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Associating microbiome composition with environmental covariates using generalized UniFrac distances

机译:使用广义UniFrac距离将微生物组组成与环境协变量关联

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Motivation: The human microbiome plays an important role in human disease and health. Identification of factors that affect the microbiome composition can provide insights into disease mechanism as well as suggest ways to modulate the microbiome composition for therapeutical purposes. Distance-based statistical tests have been applied to test the association of microbiome composition with environmental or biological covariates. The unweighted and weighted UniFrac distances are the most widely used distance measures. However, these two measures assign too much weight either to rare lineages or to most abundant lineages, which can lead to loss of power when the important composition change occurs in moderately abundant lineages. Results: We develop generalized UniFrac distances that extend the weighted and unweighted UniFrac distances for detecting a much wider range of biologically relevant changes. We evaluate the use of generalized UniFrac distances in associating microbiome composition with environmental covariates using extensive Monte Carlo simulations. Our results show that tests using the unweighted and weighted UniFrac distances are less powerful in detecting abundance change in moderately abundant lineages. In contrast, the generalized UniFrac distance is most powerful in detecting such changes, yet it retains nearly all its power for detecting rare and highly abundant lineages. The generalized UniFrac distance also has an overall better power than the joint use of unweighted/weighted UniFrac distances. Application to two real microbiome datasets has demonstrated gains in power in testing the associations between human microbiome and diet intakes and habitual smoking.
机译:动机:人类微生物组在人类疾病和健康中起着重要作用。鉴定影响微生物组组成的因素可以提供对疾病机理的见识,并可以提出为治疗目的调节微生物组组成的方法。基于距离的统计测试已应用于测试微生物组组成与环境或生物协变量的关联。未加权和加权UniFrac距离是使用最广泛的距离度量。但是,这两种措施将过多的权重分配给稀有谱系或最丰富的谱系,当重要的成分变化发生在中等丰满的谱系中时,这可能导致功率损失。结果:我们开发了通用的UniFrac距离,该距离扩展了加权和未加权的UniFrac距离,以检测更大范围的生物学相关变化。我们使用广泛的蒙特卡洛模拟评估将通用UniFrac距离用于将微生物组组成与环境协变量相关联的使用。我们的结果表明,使用未加权和加权UniFrac距离进行的测试在检测中等丰满谱系中的丰度变化时功能较弱。相比之下,广义UniFrac距离在检测此类变化方面功能最强大,但几乎保留了其检测稀有和高度丰富谱系的全部能力。广义的UniFrac距离也比联合使用未加权/加权的UniFrac距离具有更好的整体功效。在两个真实的微生物组数据集上的应用表明,在测试人类微生物组与饮食摄入量和习惯性吸烟之间的关联方面,能力得到了提高。

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