Institute for Systems Biology, Seattle, WA 98109, USA.
Proteomics. 2012 Apr;12(8):1176-84. doi: 10.1002/pmic.201100571.
Selected reaction monitoring (SRM) is an accurate quantitative technique, typically used for small-molecule mass spectrometry (MS). SRM has emerged as an important technique for targeted and hypothesis-driven proteomic research, and is becoming the reference method for protein quantification in complex biological samples. SRM offers high selectivity, a lower limit of detection and improved reproducibility, compared to conventional shot-gun-based tandem MS (LC-MS/MS) methods. Unlike LC-MS/MS, which requires computationally intensive informatic postanalysis, SRM requires preacquisition bioinformatic analysis to determine proteotypic peptides and optimal transitions to uniquely identify and to accurately quantitate proteins of interest. Extensive arrays of bioinformatics software tools, both web-based and stand-alone, have been published to assist researchers to determine optimal peptides and transition sets. The transitions are oftentimes selected based on preferred precursor charge state, peptide molecular weight, hydrophobicity, fragmentation pattern at a given collision energy (CE), and instrumentation chosen. Validation of the selected transitions for each peptide is critical since peptide performance varies depending on the mass spectrometer used. In this review, we provide an overview of open source and commercial bioinformatic tools for analyzing LC-MS data acquired by SRM.
选择反应监测(SRM)是一种准确的定量技术,通常用于小分子质谱(MS)。SRM 已成为靶向和假设驱动的蛋白质组学研究的重要技术,并且正在成为复杂生物样品中蛋白质定量的参考方法。与传统的基于 shotgun 的串联 MS(LC-MS/MS)方法相比,SRM 具有更高的选择性、更低的检测限和更好的重现性。与需要计算密集型信息后分析的 LC-MS/MS 不同,SRM 需要在采集前进行生物信息学分析,以确定蛋白质的特征肽段和最佳跃迁,从而唯一识别和准确定量感兴趣的蛋白质。已经发布了大量基于网络和独立的生物信息学软件工具,以帮助研究人员确定最佳的肽段和跃迁集。跃迁通常基于首选的前体电荷状态、肽分子量、疏水性、在给定碰撞能量(CE)下的碎裂模式以及所选仪器进行选择。由于肽段的性能取决于所使用的质谱仪,因此对每个肽段的选定跃迁进行验证至关重要。在这篇综述中,我们提供了用于分析通过 SRM 获得的 LC-MS 数据的开源和商业生物信息学工具的概述。