytical pipeline that captures the accuracy and comprehensiveness of the experiments. Currently, data analysis is often coupled to specific software packages, which restricts the analysis to a given workflow and precludes a more thorough characterization of the data by other complementary tools. To address this, we have developed PyQuant, a cross-platform mass spectrometry data quantification application that is compatible with existing frameworks and can be used as a stand-alone quantification tool. PyQuant supports most types of quantitative mass spectrometry data including SILAC, NeuCode, 15N, 13C, or 18O and chemical methods such as iTRAQ or TMT and provides the option of adding custom labeling strategies. In addition, PyQuant can perform specialized analyses such as quantifying isotopically labeled samples where the label has been metabolized into other amino acids and targeted quantification of selected ions independent of spectral assignment. PyQuant is capable of quantifying search results from popular proteomic frameworks such as MaxQuant, Proteome Discoverer, and the Trans-Proteomic Pipeline in addition to several standalone search engines. We have found that PyQuant routinely quantifies a greater proportion of spectral assignments, with increases ranging from 25–45% in this study. Finally, PyQuant is capable of complementing spectral assignments between replicates to quantify ions missed because of lack of MS/MS fragmentation or that were omitted because of issues such as spectra quality or false discovery rates. This results in an increase of biologically useful data available for interpretation. In summary, PyQuant is a flexible mass spectrometry data quantification platform that is capable of interfacing with a variety of existing formats and is highly customizable, which permits easy configuration for custom analysis.
机译:定量质谱数据需要分析流水线,以捕获实验的准确性和全面性。当前,数据分析通常与特定的软件包耦合,这将分析限制在给定的工作流程中,并且无法通过其他辅助工具对数据进行更彻底的表征。为了解决这个问题,我们开发了PyQuant,这是一种跨平台的质谱数据定量应用程序,与现有框架兼容,可以用作独立的定量工具。 PyQuant支持大多数类型的定量质谱数据,包括SILAC,NeuCode, 15 N, 13 C或 18 O以及化学方法,例如iTRAQ或TMT,并提供添加自定义标签策略的选项。此外,PyQuant可以执行专门的分析,例如定量同位素标记的样品(其中标记已被代谢为其他氨基酸)以及对选定离子的靶向定量,而与光谱分配无关。除了几个独立的搜索引擎之外,PyQuant还能够量化流行蛋白质组框架(例如MaxQuant,Proteome Discoverer和Trans-Proteomic Pipeline)的搜索结果。我们已经发现,PyQuant可以常规地量化更大比例的光谱分配,在本研究中,其分布范围为25%至45%。最后,PyQuant能够补充重复之间的光谱分配,以量化由于缺少MS / MS碎片而遗漏的离子,或者由于诸如光谱质量或错误发现率等问题而遗漏的离子。这导致可用于解释的生物学上有用的数据增加。总而言之,PyQuant是一种灵活的质谱数据定量平台,能够与多种现有格式进行接口并且高度可定制,从而可以轻松配置以进行定制分析。

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