Moitinho-Silva Lucas, Steinert Georg, Nielsen Shaun, Hardoim Cristiane C P, Wu Yu-Chen, McCormack Grace P, López-Legentil Susanna, Marchant Roman, Webster Nicole, Thomas Torsten, Hentschel Ute
Centre for Marine Bio-Innovation, University of New South WalesSydney, NSW, Australia.
School of Biological, Earth and Environmental Sciences, University of New South WalesSydney, NSW, Australia.
Front Microbiol. 2017 May 8;8:752. doi: 10.3389/fmicb.2017.00752. eCollection 2017.
The dichotomy between high microbial abundance (HMA) and low microbial abundance (LMA) sponges has been observed in sponge-microbe symbiosis, although the extent of this pattern remains poorly unknown. We characterized the differences between the microbiomes of HMA ( = 19) and LMA ( = 17) sponges (575 specimens) present in the Sponge Microbiome Project. HMA sponges were associated with richer and more diverse microbiomes than LMA sponges, as indicated by the comparison of alpha diversity metrics. Microbial community structures differed between HMA and LMA sponges considering Operational Taxonomic Units (OTU) abundances and across microbial taxonomic levels, from phylum to species. The largest proportion of microbiome variation was explained by the host identity. Several phyla, classes, and OTUs were found differentially abundant in either group, which were considered "HMA indicators" and "LMA indicators." Machine learning algorithms (classifiers) were trained to predict the HMA-LMA status of sponges. Among nine different classifiers, higher performances were achieved by Random Forest trained with phylum and class abundances. Random Forest with optimized parameters predicted the HMA-LMA status of additional 135 sponge species (1,232 specimens) without knowledge. These sponges were grouped in four clusters, from which the largest two were composed of species consistently predicted as HMA ( = 44) and LMA ( = 74). In summary, our analyses shown distinct features of the microbial communities associated with HMA and LMA sponges. The prediction of the HMA-LMA status based on the microbiome profiles of sponges demonstrates the application of machine learning to explore patterns of host-associated microbial communities.
在海绵-微生物共生关系中,已观察到高微生物丰度(HMA)海绵和低微生物丰度(LMA)海绵之间的二分法,尽管这种模式的程度仍知之甚少。我们对海绵微生物组项目中存在的HMA(n = 19)和LMA(n = 17)海绵(575个标本)的微生物群落差异进行了表征。如α多样性指标的比较所示,HMA海绵与比LMA海绵更丰富、更多样化的微生物群落相关。考虑到操作分类单元(OTU)丰度以及从门到物种的不同微生物分类水平,HMA和LMA海绵的微生物群落结构有所不同。微生物群落变化的最大比例由宿主身份解释。在两组中发现几个门、纲和OTU的丰度存在差异,这些被视为“HMA指标”和“LMA指标”。训练机器学习算法(分类器)来预测海绵的HMA-LMA状态。在九个不同的分类器中,使用门和纲丰度训练的随机森林表现更佳。具有优化参数的随机森林预测了另外135种海绵(1232个标本)的HMA-LMA状态,且无需先验知识。这些海绵被分为四个簇,其中最大的两个簇由一直被预测为HMA(n = 44)和LMA(n = 74)的物种组成。总之,我们的分析显示了与HMA和LMA海绵相关的微生物群落的不同特征。基于海绵微生物组概况对HMA-LMA状态的预测证明了机器学习在探索宿主相关微生物群落模式方面的应用。