Machine learning and metagenomics identifies uncharacterized taxa inferred to drive biogeochemical cycles in a subtropical hypereutrophic estuary

IF 5.1 Q1 ECOLOGY
Apoorva Prabhu, Sanjana Tule, M. Chuvochina, Mikael Bodén, Simon J McIlroy, Julian Zaugg, Chris Rinke
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Abstract

Anthropogenic influences have drastically increased nutrient concentrations in many estuaries globally, and microbial communities have adapted to the resulting hypereutrophic ecosystems. However, our knowledge of the dominant microbial taxa and their potential functions in these ecosystems has remained sparse. Here, we study prokaryotic community dynamics in a temporal–spatial dataset, from a subtropical hypereutrophic estuary. Screening 54 water samples across brackish to marine sites revealed that nutrient concentrations and salinity best explained spatial community variations, whereas temperature and dissolved oxygen likely drive seasonal shifts. By combining short and long read sequencing data, we recovered 2459 metagenome-assembled genomes (MAGs), proposed new taxon names for previously uncharacterised lineages, and created an extensive, habitat specific genome reference database. Community profiling based on this genome reference database revealed a diverse prokaryotic community comprising 61 bacterial and 18 archaeal phyla, and resulted in an improved taxonomic resolution at lower ranks down to genus level. We found that the vast majority (61 out of 73) of abundant genus level taxa (>1% average) represented unnamed and novel lineages, and that all genera could be clearly separated into brackish and marine ecotypes with inferred habitat specific functions. Applying supervised machine learning and metabolic reconstruction, we identified several microbial indicator taxa responding directly or indirectly to elevated nitrate and total phosphorus concentrations. In conclusion, our analysis highlights the importance of improved taxonomic resolution, sheds light on the role of previously uncharacterised lineages in estuarine nutrient cycling, and identifies microbial indicators for nutrient levels crucial in estuary health assessments.
机器学习和元基因组学确定了亚热带高富营养化河口生物地球化学循环的未表征类群
受人类活动的影响,全球许多河口的营养物质浓度急剧增加,微生物群落适应了由此产生的高富营养化生态系统。然而,我们对这些生态系统中的主要微生物类群及其潜在功能的了解仍然很少。在这里,我们研究了亚热带高富营养化河口时空数据集中的原核生物群落动态。对从咸水到海洋的 54 个水样进行筛选后发现,营养物浓度和盐度最能解释群落的空间变化,而温度和溶解氧可能是季节性变化的驱动因素。通过结合长短读数测序数据,我们恢复了 2459 个元基因组组装基因组(MAGs),为以前未定性的品系提出了新的分类群名称,并创建了一个广泛的、针对特定生境的基因组参考数据库。基于该基因组参考数据库的群落剖析揭示了由 61 个细菌门和 18 个古细菌门组成的原核生物群落的多样性,并提高了低级到属一级的分类分辨率。我们发现,绝大多数(73 个中的 61 个)丰富的属级类群(平均大于 1%)代表了未命名的新品系,而且所有属都可以清晰地区分为咸水生态型和海洋生态型,并推断出特定生境的功能。通过监督机器学习和代谢重建,我们确定了几个直接或间接响应硝酸盐和总磷浓度升高的微生物指示类群。总之,我们的分析强调了提高分类学分辨率的重要性,揭示了以前未表征的类群在河口营养循环中的作用,并确定了河口健康评估中至关重要的营养水平微生物指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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