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Microbial abundance patterns of host obesity inferred by the structural incorporation of association measures into interpretable classifiers

机译:通过将关联度量结构合并到可解释的分类器中推断出宿主肥胖的微生物丰度模式

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Obesity is a prevalent disease with severe complications. In recent years, interests have been geared towards exploring the relationship between gut microbial factors and the subject's degree of, or propensity to, obesity. With the relative abundance values of phylotypes as features, machine learning algorithms could be applied to identify predictive microbes that distinguish between subjects of different types, and infer the corresponding rules that describe “how” the differentiation is made. However, the relative abundance is influenced by a number of upstream factors, and the inherent information content can often times limit the validity of the inferred rules. We addressed this issue by structurally incorporating association measures into interpretable classifiers. The resulting model renders microbial abundance patterns that are both statistically significant and predictively valid. Although we concentrated on obesity in this paper, the proposed approach is applicable on 16S rRNA datasets of other domains as well. The inferred patterns are in line with current knowledge of the microbial world, while providing new insights on the interactions between microbial factors, and their effects on the host. As such, they are believed to constitute credible starting points for further research.
机译:肥胖是一种患有严重并发症的普遍存在疾病。近年来,利益旨在探索肠道微生物因子与受试者的关系,或肥胖的倾向。利用作为特征的特征的相对丰富值,可以应用机器学习算法来识别区分不同类型的对象的预测微生物,并推断描述“如何”分化的“如何”的规则。然而,相对丰度受到许多上游因素的影响,并且固有的信息内容通常可以限制推断规则的有效性。我们通过在可解释的分类器中结构地将关联措施纳入这个问题来解决这个问题。由此产生的模型使微生物丰富模式具有统计上显着和预测性的。虽然我们在本文中集中了肥胖,但该方法也适用于其他域的16S rRNA数据集。推断模式符合当前对微生物世界的知识,同时为微生物因子之间的相互作用提供新的见解,以及它们对宿主的影响。因此,他们被认为构成了进一步研究的可信起点。

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