Integrative Oceanography Division, Scripps Institution of Oceanography, UC San Diego, La Jolla, California, USA.
BP Biosciences Center, San Diego, California, USA.
Microbiol Spectr. 2022 Feb 23;10(1):e0190921. doi: 10.1128/spectrum.01909-21. Epub 2022 Feb 9.
Microbial community structure is influenced by the environment and in turn exerts control on many environmental parameters. We applied this concept in a bioreactor study to test whether microbial community structure contains information sufficient to predict the concentration of HS as the product of sulfate reduction. Microbial sulfate reduction is a major source of HS in many industrial and environmental systems and is often influenced by the existing physicochemical conditions. Production of HS in industrial systems leads to occupational hazards and adversely affects the quality of products. A long-term (148 days) experiment was conducted in upflow bioreactors to mimic sulfidogenesis, followed by inhibition with nitrate salts and a resumption of HS generation when inhibition was released. We determined microbial community structure in 731 samples across 20 bioreactors using 16S rRNA gene sequencing and applied a random forest algorithm to successfully predict different phases of sulfidogenesis and mitigation (accuracy = 93.17%) and sessile and effluent microbial communities (accuracy = 100%). Similarly derived regression models that also included cell abundances were able to predict HS concentration with remarkably high fidelity (R > 0.82). Metabolic profiles based on microbial community structure were also found to be reliable predictors for HS concentration (R = 0.78). These results suggest that microbial community structure contains information sufficient to predict sulfidogenesis in a closed system, with anticipated applications to microbially driven processes in open environments. Microbial communities control many biogeochemical processes. Many of these processes are impractical or expensive to measure directly. Because the taxonomic structure of the microbial community is indicative of its function, it encodes information that can be used to predict biogeochemistry. Here, we demonstrate how a machine learning technique can be used to predict sulfidogenesis, a key biogeochemical process in a model system. A distinction of this research was the ability to predict HS production in a bioreactor from the effluent bacterial community structure without direct observations of the sessile community or other environmental conditions. This study establishes the ability to use machine learning approaches in predicting sulfide concentrations in a closed system, which can be further developed as a valuable tool for predicting biogeochemical processes in open environments. As machine learning algorithms continue to improve, we anticipate increased applications of microbial community structure to predict key environmental and industrial processes.
微生物群落结构受环境影响,反过来又对许多环境参数进行控制。我们将这一概念应用于生物反应器研究中,以测试微生物群落结构是否包含足够的信息来预测作为硫酸盐还原产物的 HS 浓度。微生物硫酸盐还原是许多工业和环境系统中 HS 的主要来源,并且通常受到现有物理化学条件的影响。工业系统中 HS 的产生会导致职业危害,并对产品质量产生不利影响。在模拟硫化作用的上流式生物反应器中进行了一项长期(148 天)实验,随后用硝酸盐盐抑制,并在抑制解除后恢复 HS 的产生。我们使用 16S rRNA 基因测序技术在 20 个生物反应器中的 731 个样本中确定了微生物群落结构,并应用随机森林算法成功预测了硫化作用和缓解的不同阶段(准确率=93.17%)以及固定和流出微生物群落(准确率=100%)。同样基于微生物群落结构推导的回归模型也能够以非常高的精度预测 HS 浓度(R > 0.82)。基于微生物群落结构的代谢谱也被发现是 HS 浓度的可靠预测因子(R = 0.78)。这些结果表明,微生物群落结构包含足够的信息来预测封闭系统中的硫化作用,预计将应用于开放环境中的微生物驱动过程。微生物群落控制着许多生物地球化学过程。其中许多过程直接测量既不实际也昂贵。由于微生物群落的分类结构是其功能的指示,因此它编码了可以用于预测生物地球化学的信息。在这里,我们展示了机器学习技术如何用于预测模型系统中的关键生物地球化学过程——硫化作用。这项研究的一个区别是,能够从生物反应器的流出细菌群落结构预测 HS 的产生,而无需直接观察固定群落或其他环境条件。这项研究确立了在封闭系统中使用机器学习方法预测硫化物浓度的能力,这可以进一步发展成为预测开放环境中生物地球化学过程的有用工具。随着机器学习算法的不断改进,我们预计会有更多的应用将微生物群落结构用于预测关键的环境和工业过程。