Linear Mixed Model Approach to Protein Significance Analysis

J. Jun, T. Park
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Abstract

Discovering protein biomarkers is one of the important issues in biomedical researches. The enzymelinked immunosorbent assay (ELISA) is one of the traditional techniques for protein quantitation. Recently, the multiple reaction monitoring (MRM) mass spectrometry has been proposed as a new method for protein quantification and has been popular as an alternative to ELISA. However, not many analysis methods are available yet to analyse MRM data. Linear mixed models (LMMs) are effective in analysing MRM data. MSstats is one of the most widely used tools for MRM data analysis which is based on the LMMs. MSstats is well implemented on Skyline program and R programming language. However, LMMs often provide various significance results depending on model specification. Thus, sometimes it would be difficult to specify a right LMM for the analysis of MRM data. In this paper, we systematically investigated the effect of model specification on significance of proteins through simulation studies. Our results provide a practical guideline of using LMMs for MRM data analysis.
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蛋白质显著性分析的线性混合模型方法
发现蛋白质生物标志物是生物医学研究的重要课题之一。酶联免疫吸附法(ELISA)是一种传统的蛋白质定量方法。近年来,多反应监测(MRM)质谱法作为一种新的蛋白质定量方法被提出,并作为酶联免疫吸附试验(ELISA)的替代方法而受到欢迎。然而,目前还没有很多分析方法可以分析MRM数据。线性混合模型是分析MRM数据的有效方法。MSstats是基于lmm的MRM数据分析中使用最广泛的工具之一。MSstats在Skyline程序和R语言上很好地实现了。然而,lmm通常根据模型规范提供不同的显著性结果。因此,有时很难为MRM数据的分析指定正确的LMM。本文通过仿真研究,系统探讨了模型规格对蛋白质显著性的影响。我们的研究结果为使用lmm进行MRM数据分析提供了实用的指导。
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