Department of Laboratory Medicine and Pathology, Mayo Clinic, Rochester, Minnesota 55905, United States.
Center for Individualized Medicine, Mayo Clinic, Rochester, Minnesota 55905, United States.
Anal Chem. 2020 Nov 3;92(21):14466-14475. doi: 10.1021/acs.analchem.0c02513. Epub 2020 Oct 20.
A data-independent acquisition (DIA) approach is being increasingly adopted as a promising strategy for identification and quantitation of proteomes. As most DIA data sets are acquired with wide isolation windows, highly complex MS/MS spectra are generated, which negatively impacts obtaining peptide information through classical protein database searches. Therefore, the analysis of DIA data mainly relies on the evidence of the existence of peptides from prebuilt spectral libraries. Consequently, one major weakness of this method is that it does not account for peptides that are not included in the spectral library, precluding the use of DIA for discovery studies. Here, we present a strategy termed Precursor ion And Small Slice-DIA (PASS-DIA) in which MS/MS spectra are acquired with small isolation windows (slices) and MS/MS spectra are interpreted with accurately determined precursor ion masses. This method enables the direct application of conventional spectrum-centric analysis pipelines for peptide identification and precursor ion-based quantitation. The performance of PASS-DIA was observed to be superior to both data-dependent acquisition (DDA) and conventional DIA experiments with 69 and 48% additional protein identifications, respectively. Application of PASS-DIA for the analysis of post-translationally modified peptides again highlighted its superior performance in characterizing phosphopeptides (77% more), N-terminal acetylated peptides (56% more), and N-glycopeptides (83% more) as compared to DDA alone. Finally, the use of PASS-DIA to characterize a rare proteome of human fallopian tube organoids enabled 34% additional protein identifications than DDA alone and revealed biologically relevant pathways including low abundance proteins. Overall, PASS-DIA is a novel DIA approach for use as a discovery tool that outperforms both conventional DDA and DIA experiments to provide additional protein information. We believe that the PASS-DIA method is an important strategy for discovery-type studies when deeper proteome characterization is required.
一种数据非依赖采集(DIA)方法正逐渐被采用,作为一种鉴定和定量蛋白质组的有前途的策略。由于大多数 DIA 数据集都是在宽的隔离窗口下采集的,因此会产生高度复杂的 MS/MS 谱,这对通过经典的蛋白质数据库搜索获取肽信息产生负面影响。因此,DIA 数据的分析主要依赖于预先构建的光谱库中存在肽的证据。因此,该方法的一个主要弱点是,它不考虑不在光谱库中的肽,从而排除了 DIA 用于发现研究的可能性。在这里,我们提出了一种称为前体离子和小切片 DIA(PASS-DIA)的策略,其中 MS/MS 谱是在小的隔离窗口(切片)下采集的,并且 MS/MS 谱是通过准确确定的前体离子质量来解释的。这种方法使得能够直接应用传统的基于谱图的分析流程进行肽鉴定和基于前体离子的定量。PASS-DIA 的性能被观察到优于数据依赖采集(DDA)和常规 DIA 实验,分别有 69%和 48%的额外蛋白质鉴定。将 PASS-DIA 应用于翻译后修饰肽的分析再次突出了其在鉴定磷酸肽(增加 77%)、N-端乙酰化肽(增加 56%)和 N-糖肽(增加 83%)方面的优越性能,与单独的 DDA 相比。最后,使用 PASS-DIA 对人类输卵管类器官的稀有蛋白质组进行特征分析,比单独的 DDA 多鉴定了 34%的蛋白质,并且揭示了包括低丰度蛋白在内的生物学相关途径。总的来说,PASS-DIA 是一种新的 DIA 方法,可用作发现工具,比常规的 DDA 和 DIA 实验表现更好,提供额外的蛋白质信息。我们相信,当需要更深入的蛋白质组特征描述时,PASS-DIA 方法是一种用于发现型研究的重要策略。