Liu Kehui, Zhang Jiyang, Wang Jinglan, Zhao Liyan, Peng Xu, Jia Wei, Ying Wantao, Zhu Yunping, Xie Hongwei, He Fuchu, Qian Xiaohong
State Key Laboratory of Proteomics, Beijing Proteome Research Center, Beijing Institute of Radiation Medicine No. 33, Life Science Park Road, Changping District, Beijing, China, 102206.
Anal Chem. 2009 Feb 15;81(4):1307-14. doi: 10.1021/ac801466k.
The relationship between sample loading amount and peptide identification is crucial for the optimization of proteomics experiments, but few studies have addressed this matter. Herein, we present a systematic study using a replicate run strategy to probe the inherent influence of both peptide physicochemical properties and matrix effects on the relationship between peptide identification and sample loading amounts, as well as its applications in protein quantification. Ten replicate runs for a series of laddered loading amounts (ranging between 0.01 approximately 10 microg) of total digested proteins from Saccharomyces cerevisiae were performed with nanoscale liquid chromatography coupled with linear ion trap/Fourier transform ion cyclotron resonance (nanoLC-LTQ-FT) to obtain a nearly saturated peptide identification. This permitted us to differentiate the linear correlativity of peptide identification by the commonly used peptide quantitative index, the area of constructed ion chromatograms (XIC) (SA, from MS and tandem MS data) in the given experiments. The absolute loading amount of a given complex sample affected the final qualitative identification result; thus, optimization of the sample loading amount before every proteomics study was essential. Peptide physicochemical properties had little effect on the linear correlativity between SA-based peptide quantification and loading amount. The matrix effects, rather than the static physicochemical properties of individual peptides, affect peptide measurability. We also quantified the target protein by selecting peptides with good parallel linear correlativity based upon SA as signature peptides and revised the data by multiplying by the reciprocal of the slope coefficient. We found that this optimized the linear protein abundance relativity at every amount range and thus extended the linear dynamic range of label-free quantification. This empirical rule for linear peptide selection (ERLPS) can be adopted to correct comparison results in proteolytic peptide-based quantitative proteomics, such as accurate mass tag (AMT) and targeted quantitative proteomics, as well as in tag-labeled comparative proteomics.
样品上样量与肽段鉴定之间的关系对于蛋白质组学实验的优化至关重要,但很少有研究涉及这一问题。在此,我们采用重复运行策略进行了一项系统研究,以探究肽段物理化学性质和基质效应在肽段鉴定与样品上样量关系中的内在影响,及其在蛋白质定量中的应用。使用纳升级液相色谱与线性离子阱/傅里叶变换离子回旋共振联用技术(nanoLC-LTQ-FT),对酿酒酵母全酶解蛋白的一系列梯度上样量(范围在0.01至10微克之间)进行了十次重复运行,以获得近乎饱和的肽段鉴定结果。这使我们能够在给定实验中,通过常用的肽段定量指标——构建的离子色谱图(XIC)面积(SA,来自质谱和串联质谱数据),区分肽段鉴定的线性相关性。给定复杂样品的绝对上样量会影响最终的定性鉴定结果;因此,在每次蛋白质组学研究之前优化样品上样量至关重要。肽段的物理化学性质对基于SA的肽段定量与上样量之间的线性相关性影响较小。影响肽段可测量性的是基质效应,而非单个肽段的静态物理化学性质。我们还通过选择基于SA具有良好平行线性相关性的肽段作为特征肽来定量目标蛋白,并通过乘以斜率系数的倒数来修正数据。我们发现,这在每个上样量范围内优化了线性蛋白质丰度相关性,从而扩展了无标记定量的线性动态范围。这种线性肽段选择的经验法则(ERLPS)可用于校正基于蛋白酶解肽段的定量蛋白质组学中的比较结果,如精确质量标签(AMT)和靶向定量蛋白质组学,以及标记标记的比较蛋白质组学。