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A unified framework for unconstrained and constrained ordination of microbiome read count data

机译:微生物读取计数数据的无约束和无约束排序的统一框架

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摘要

Explorative visualization techniques provide a first summary of microbiome read count datasets through dimension reduction. A plethora of dimension reduction methods exists, but many of them focus primarily on sample ordination, failing to elucidate the role of the bacterial species. Moreover, implicit but often unrealistic assumptions underlying these methods fail to account for overdispersion and differences in sequencing depth, which are two typical characteristics of sequencing data. We combine log-linear models with a dispersion estimation algorithm and flexible response function modelling into a framework for unconstrained and constrained ordination. The method is able to cope with differences in dispersion between taxa and varying sequencing depths, to yield meaningful biological patterns. Moreover, it can correct for observed technical confounders, whereas other methods are adversely affected by these artefacts. Unlike distance-based ordination methods, the assumptions underlying our method are stated explicitly and can be verified using simple diagnostics. The combination of unconstrained and constrained ordination in the same framework is unique in the field and facilitates microbiome data exploration. We illustrate the advantages of our method on simulated and real datasets, while pointing out flaws in existing methods. The algorithms for fitting and plotting are available in the R-package RCM.
机译:探索性的可视化技术通过减少维数提供了微生物组读取计数数据集的第一个摘要。存在大量的降维方法,但是其中许多方法主要集中在样本排序上,未能阐明细菌物种的作用。此外,这些方法所基于的隐式但通常不切实际的假设无法解决测序数据的两个典型特征:过度分散和测序深度差异。我们将对数线性模型与色散估计算法和灵活的响应函数建模相结合,形成无约束和受约束排序的框架。该方法能够应付分类群之间的分散差异和不同的测序深度,从而产生有意义的生物学模式。此外,它可以纠正观察到的技术混杂因素,而其他方法会受到这些伪影的不利影响。与基于距离的排序方法不同,我们的方法所基于的假设是明确说明的,可以使用简单的诊断方法进行验证。在同一框架中无约束和有约束的排序的组合在本领域中是独特的,并有助于微生物组数据的探索。我们指出了我们的方法在模拟和真实数据集上的优势,同时指出了现有方法中的缺陷。 R-package RCM中提供了拟合和绘图算法。

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