Carvalho P C, Hewel J, Barbosa V C, Yates J R
Programa de Engenharia de Sistemas e Computação, COPPE, Universidade Federal do Rio de Janeiro, Rio de Janeiro, RJ, Brasil.
Genet Mol Res. 2008 Apr 15;7(2):342-56. doi: 10.4238/vol7-2gmr426.
Spectral counting is a strategy to quantify relative protein concentrations in pre-digested protein mixtures analyzed by liquid chromatography online with tandem mass spectrometry. In the present study, we used combinations of normalization and statistical (feature selection) methods on spectral counting data to verify whether we could pinpoint which and how many proteins were differentially expressed when comparing complex protein mixtures. These combinations were evaluated on real, but controlled, experiments (yeast lysates were spiked with protein markers at different concentrations to simulate differences), which were therefore verifiable. The following normalization methods were applied: total signal, Z-normalization, hybrid normalization, and log preprocessing. The feature selection methods were: the Golub index, the Student t-test, a strategy based on the weighting used in a forward-support vector machine (SVM-F) model, and SVM recursive feature elimination. The results showed that Z-normalization combined with SVM-F correctly identified which and how many protein markers were added to the yeast lysates for all different concentrations. The software we used is available at http://pcarvalho.com/patternlab.
光谱计数是一种用于量化经液相色谱与串联质谱在线分析的预消化蛋白质混合物中相对蛋白质浓度的策略。在本研究中,我们对光谱计数数据使用了归一化和统计(特征选择)方法的组合,以验证在比较复杂蛋白质混合物时,我们是否能够确定哪些蛋白质以及有多少蛋白质存在差异表达。这些组合在真实但可控的实验(用不同浓度的蛋白质标记物掺入酵母裂解物以模拟差异)中进行了评估,因此是可验证的。应用了以下归一化方法:总信号、Z归一化、混合归一化和对数预处理。特征选择方法有:Golub指数、学生t检验、基于前向支持向量机(SVM-F)模型中使用的加权策略以及支持向量机递归特征消除。结果表明,Z归一化与SVM-F相结合能够正确识别出在所有不同浓度下添加到酵母裂解物中的蛋白质标记物及其数量。我们使用的软件可在http://pcarvalho.com/patternlab获取。