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Global Voting Model for Protein Function Prediction from Protein-Protein Interaction Networks

机译:来自蛋白质 - 蛋白质互动网络的蛋白质功能预测的全局投票模型

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It is known that the observed PPI network is incomplete with low coverage and high rate of false positives and false negatives. Computational approach is likely to be overwhelmed by the high level of noises and incompleteness if relying on local topological information. We propose a global voting (GV) model to predict protein function by exploiting the entire topology of the network. GV consistently assigns function to unannotated proteins through a global voting procedure in which all of the annotated proteins participate. It assigns a list of function candidates to a target protein with each attached a probability score. The probability indicates the confidence level of the potential function assignment. We apply GV model to a yeast PPI network and test the robustness of the model against noise by random insertion and deletion of true PPIs. The results demonstrate that GV model can robustly infer the function of the proteins.
机译:众所周知,观察到的PPI网络具有低覆盖率和误报率的低覆盖率和虚假底片。如果依赖于当地拓扑信息,计算方法可能会受到高水平的噪音和不完整性的影响。我们提出了一种全球投票(GV)模型来通过利用网络的整个拓扑来预测蛋白质功能。 GV通过全球投票程序一致地将功能分配给未经发出的蛋白质,其中所有注释的蛋白质参与。它为目标蛋白分配给目标蛋白的功能候选列表,每个概率得分。概率表示潜在函数分配的置信水平。我们将GV模型应用于酵母PPI网络,并通过随机插入和删除真正的PPI来测试模型的稳健性。结果表明,GV模型可以鲁布利地推断蛋白质的功能。

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