Bakalarski Corey E, Haas Wilhelm, Dephoure Noah E, Gygi Steven P
Department of Cell Biology, Harvard Medical School, Boston, MA 02115, USA.
Anal Bioanal Chem. 2007 Nov;389(5):1409-19. doi: 10.1007/s00216-007-1563-x. Epub 2007 Sep 14.
Proteomic analyses via tandem mass spectrometry have been greatly enhanced by the recent development of fast, highly accurate instrumentation. However, successful application of these developments to high-throughput experiments requires careful optimization of many variables which adversely affect each other, such as mass accuracy and data collection speed. We examined the performance of three shotgun-style acquisition methods ranging in their data collection speed and use of mass accuracy in identifying proteins from yeast-derived complex peptide and phosphopeptide-enriched mixtures. We find that the combination of highly accurate precursor masses generated from one survey scan in the FT-ICR cell, coupled with ten data-dependent tandem MS scans in a lower-resolution linear ion trap, provides more identifications in both mixtures than the other examined methods. For phosphopeptide identifications in particular, this method identified over twice as many unique phosphopeptides as the second-ranked, lower-resolution method from triplicate 90-min analyses (744 +/- 50 vs. 308 +/- 50, respectively). We also examined the performance of four popular peptide assignment algorithms (Mascot, Sequest, OMSSA, and Tandem) in analyzing the results from both high-and low-resolution data. When compared in the context of a false positive rate of approximately 1%, the performance differences between algorithms were much larger for phosphopeptide analyses than for an unenriched, complex mixture. Based upon these findings, acquisition speed, mass accuracy, and the choice of assignment algorithm all largely affect the number of peptides and proteins identified in high-throughput studies.
通过串联质谱进行的蛋白质组学分析,因近期快速、高精度仪器的发展而得到了极大提升。然而,要将这些进展成功应用于高通量实验,需要仔细优化许多相互影响的变量,如质量精度和数据采集速度。我们研究了三种鸟枪法采集方法的性能,这些方法在数据采集速度以及从酵母衍生的复杂肽和富含磷酸肽的混合物中鉴定蛋白质时对质量精度的使用上存在差异。我们发现,傅里叶变换离子回旋共振(FT-ICR)细胞中一次全扫描产生的高精度前体质量,与低分辨率线性离子阱中的十次数据依赖串联质谱扫描相结合,在两种混合物中比其他研究方法能鉴定出更多的蛋白质。特别是对于磷酸肽鉴定,在三次90分钟分析中,这种方法鉴定出的独特磷酸肽数量是排名第二的低分辨率方法的两倍多(分别为744±50和308±50)。我们还研究了四种流行的肽段匹配算法(Mascot、Sequest、OMSSA和Tandem)在分析高分辨率和低分辨率数据结果时的性能。在约1%的假阳性率背景下进行比较时,算法之间在磷酸肽分析中的性能差异比在未富集的复杂混合物分析中要大得多。基于这些发现,采集速度、质量精度和匹配算法的选择在很大程度上都会影响高通量研究中鉴定出的肽段和蛋白质数量。