估计和改进蛋白质相互作用错误率。

Patrik D'haeseleer, George M Church
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引用次数: 0

摘要

高通量蛋白质相互作用数据集已被证明是众所周知的嘈杂。虽然可以通过只使用那些有两条或更多证据支持的交互来关注具有更高可靠性的交互,但这种方法总是会抛出大部分可用数据。通过将与所有可用交互作用相关的概率合并到分析中,可以实现更优的使用。我们提出了一种新的方法来估计与特定蛋白质相互作用数据集相关的错误率,以及给定它们出现的数据集的个体相互作用。作为奖励,我们还得到了酵母中蛋白质相互作用总数的估计。可以识别和删除某些类型的假阳性结果,从而显著提高数据集的质量。对于共纯化数据集,我们展示了如何在共纯化蛋白质组内相互作用的“辐条”和“矩阵”表示之间进行权衡,以实现最佳的假阳性错误率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating and improving protein interaction error rates.

High throughput protein interaction data sets have proven to be notoriously noisy. Although it is possible to focus on interactions with higher reliability by using only those that are backed up by two or more lines of evidence, this approach invariably throws out the majority of available data. A more optimal use could be achieved by incorporating the probabilities associated with all available interactions into the analysis. We present a novel method for estimating error rates associated with specific protein interaction data sets, as well as with individual interactions given the data sets in which they appear. As a bonus, we also get an estimate for the total number of protein interactions in yeast. Certain types of false positive results can be identified and removed, resulting in a significant improvement in quality of the data set. For co-purification data sets, we show how we can reach a tradeoff between the "spoke" and "matrix" representation of interactions within co-purified groups of proteins to achieve an optimal false positive error rate.

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