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Protein and gene model inference based on statistical modeling in k-partite graphs

机译:基于k部分图中的统计建模的蛋白质和基因模型推断

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摘要

One of the major goals of proteomics is the comprehensive and accurate description of a proteome. Shotgun proteomics, the method of choice for the analysis of complex protein mixtures, requires that experimentally observed peptides are mapped back to the proteins they were derived from. This process is also known as protein inference. We present Markovian Inference of Proteins and Gene Models (MIPGEM), a statistical model based on clearly stated assumptions to address the problem of protein and gene model inference for shotgun proteomics data. In particular, we are dealing with dependencies among peptides and proteins using a Markovian assumption on k-partite graphs. We are also addressing the problems of shared peptides and ambiguous proteins by scoring the encoding gene models. Empirical results on two control datasets with synthetic mixtures of proteins and on complex protein samples of Saccharomyces cerevisiae, Drosophila melanogaster, and Arabidopsis thaliana suggest that the results with MIPGEM are competitive with existing tools for protein inference.
机译:蛋白质组学的主要目标之一是对蛋白质组的全面而准确的描述。 gun弹枪蛋白质组学是分析复杂蛋白质混合物的一种选择方法,它要求将实验观察到的肽映射回它们所衍生的蛋白质。此过程也称为蛋白质推断。我们提出蛋白质和基因模型的马尔可夫推论(MIPGEM),这是一个基于明确陈述的假设的统计模型,用于解决shot弹枪蛋白质组学数据的蛋白质和基因模型推论问题。特别是,我们使用k部分图上的马尔可夫假设来处理肽和蛋白质之间的依赖性。我们还通过对编码基因模型进行评分来解决共享肽和歧义蛋白的问题。在具有蛋白质合成混合物的两个对照数据集上,以及酿酒酵母,果蝇和拟南芥的复杂蛋白质样品上的经验结果表明,MIPGEM的结果与现有的蛋白质推断工具相比具有竞争力。

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