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Improved Label-Free LC-MS Analysis by Wavelet-Based Noise Rejection

机译:通过基于小波的噪声抑制改进了无标签LC-MS分析

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摘要

Label-free LC-MS analysis allows determining the differential expression level of proteins in multiple samples, without the use of stable isotopes. This technique is based on the direct comparison of multiple runs, obtained by continuous detection in MS mode. Only differentially expressed peptides are selected for further fragmentation, thus avoiding the bias toward abundant peptides typical of data-dependent tandem MS. The computational framework includes detection, alignment, normalization and matching of peaks across multiple sets, and several software packages are available to address these processing steps. Yet, more care should be taken to improve the quality of the LC-MS maps entering the pipeline, as this parameter severely affects the results of all downstream analyses. In this paper we show how the inclusion of a preprocessing step of background subtraction in a common laboratory pipeline can lead to an enhanced inclusion list of peptides selected for fragmentation and consequently to better protein identification.
机译:无标记LC-MS分析无需使用稳定同位素即可确定多个样品中蛋白质的差异表达水平。该技术基于通过MS模式下的连续检测获得的多次运行的直接比较。仅选择差异表达的肽进行进一步的片段化,从而避免偏向于数据依赖的串联质谱所特有的丰富肽。计算框架包括跨多个集合的峰的检测,对齐,归一化和匹配,并且有几个软件包可用于解决这些处理步骤。但是,应格外小心,以提高进入管道的LC-MS谱图的质量,因为该参数会严重影响所有下游分析的结果。在本文中,我们展示了如何在常规实验室管线中包括背景扣除的预处理步骤,从而如何增强选择用于片段化的肽的包含列表,从而更好地进行蛋白质鉴定。

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