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Predicting Protein-Protein Interaction Based on Fisher Scores Extracted from Domain Profiles

机译:基于域分布提取的捕捞分数预测蛋白质 - 蛋白质相互作用

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In this work, we propose a machine learning method to identify protein-protein interacting partners based on domain level knowledge that can take into account information about the interaction sites. The general approach is to use the profile hidden Markov models of protein domains and the known interactions between domains to train a support vector machine. Proteins are characterized by the vectors of fisher scores that are obtained from comparing the protein sequences to the hidden Markov model for a given domain. Protein pairs, represented by concatenation of their respective fisher score vectors, are classified as interacting partners and non interacting partners by a trained SVM. By selecting the fisher scores based on a profile hidden Markov model that differentiates the interaction sites from other residues within the domain, we demonstrated that the prediction accuracy was significantly improved, as measured in a series of cross validation experiments.
机译:在这项工作中,我们提出了一种机器学习方法,以识别基于域级知识的蛋白质 - 蛋白质互动伴侣,这些伙伴可以考虑有关互动站点的信息。一般方法是使用蛋白质结构域的轮廓隐马尔可夫模型和域之间的已知相互作用来训练支持向量机。蛋白质的特征在于将捕获蛋白质序列与给定结构域的隐马尔可夫模型进行比较的捕捞分数的载体。通过各自的Fisher评分向量代表代表的蛋白质对被归类为培训的SVM互动的合作伙伴和非互动伙伴。通过基于域中的隐藏式马尔可夫模型选择Fisher成绩,该模型将与域内的其他残留物区分开,我们证明了预测精度显着改善,如一系列交叉验证实验所测量。

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