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Trios—promising in silico biomarkers for differentiating the effect of disease on the human microbiome network

机译:Trios-有希望的计算机生物标志物用于区分疾病对人类微生物组网络的影响

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摘要

Recent advances in the HMP (human microbiome project) research have revealed profound implications of the human microbiome to our health and diseases. We postulated that there should be distinctive features associated with healthy and/or diseased microbiome networks. Following Occam’s razor principle, we further hypothesized that triangle motifs or trios, arguably the simplest motif in a complex network of the human microbiome, should be sufficient to detect changes that occurred in the diseased microbiome. Here we test our hypothesis with six HMP datasets that cover five major human microbiome sites (gut, lung, oral, skin, and vaginal). The tests confirm our hypothesis and demonstrate that the trios involving the special nodes (e.g., most abundant OTU or MAO, and most dominant OTU or MDO, etc.) and interactions types (positive vs. negative) can be a powerful tool to differentiate between healthy and diseased microbiome samples. Our findings suggest that 12 kinds of trios (especially, dominantly inhibitive trio with mixed strategy, dominantly inhibitive trio with pure strategy, and fully facilitative strategy) may be utilized as in silico biomarkers for detecting disease-associated changes in the human microbiome, and may play an important role in personalized precision diagnosis of the human microbiome associated diseases.
机译:HMP(人类微生物组计划)研究的最新进展揭示了人类微生物组对我们的健康和疾病的深远影响。我们假设健康和/或患病的微生物组网络应具有与众不同的特征。遵循奥卡姆(Occam)的剃刀原理,我们进一步假设三角形基序或三重奏(可能是人类微生物组复杂网络中最简单的基序)应足以检测出患病微生物组中发生的变化。在这里,我们用覆盖五个主要人类微生物组部位(肠道,肺,口腔,皮肤和阴道)的六个HMP数据集来检验我们的假设。这些测试证实了我们的假设,并证明涉及特殊节点(例如,最丰富的OTU或MAO,以及最主要的OTU或MDO等)和交互类型(正向与负向)的三重组合可以成为区分以下三种情况的有力工具健康和患病的微生物组样本。我们的发现表明,可以将12种三重奏(特别是混合策略的显性抑制三重奏,纯策略的显性抑制三重奏和完全促进性策略)用作计算机生物标志物,以检测人类微生物组中与疾病相关的变化,并且可能在人类微生物组相关疾病的个性化精确诊断中发挥重要作用。

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