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Statistically inferring protein-protein associations with affinity isolation LC-MS/MS assays

机译:通过亲和力分离LC-MS / MS分析统计推断蛋白质-蛋白质的关联

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Affinity isolation of protein complexes followed by protein identification by LC-MS/MS is an increasingly popular approach for mapping protein interactions. However, systematic and random assay errors from multiple sources must be considered to confidently infer authentic protein-protein interactions. To address this issue, we developed a general, robust statistical method for inferring authentic interactions from protein prey-by-bait frequency tables using a binomial-based likelihood ratio test (LRT) coupled with Bayes' Odds estimation. We then applied our LRT-Bayes' algorithm experimentally using data from protein complexes isolated from Rhodopseudomonas palustris. Our algorithm, in conjunction with the experimental protocol, inferred with high confidence authentic interacting proteins from abundant, stable complexes, but few or no authentic interactions for lower-abundance complexes. The algorithm can discriminate against a background of prey proteins that are detected in association with a large number of baits as an artifact of the measurement. We conclude that the experimental protocol including the LRT-Bayes' algorithm produces results with high confidence but moderate sensitivity. We also found that Monte Carlo simulation is a feasible tool for checking modeling assumptions, estimating parameters, and evaluating the significance of results in protein association studies.
机译:亲和力分离蛋白质复合物,然后通过LC-MS / MS鉴定蛋白质,是绘制蛋白质相互作用的越来越流行的方法。但是,必须考虑来自多个来源的系统性和随机性分析错误,才能可靠地推断出真实的蛋白质-蛋白质相互作用。为了解决这个问题,我们开发了一种通用的,可靠的统计方法,可以使用基于二项式的似然比检验(LRT)和贝叶斯的几率估计来从逐个诱饵的蛋白质频率表中推断出真实的相互作用。然后,我们使用从pal红假单胞菌分离的蛋白质复合物中的数据实验性地应用了LRT-Bayes算法。我们的算法与实验方案相结合,可以从丰富,稳定的复合物中高可信度地推断出真实的相互作用蛋白,而对于丰度较低的复合物则只有极少或没有真实的相互作用。该算法可以区分与大量诱饵相关联的检测到的猎物蛋白背景,作为测量的伪像。我们得出的结论是,包括LRT-Bayes算法在内的实验协议产生的结果具有高置信度,但灵敏度适中。我们还发现,蒙特卡洛模拟是一种可行的工具,可用于检查建模假设,估计参数以及评估蛋白质关联研究中结果的重要性。

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