School of Life Science and Technology , ShanghaiTech University , 393 Middle Huaxia Road , Shanghai 201210 , China.
BGI-Shenzhen , Beishan Industrial Zone 11th building , Yantian District, Shenzhen , Guangdong 518083 , China.
J Proteome Res. 2019 Jan 4;18(1):461-468. doi: 10.1021/acs.jproteome.8b00769. Epub 2018 Nov 26.
Quantitative proteomics has been extensively applied in the screening of differentially regulated proteins in various research areas for decades, but its sensitivity and accuracy have been a bottleneck for many applications. Every step in the proteomics workflow can potentially affect the quantification of low-abundance proteins, but a systematic evaluation of their effects has not been done yet. In this work, to improve the sensitivity and accuracy of label-free quantification and tandem mass tags (TMT) labeling in quantifying low-abundance proteins, multiparameter optimization was carried out using a complex 2-proteome artificial sample mixture for a series of steps from sample preparation to data analysis, including the desalting of peptides, peptide injection amount for LC-MS/MS, MS1 resolution, the length of LC-MS/MS gradient, AGC targets, ion accumulation time, MS2 resolution, precursor coisolation threshold, data analysis software, statistical calculation methods, and protein fold changes, and the best settings for each parameter were defined. The suitable cutoffs for detecting low-abundance proteins with at least 1.5-fold and 2-fold changes were identified for label-free and TMT methods, respectively. The use of optimized parameters will significantly improve the overall performance of quantitative proteomics in quantifying low-abundance proteins and thus promote its application in other research areas.
定量蛋白质组学在过去几十年中被广泛应用于各种研究领域中差异调节蛋白的筛选,但它的灵敏度和准确性一直是许多应用的瓶颈。蛋白质组学工作流程中的每一步都可能影响低丰度蛋白的定量,但尚未对其影响进行系统评估。在这项工作中,为了提高非标记定量和串联质量标签(TMT)标记在定量低丰度蛋白中的灵敏度和准确性,使用复杂的 2 种蛋白质组人工混合样品,对从样品制备到数据分析的一系列步骤进行了多参数优化,包括肽的脱盐、LC-MS/MS 的肽进样量、MS1 分辨率、LC-MS/MS 梯度长度、AGC 目标、离子积累时间、MS2 分辨率、前体共洗脱阈值、数据分析软件、统计计算方法和蛋白倍数变化,并定义了每个参数的最佳设置。确定了非标记和 TMT 方法检测至少 1.5 倍和 2 倍变化的低丰度蛋白的合适截止值。优化参数的使用将显著提高定量蛋白质组学在定量低丰度蛋白方面的整体性能,从而促进其在其他研究领域的应用。