...
首页> 外文期刊>BMC Genomics >Transferring knowledge of bacterial protein interaction networks to predict pathogen targeted human genes and immune signaling pathways: a case study on M. tuberculosis
【24h】

Transferring knowledge of bacterial protein interaction networks to predict pathogen targeted human genes and immune signaling pathways: a case study on M. tuberculosis

机译:转移细菌蛋白质相互作用网络的知识预测病原体靶向人类基因和免疫信号通路:Cuberculosis的案例研究

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Bacterial invasive infection and host immune response is fundamental to the understanding of pathogen pathogenesis and the discovery of effective therapeutic drugs. However, there are very few experimental studies on the signaling cross-talks between bacteria and human host to date. In this work, taking M. tuberculosis H37Rv (MTB) that is co-evolving with its human host as an example, we propose a general computational framework that exploits the known bacterial pathogen protein interaction networks in STRING database to predict pathogen-host protein interactions and their signaling cross-talks. In this framework, significant interlogs are derived from the known pathogen protein interaction networks to train a predictive l2-regularized logistic regression model. The computational results show that the proposed method achieves excellent performance of cross validation as well as low predicted positive rates on the less significant interlogs and non-interlogs, indicating a low risk of false discovery. We further conduct gene ontology (GO) and pathway enrichment analyses of the predicted pathogen-host protein interaction networks, which potentially provides insights into the machinery that M. tuberculosis H37Rv targets human genes and signaling pathways. In addition, we analyse the pathogen-host protein interactions related to drug resistance, inhibition of which potentially provides an alternative solution to M. tuberculosis H37Rv drug resistance. The proposed machine learning framework has been verified effective for predicting bacteria-host protein interactions via known bacterial protein interaction networks. For a vast majority of bacterial pathogens that lacks experimental studies of bacteria-host protein interactions, this framework is supposed to achieve a general-purpose applicability. The predicted protein interaction networks between M. tuberculosis H37Rv and Homo sapiens, provided in the Additional files, promise to gain applications in the two fields: (1) providing an alternative solution to drug resistance; (2) revealing the patterns that M. tuberculosis H37Rv genes target human immune signaling pathways.
机译:细菌侵袭感染和宿主免疫应答是对病原发病机制的理解和有效治疗药物的发现。然而,对细菌和人类主机之间的信号交叉谈话的实验研究很少。在这项工作中,服用与人类宿主共同发展的肺结核H37RV(MTB)作为一个例子,我们提出了一般的计算框架,该框架利用串数据库中已知的细菌病原体蛋白质相互作用网络来预测病原体宿主蛋白质相互作用他们的信令交叉会谈。在该框架中,重要的目录来自已知的病原体蛋白质交互网络,以训练预测L2-正则化物流回归模型。计算结果表明,该方法的交叉验证的优异性能以及低预测阳性率的较低的中学跨域和非运动率,表明假发现的风险低。我们进一步进行了预测的病原体 - 宿主蛋白质相互作用网络的基因本体(GO)和途径富集分析,其潜在地为M.Tuberculosis H37RV靶向人类基因和信号通路的机器提供了深入的洞察力。此外,我们分析了与耐药性相关的病原体 - 宿主蛋白质相互作用,其抑制可能为M.结核病H37RV耐药性提供替代溶液。已经通过已知的细菌蛋白质相互作用网络预测细菌 - 宿主蛋白质相互验证,所提出的机器学习框架已经有效。对于绝大多数细菌病原体缺乏对细菌宿主蛋白质相互作用的实验研究,该框架应该达到通用适用性。在额外文件中提供的M.Tuberculosis H37RV和Homo Sapiens之间预测的蛋白质相互作用网络,承诺在两个领域中获得应用:(1)为耐药性提供替代方案; (2)揭示了结核病H37RV基因靶向人免疫信号传导途径的模式。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号