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首页> 外文期刊>Journal of proteome research >Efficient marginalization to compute protein posterior probabilities from shotgun mass spectrometry data
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Efficient marginalization to compute protein posterior probabilities from shotgun mass spectrometry data

机译:从shot弹枪质谱数据有效计算边缘化以计算蛋白质后验概率

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摘要

The problem of identifying proteins from a shotgun proteomics experiment has not been definitively solved. Identifying the proteins in a sample requires ranking them, ideally with interpretable scores. In particular, "degenerate" peptides, which map to multiple proteins, have made such a ranking difficult to compute. The problem of computing posterior probabilities for the proteins, which can be interpreted as confidence in a proteins presence, has been especially daunting. Previous approaches have either ignored the peptide degeneracy problem completely, addressed it by computing a heuristic set of proteins or heuristic posterior probabilities, or estimated the posterior probabilities with sampling methods. We present a probabilistic model for protein identification in tandem mass spectrometry that recognizes peptide degeneracy. We then introduce graph-transforming algorithms that facilitate efficient computation of protein probabilities, even for large data sets. We evaluate our identification procedure on five different well-characterized data sets and demonstrate our ability to efficiently compute high-quality protein posteriors.
机译:从a弹枪蛋白质组学实验中鉴定蛋白质的问题尚未得到明确解决。鉴定样品中的蛋白质需要对它们进行排名,理想情况下应具有可解释的分数。尤其是,映射到多种蛋白质的“简并”肽使这种排名难以计算。计算蛋白质后验概率的问题尤其令人生畏,这可以解释为对蛋白质存在的信心。先前的方法要么完全忽略了肽的简并性问题,要么通过计算蛋白质的启发式集或启发式后验概率来解决该问题,或者使用采样方法估算了后验概率。我们提出了识别肽简并性的串联质谱中蛋白质鉴定的概率模型。然后,我们引入图变换算法,即使对于大型数据集,也可以促进蛋白质概率的有效计算。我们评估了五个不同的特征明确的数据集的鉴定程序,并证明了我们有效计算高质量蛋白质后代的能力。

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