Department of Genetics, Geisel School of Medicine at Dartmouth , Lebanon, New Hampshire 03756, United States.
Anal Chem. 2013 Nov 19;85(22):10812-9. doi: 10.1021/ac4021352. Epub 2013 Nov 7.
Super-stable isotope labeling by amino acids in cell culture (Super-SILAC) enables the sensitive and accurate analysis of complex biological tissue and tumor samples by comparison of light peptides observed in biological samples to heavy peptides from SILAC cell culture spike-ins. However, despite the use of multiple cell lines for Super-SILAC spike-in standards, the full protein and peptide profiles of biological samples are not completely represented in these internal standards, leading to orphan analytes for which sample to standard ratios cannot be calculated. This problem is exacerbated in some biological systems, such as muscle tissue, which lack adequate cell culture lines to reflect their complex and idiosyncratic protein profiles, resulting in up to 40% of peptide analytes without heavy cognates. Furthermore, these unquantified orphan analytes may be among the most biologically interesting and significant species, since their presence is not common to cell lines cultured in vitro. Here, we report on the development of a surrogate analysis strategy to interpolate quantitative relationships between peptide species, observed across multiple biological samples, which lack representation within the spike-in standards. The precision and accuracy of this method was assessed by replicate experiments in which surrogate-derived ratios from defined mixtures of spike-in SILAC standard and tissue lysate were compared against traditional SILAC ratios for species where both light and heavy peptide cognates were observed. We demonstrate the robustness of our SILAC surrogates strategy across a variety of murine tissues, including liver, spleen, brain, and muscle. Our approach increases the quantitative coverage and precision within a biological sample by rescuing previously intractable peptide species and applying additional evidence to improve the precision of existing quantifications.
细胞培养中的氨基酸稳定同位素标记(Super-SILAC)通过将生物样品中观察到的轻肽与 SILAC 细胞培养掺入物的重肽进行比较,实现了对复杂生物组织和肿瘤样品的灵敏和准确分析。然而,尽管使用了多种细胞系作为 Super-SILAC 掺入物标准品,但这些内标品并不能完全代表生物样品的全部蛋白质和肽谱,导致一些孤儿分析物无法计算样品与标准品的比值。在某些生物系统中,如肌肉组织,这个问题更加严重,因为这些系统缺乏足够的细胞培养系来反映其复杂和特异的蛋白质谱,导致多达 40%的肽分析物没有重肽对应物。此外,这些未定量的孤儿分析物可能是最具生物学意义和重要性的物种之一,因为它们的存在在体外培养的细胞系中并不常见。在这里,我们报告了一种替代分析策略的开发,该策略用于内插跨越多个缺乏掺入物标准品代表的生物样品的肽物种之间的定量关系。通过重复实验评估了该方法的精度和准确性,其中替代物衍生的比率来自定义的掺入物 SILAC 标准品和组织裂解物混合物,与观察到轻肽和重肽对应物的传统 SILAC 比率进行了比较。我们证明了我们的 SILAC 替代物策略在各种鼠组织中的稳健性,包括肝脏、脾脏、大脑和肌肉。我们的方法通过拯救以前难以处理的肽物种并应用额外的证据来提高现有定量的精度,从而增加了生物样品中的定量覆盖范围和精度。