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方差分量分析评估生物标志物验证中蛋白质定量:在选择反应监测-质谱法中的应用。

Variance component analysis to assess protein quantification in biomarker validation: application to selected reaction monitoring-mass spectrometry.

机构信息

Service de Biostatistique-Bioinformatique, Hospices Civils de Lyon, 162, avenue Lacassagne, F-69003, Lyon, France.

Université de Lyon, Lyon, France.

出版信息

BMC Bioinformatics. 2018 Mar 1;19(1):73. doi: 10.1186/s12859-018-2075-8.

Abstract

BACKGROUND

In the field of biomarker validation with mass spectrometry, controlling the technical variability is a critical issue. In selected reaction monitoring (SRM) measurements, this issue provides the opportunity of using variance component analysis to distinguish various sources of variability. However, in case of unbalanced data (unequal number of observations in all factor combinations), the classical methods cannot correctly estimate the various sources of variability, particularly in presence of interaction. The present paper proposes an extension of the variance component analysis to estimate the various components of the variance, including an interaction component in case of unbalanced data.

RESULTS

We applied an experimental design that uses a serial dilution to generate known relative protein concentrations and estimated these concentrations by two processing algorithms, a classical and a more recent one. The extended method allowed estimating the variances explained by the dilution and the technical process by each algorithm in an experiment with 9 proteins: L-FABP, 14.3.3 sigma, Calgi, Def.A6, Villin, Calmo, I-FABP, Peroxi-5, and S100A14. Whereas, the recent algorithm gave a higher dilution variance and a lower technical variance than the classical one in two proteins with three peptides (L-FABP and Villin), there were no significant difference between the two algorithms on all proteins.

CONCLUSIONS

The extension of the variance component analysis was able to estimate correctly the variance components of protein concentration measurement in case of unbalanced design.

摘要

背景

在使用质谱进行生物标志物验证的领域中,控制技术变异性是一个关键问题。在选择反应监测(SRM)测量中,这个问题提供了使用方差分量分析来区分各种变异源的机会。然而,在数据不平衡(所有因素组合的观测数量不等)的情况下,经典方法无法正确估计各种变异源,特别是在存在交互作用的情况下。本文提出了一种方差分量分析的扩展方法,用于估计方差的各个分量,包括在数据不平衡的情况下存在交互作用的分量。

结果

我们应用了一种实验设计,使用连续稀释来产生已知的相对蛋白质浓度,并通过两种处理算法(经典算法和较新算法)来估计这些浓度。扩展方法允许在一个包含 9 种蛋白质的实验中估计稀释和每个算法的技术过程所解释的方差:L-FABP、14.3.3 sigma、Calgi、Def.A6、Villin、Calmo、I-FABP、Peroxi-5 和 S100A14。然而,在含有三个肽的两种蛋白质(L-FABP 和 Villin)中,新算法给出的稀释方差高于经典算法,技术方差低于经典算法,而在所有蛋白质上,两种算法之间没有显著差异。

结论

方差分量分析的扩展方法能够在数据不平衡设计的情况下正确估计蛋白质浓度测量的方差分量。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2f7b/5831836/f4aa8aa215ef/12859_2018_2075_Fig1_HTML.jpg

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