Rudar Josip, Golding G Brian, Kremer Stefan C, Hajibabaei Mehrdad
Department of Integrative Biology & Centre for Biodiversity Genomics, University of Guelph, Guelph, Ontario, Canada.
Department of Biology, McMaster University, Hamilton, Ontario, Canada.
Microbiol Spectr. 2023 Mar 6;11(2):e0206522. doi: 10.1128/spectrum.02065-22.
Developing an understanding of how microbial communities vary across conditions is an important analytical step. We used 16S rRNA data isolated from human stool samples to investigate whether learned dissimilarities, such as those produced using unsupervised decision tree ensembles, can be used to improve the analysis of the composition of bacterial communities in patients suffering from Crohn's disease and adenomas/colorectal cancers. We also introduce a workflow capable of learning dissimilarities, projecting them into a lower dimensional space, and identifying features that impact the location of samples in the projections. For example, when used with the centered log ratio transformation, our new workflow (TreeOrdination) could identify differences in the microbial communities of Crohn's disease patients and healthy controls. Further investigation of our models elucidated the global impact amplicon sequence variants (ASVs) had on the locations of samples in the projected space and how each ASV impacted individual samples in this space. Furthermore, this approach can be used to integrate patient data easily into the model and results in models that generalize well to unseen data. Models employing multivariate splits can improve the analysis of complex high-throughput sequencing data sets because they are better able to learn about the underlying structure of the data set. There is an ever-increasing level of interest in accurately modeling and understanding the roles that commensal organisms play in human health and disease. We show that learned representations can be used to create informative ordinations. We also demonstrate that the application of modern model introspection algorithms can be used to investigate and quantify the impacts of taxa in these ordinations, and that the taxa identified by these approaches have been associated with immune-mediated inflammatory diseases and colorectal cancer.
了解微生物群落如何随条件变化是一个重要的分析步骤。我们使用从人类粪便样本中分离出的16S rRNA数据,来研究诸如使用无监督决策树集成产生的那些习得的差异,是否可用于改善对克罗恩病患者以及腺瘤/结直肠癌患者细菌群落组成的分析。我们还引入了一种工作流程,该流程能够学习差异、将它们投影到低维空间,并识别影响样本在投影中位置的特征。例如,当与中心对数比变换一起使用时,我们的新工作流程(TreeOrdination)可以识别克罗恩病患者和健康对照者微生物群落的差异。对我们模型的进一步研究阐明了扩增子序列变体(ASV)对投影空间中样本位置的全局影响,以及每个ASV如何影响该空间中的单个样本。此外,这种方法可用于轻松地将患者数据整合到模型中,并产生能很好地推广到未见数据的模型。采用多变量分割的模型可以改善对复杂高通量测序数据集的分析,因为它们能够更好地了解数据集的潜在结构。人们对准确建模和理解共生生物在人类健康和疾病中所起的作用的兴趣与日俱增。我们表明,习得的表示可用于创建信息丰富的排序。我们还证明,现代模型自省算法的应用可用于研究和量化分类群在这些排序中的影响,并且通过这些方法识别出的分类群与免疫介导的炎症性疾病和结直肠癌有关。