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首页> 外文期刊>Proteomics >Trans-Proteomic Pipeline supports and improves analysis of electron transfer dissociation data sets
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Trans-Proteomic Pipeline supports and improves analysis of electron transfer dissociation data sets

机译:跨蛋白质组学管线支持并改进对电子转移解离数据集的分析

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Electron transfer dissociation (ETD) is an alternative fragmentation technique to CID that has recently become commercially available. ETD has several advantages over CID. It is less prone to fragmenting amino acid side chains, especially those that are modified, thus yielding fragment ion spectra with more uniform peak intensities. Further, precursor ions of longer peptides and higher charge states can be fragmented and identified. However, analysis of ETD spectra has a few important differences that require the optimization of the software packages used for the analysis of CID data or the development of specialized tools. We have adapted the Trans-Proteomic Pipeline to process ETD data. Specifically, we have added support for fragment ion spectra from high-charge precursors, compatibility with charge-state estimation algorithms, provisions for the use of the Lys-C protease, capabilities for ETD spectrum library building, and updates to the data formats to differentiate CID and ETD spectra. We show the results of processing data sets from several different types of ETD instruments and demonstrate that application of the ETD-enhanced Trans-Proteomic Pipeline can increase the number of spectrum identifications at a fixed false discovery rate by as much as 100% over native output from a single sequence search engine.
机译:电子转移解离(ETD)是CID的另一种碎裂技术,最近已商业化。与CID相比,ETD具有多个优势。它不太容易使氨基酸侧链断裂,尤其是那些被修饰的氨基酸侧链,从而产生具有更均匀峰强度的碎片离子光谱。此外,更长的肽和更高的电荷状态的前体离子可以被片段化和鉴定。但是,ETD光谱分析存在一些重要差异,需要优化用于CID数据分析或开发专用工具的软件包。我们已经改造了跨蛋白质组学管道来处理ETD数据。具体来说,我们增加了对高电荷前体碎片离子光谱的支持,与电荷状态估计算法的兼容性,使用Lys-C蛋白酶的规定,建立ETD光谱库的能力以及对数据格式进行更新以区分的支持CID和ETD光谱。我们展示了处理来自几种不同类型的ETD仪器的数据集的结果,并证明了ETD增强的跨蛋白质组学管线的应用可以以固定的错误发现率将光谱识别的数量增加超过原始输出的100%来自单个序列搜索引擎。

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