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Computational prediction of molecular pathogen-host interactions based on dual transcriptome data

机译:基于双转录组数据的分子病原体-宿主相互作用的计算预测

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摘要

Inference of inter-species gene regulatory networks based on gene expression data is an important computational method to predict pathogen-host interactions (PHIs). Both the experimental setup and the nature of PHIs exhibit certain characteristics. First, besides an environmental change, the battle between pathogen and host leads to a constantly changing environment and thus complex gene expression patterns. Second, there might be a delay until one of the organisms reacts. Third, toward later time points only one organism may survive leading to missing gene expression data of the other organism. Here, we account for PHI characteristics by extending NetGenerator, a network inference tool that predicts gene regulatory networks from gene expression time series data. We tested multiple modeling scenarios regarding the stimuli functions of the interaction network based on a benchmark example. We show that modeling perturbation of a PHI network by multiple stimuli better represents the underlying biological phenomena. Furthermore, we utilized the benchmark example to test the influence of missing data points on the inference performance. Our results suggest that PHI network inference with missing data is possible, but we recommend to provide complete time series data. Finally, we extended the NetGenerator tool to incorporate gene- and time point specific variances, because complex PHIs may lead to high variance in expression data. Sample variances are directly considered in the objective function of NetGenerator and indirectly by testing the robustness of interactions based on variance dependent disturbance of gene expression values. We evaluated the method of variance incorporation on dual RNA sequencing (RNA-Seq) data of Mus musculus dendritic cells incubated with Candida albicans and proofed our method by predicting previously verified PHIs as robust interactions.
机译:基于基因表达数据的种间基因调控网络的推断是预测病原体-宿主相互作用(PHI)的重要计算方法。 PHI的实验设置和性质都显示出某些特征。首先,除了环境变化外,病原体与宿主之间的斗争还导致环境不断变化,从而导致复杂的基因表达模式。其次,可能要等到其中一种生物体发生反应后再进行延迟。第三,到稍后的时间点,只有一个生物可以生存,导致另一生物丢失基因表达数据。在这里,我们通过扩展NetGenerator来解释PHI的特征,NetGenerator是一种网络推断工具,可以根据基因表达时间序列数据预测基因调控网络。我们基于基准示例测试了关于交互网络的刺激功能的多种建模方案。我们显示,通过多个刺激对PHI网络进行建模扰动可以更好地表示潜在的生物学现象。此外,我们利用基准示例测试了缺失数据点对推理性能的影响。我们的结果表明,使用丢失数据的PHI网络推断是可能的,但是我们建议提供完整的时间序列数据。最后,我们扩展了NetGenerator工具,以合并特定于基因和时间点的差异,因为复杂的PHI可能导致表达数据差异很大。在NetGenerator的目标函数中直接考虑样本方差,并通过基于基因表达值的方差相关干扰来测试交互的鲁棒性来间接考虑样本方差。我们评估了与白色念珠菌共培养的小家鼠树突状细胞的双重RNA测序(RNA-Seq)数据中的方差合并方法,并通过预测先前验证的PHI作为强相互作用来证明了我们的方法。

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