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Prediction of human protein-protein interaction by a mixed Bayesian model and its application to exploring underlying cancer-related pathway crosstalk

机译:混合贝叶斯模型预测人类蛋白质间的相互作用及其在探索潜在的癌症相关途径串扰中的应用

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Protein-protein interaction (PPI) prediction method has provided an opportunity for elucidating potential biological processes and disease mechanisms. We integrated eight features involving proteomic, genomic, phenotype and functional annotation datasets by a mixed model consisting of full connected Bayesian (FCB) model and naive Bayesian model to predict human PPIs, resulting in 40 447 PPIs which contain 2740 common PPIs with the human protein reference database (HPRD) by a likelihood ratio cutoff of 512. Then we applied them to exploring underlying pathway crosstalk where pathways were derived from the pathway interaction database. Two pathway crosstalk networks (PCNs) were constructed based on PPI sets. The PPI sets were derived from two different sources. One source was strictly the HPRD database while the other source was a combination of HPRD and PPIs predicted by our mixed Bayesian method. We demonstrated that PCNs based on the mixed PPI set showed much more underlying pathway interactions than the HPRD PPI set. Furthermore, we mapped cancer-causing mutated somatic genes to PPIs between significant pathway crosstalk pairs. We extracted highly connected clusters from over-represented subnetworks of PCNs, which were enriched for mutated gene interactions that acted as crosstalk links. Most of the pathways in top ranking clusters were shown to play important roles in cancer. The clusters themselves showed coherent function categories pertaining to cancer development.
机译:蛋白质-蛋白质相互作用(PPI)预测方法为阐明潜在的生物学过程和疾病机制提供了机会。我们通过由完全连接的贝叶斯(FCB)模型和朴素贝叶斯模型组成的混合模型集成了涉及蛋白质组学,基因组,表型和功能注释数据集的八个特征,以预测人类PPI,从而产生了40447个PPI,其中包含2740个与人类蛋白质共同的PPI参考数据库(HPRD)的似然比截断值为512。然后,我们将它们用于探究潜在的通路串扰,其中通路是从通路相互作用数据库中得出的。基于PPI集构建了两个路径串扰网络(PCN)。 PPI集来自两个不同的来源。一个来源严格来说是HPRD数据库,而另一个来源则是通过我们的混合贝叶斯方法预测的HPRD和PPI的组合。我们证明,基于混合PPI集的PCN显示出比HPRD PPI集更多的潜在途径相互作用。此外,我们将致癌突变的体细胞基因映射到重要途径串扰对之间的PPI。我们从过度代表的PCN子网中提取了高度连接的群集,这些群集丰富了充当串扰链接的突变基因相互作用。排名最高的簇中的大多数途径均显示在癌症中起重要作用。这些簇本身显示出与癌症发展有关的连贯的功能类别。

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