Analytical Signalling Group, Centre for Cell Signalling, Institute of Cancer, Bart's and the London Medical School, Queen Mary University of London, UK.
Mol Cell Proteomics. 2011 Jan;10(1):M110.003079. doi: 10.1074/mcp.M110.003079. Epub 2010 Oct 24.
Protein kinase pathways play pivotal roles in cell signaling and biology. The phosphoproteome is a reflection of protein kinase pathway activation and therefore there is considerable interest in its quantification as a means to assess the wiring of signaling networks. Although different approaches for quantitative phosphoproteomics have been described, there is no data on how accurate these are for each quantified phosphorylated site. We report a liquid chromatography-MS approach to objectively assess data quality in high-content comparison of phosphoproteomes in which samples to be compared are mixed at different proportions. The experimental data is then used to derive a linear regression function that allows calculating correlation values, linearity, and accuracy. We applied the technique to investigate phosphorylation in P31/Fuj and Kasumi-1, two leukemia cells lines showing strikingly different sensitivities to scr and PI3K inhibitors. We found that phosphopeptides quantified with accuracy were not always quantified with precision because of low ion statistics contributing to variability. Thus our approach was complementary to standard methods for calculating the precision of replicate measurements based on the coefficient of variation and provided additional information on data quality for each quantified phosphopeptide. We quantified > 2250 phosphorylation sites across cell lines with different levels of sensitivity to kinase inhibitors, of which 1847 showed an accuracy variation of < 30% (with an overall mean of 22%). Hundreds of phosphorylation sites on proteins with diverse function (including kinases, transcription, and translation factors) showed significantly distinct intensities across sensitive and resistant cells lines, indicating that kinase pathways are differentially regulated in cancer cells of distinct sensitivity to signaling inhibitors.
蛋白激酶通路在细胞信号转导和生物学中起着关键作用。磷酸化蛋白质组是蛋白激酶通路激活的反映,因此,人们对其定量分析作为评估信号网络连接的方法非常感兴趣。尽管已经描述了不同的定量磷酸蛋白质组学方法,但对于每种定量磷酸化位点的准确性却没有数据。我们报告了一种液相色谱-MS 方法,用于客观评估在混合不同比例的磷酸蛋白质组进行高通量比较时的数据质量。然后,将实验数据用于推导线性回归函数,该函数允许计算相关值、线性度和准确性。我们应用该技术研究了 P31/Fuj 和 Kasumi-1 两种白血病细胞系中的磷酸化情况,这两种细胞系对 scr 和 PI3K 抑制剂的敏感性有明显差异。我们发现,由于离子统计学对变异性的贡献,具有准确性的磷酸肽并不总是具有精密度,因此无法定量。因此,我们的方法补充了基于变异系数计算重复测量精度的标准方法,并为每个定量磷酸肽提供了有关数据质量的其他信息。我们对不同激酶抑制剂敏感性的细胞系中超过 2250 个磷酸化位点进行了定量,其中 1847 个位点的准确性变化<30%(总体平均值为 22%)。具有不同功能(包括激酶、转录和翻译因子)的蛋白质上的数百个磷酸化位点在敏感和耐药细胞系之间显示出明显不同的强度,表明在对信号抑制剂具有不同敏感性的癌细胞中,激酶途径存在差异调节。