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Using structural knowledge in the protein data bank to inform the search for potential host-microbe protein interactions in sequence space: application to Mycobacterium tuberculosis

机译:利用蛋白质数据库中的结构知识来指导在序列空间中潜在的宿主微生物蛋白质相互作用的研究:在结核分枝杆菌中的应用

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Background A comprehensive map of the human -M. tuberculosis (MTB) protein interactome would help fill the gaps in our understanding of the disease, and computational prediction can aid and complement experimental studies towards this end. Several sequence-based in silico approaches tap the existing data on experimentally validated protein-protein interactions (PPIs); these PPIs serve as templates from which novel interactions between pathogen and host are inferred. Such comparative approaches typically make use of local sequence alignment, which, in the absence of structural details about the interfaces mediating the template interactions, could lead to incorrect inferences, particularly when multi-domain proteins are involved. Results We propose leveraging the domain-domain interaction (DDI) information in PDB complexes to score and prioritize candidate PPIs between host and pathogen proteomes based on targeted sequence-level comparisons. Our method picks out a small set of human-MTB protein pairs as candidates for physical interactions, and the use of functional meta-data suggests that some of them could contribute to the in vivo molecular cross-talk between pathogen and host that regulates the course of the infection. Further, we present numerical data for Pfam domain families that highlights interaction specificity on the domain level. Not every instance of a pair of domains, for which interaction evidence has been found in a few instances (i.e. structures), is likely to functionally interact. Our sorting approach scores candidates according to how “distant” they are in sequence space from known examples of DDIs (templates). Thus, it provides a natural way to deal with the heterogeneity in domain-level interactions. Conclusions Our method represents a more informed application of local alignment to the sequence-based search for potential human-microbial interactions that uses available PPI data as a prior. Our approach is somewhat limited in its sensitivity by the restricted size and diversity of the template dataset, but, given the rapid accumulation of solved protein complex structures, its scope and utility are expected to keep steadily improving.
机译:背景人类-M的综合图。结核(MTB)蛋白质相互作用组将帮助填补我们对这种疾病的了解的空白,而计算预测可以为此目的辅助和补充实验研究。几种基于序列的计算机模拟方法利用了经过实验验证的蛋白质-蛋白质相互作用(PPI)的现有数据。这些PPI作为模板,可从中推断出病原体与宿主之间的新型相互作用。这样的比较方法通常利用局部序列比对,其在缺乏关于介导模板相互作用的界面的结构细节的情况下,可能导致错误的推论,尤其是当涉及多域蛋白时。结果我们建议利用PDB复合体中的域-域相互作用(DDI)信息对宿主和病原体蛋白质组之间的候选PPI进行评分和优先级排序,基于目标序列水平的比较。我们的方法挑选出少量的人类-MTB蛋白对作为物理相互作用的候选者,并且使用功能性元数据表明,其中一些可能有助于病原体与调节过程的宿主之间的体内分子串扰感染。此外,我们提供了Pfam域家族的数值数据,突出了域一级的相互作用特异性。并非在几个实例(即结构)中已找到相互作用证据的一对域的每个实例都可能在功能上相互作用。我们的排序方法根据候选对象与DDI(模板)的已知示例在序列空间中的“距离”为候选对象评分。因此,它提供了一种自然的方式来处理域级交互中的异质性。结论我们的方法代表了将局部比对在基于序列的潜在人与微生物相互作用的搜索中的更明智的应用,该搜索使用先前的可用PPI数据。我们的方法在敏感性上受到模板数据集大小和多样性的限制,但是,鉴于已解决的蛋白质复杂结构的迅速积累,其范围和实用性有望不断提高。

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