首页> 外文会议>PSB;Pacific symposium on biocomputing; 20090105-09;20090105-09; Kohala Coast, HI(US);Kohala Coast, HI(US) >PREDICTION OF INTERACTIONS BETWEEN HIV-1 AND HUMAN PROTEINS BY INFORMATION INTEGRATION
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PREDICTION OF INTERACTIONS BETWEEN HIV-1 AND HUMAN PROTEINS BY INFORMATION INTEGRATION

机译:通过信息整合预测HIV-1与人类蛋白之间的相互作用

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Human immunodeficiency virus-1 (HIV-1) in acquired immune deficiency syndrome (AIDS) relies on human host cell proteins in virtually every aspect of its life cycle. Knowledge of the set of interacting human and viral proteins would greatly contribute to our understanding of the mechanisms of infection and subsequently to the design of new therapeutic approaches. This work is the first attempt to predict the global set of interactions between HIV-1 and human host cellular proteins. We propose a supervised learning framework, where multiple information data sources are utilized, including cooccurrence of functional motifs and their interaction domains and protein classes, gene ontology annotations, posttranslational modifications, tissue distributions and gene expression profiles, topological properties of the human protein in the interaction network and the similarity of HIV-1 proteins to human proteins' known binding partners. We trained and tested a Random Forest (RF) classifier with this extensive feature set. The model's predictions achieved an average Mean Average Precision (MAP) score of 23%. Among the predicted interactions was for example the pair, HTV-1 protein tat and human vitamin D receptor. This interaction had recently been independently validated experimentally. The rank-ordered lists of predicted interacting pairs are a rich source for generating biological hypotheses. Amongst the novel predictions, transcription regulator activity, immune system process and macromolecular complex were the top most significant molecular function, process and cellular compartments, respectively.
机译:获得性免疫缺陷综合症(AIDS)中的人类免疫缺陷病毒-1(HIV-1)实际上在其生命周期的每个方面都依赖于人类宿主细胞蛋白。对相互作用的人类和病毒蛋白的了解将极大地有助于我们对感染机制的理解,进而有助于新治疗方法的设计。这项工作是预测HIV-1与人类宿主细胞蛋白之间的相互作用的全球尝试。我们提出了一种有监督的学习框架,其中利用了多种信息数据源,包括功能性基序及其相互作用域和蛋白质类别的共现,基因本体注释,翻译后修饰,组织分布和基因表达谱,人类蛋白质在细胞中的拓扑特性。相互作用网络和HIV-1蛋白与人类蛋白已知结合伴侣的相似性。我们使用此广泛的功能集训练并测试了随机森林(RF)分类器。该模型的预测获得了23%的平均平均平均得分(MAP)。在预测的相互作用中,例如该对,HTV-1蛋白达和人维生素D受体。这种相互作用最近已通过实验独立验证。预测相互作用对的排序列表是生成生物学假设的丰富资源。在这些新的预测中,转录调节活性,免疫系统过程和大分子复合物分别是最重要的分子功能,过程和细胞区室。

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