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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >Computational methodology for predicting the landscape of the human-microbial interactome region level influence
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Computational methodology for predicting the landscape of the human-microbial interactome region level influence

机译:预测人类-微生物相互作用组区域水平影响的景观的计算方法

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摘要

Microbial communities thrive in close association among themselves and with the host, establishing protein-protein interactions (PPIs) with the latter, and thus being able to benefit (positively impact) or disturb (negatively impact) biological events in the host. Despite major collaborative efforts to sequence the Human microbiome, there is still a great lack of understanding their impact. We propose a computational methodology to predict the impact of microbial proteins in human biological events, taking into account the abundance of each microbial protein and its relation to all other microbial and human proteins. This alternative methodology is centered on an improved impact estimation algorithm that integrates PPIs between human and microbial proteins with Reactome pathway data. This methodology was applied to study the impact of 24 microbial phyla over different cellular events, within 10 different human microbiomes. The results obtained confirm findings already described in the literature and explore new ones. We believe the Human microbiome can no longer be ignored as not only is there enough evidence correlating microbiome alterations and disease states, but also the return to healthy states once these alterations are reversed.
机译:微生物群落之间以及与宿主之间的紧密联系使它们蓬勃发展,与后者建立了蛋白质-蛋白质相互作用(PPI),因此能够从宿主中受益(积极影响)或扰乱(负面影响)生物事件。尽管在测序人类微生物组方面付出了巨大的努力,但仍然非常缺乏对它们的影响的理解。考虑到每种微生物蛋白的丰度及其与所有其他微生物和人类蛋白的关系,我们提出了一种计算方法来预测微生物蛋白在人类生物学事件中的影响。这种替代方法以改进的影响估算算法为中心,该算法将人和微生物蛋白之间的PPI与Reactome途径数据结合在一起。该方法用于研究24种微生物门对10种不同人类微生物组中不同细胞事件的影响。获得的结果证实了文献中已经描述的发现并探索了新的发现。我们相信人类微生物组将不再被忽视,因为不仅有足够的证据证明微生物组的改变和疾病状态有关,而且一旦这些改变被逆转,也可以恢复到健康状态。

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