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将生长动力学建模与机器学习相结合,揭示了微生物迁移对生物废水处理过程的影响,并确定了关键环境参数。

Coupling growth kinetics modeling with machine learning reveals microbial immigration impacts and identifies key environmental parameters in a biological wastewater treatment process.

机构信息

Department of Civil and Environmental Engineering, University of Illinois at Urbana-Champaign, 3207 Newmark Civil Engineering Laboratory, 205 North Mathews Ave, Urbana, IL, 61801, USA.

Petrochemicals Technology, BP America, Naperville, IL, 60563, USA.

出版信息

Microbiome. 2019 Apr 17;7(1):65. doi: 10.1186/s40168-019-0682-x.

Abstract

BACKGROUND

Ubiquitous in natural and engineered ecosystems, microbial immigration is one of the mechanisms shaping community assemblage. However, quantifying immigration impact remains challenging especially at individual population level. The activities of immigrants in the receiving community are often inadequately considered, leading to potential bias in identifying the relationship between community composition and environmental parameters.

RESULTS

This study quantified microbial immigration from an upstream full-scale anaerobic reactor to downstream activated sludge reactors. A mass balance was applied to 16S rRNA gene amplicon sequencing data to calculate the net growth rates of individual populations in the activated sludge reactors. Among the 1178 observed operational taxonomic units (OTUs), 582 had a positive growth rate, including all the populations with abundance > 0.1%. These active populations collectively accounted for 99% of the total sequences in activated sludge. The remaining 596 OTUs with a growth rate ≤ 0 were classified as inactive populations. All the abundant populations in the upstream anaerobic reactor were inactive in the activated sludge process, indicating a negligible immigration impact. We used a supervised learning regressor to predict environmental parameters based on community composition and compared the prediction accuracy based on either the entire community or the active populations. Temperature was the most predictable parameter, and the prediction accuracy was improved when only active populations were used to train the regressor.

CONCLUSIONS

Calculating growth rate of individual microbial populations in the downstream system provides an effective approach to determine microbial activity and quantify immigration impact. For the studied biological process, a marginal immigration impact was observed, likely due to the significant differences in the growth environments between the upstream and downstream processes. Excluding inactive populations as a result of immigration further enhanced the prediction of key environmental parameters affecting process performance.

摘要

背景

微生物的扩散在自然和工程生态系统中无处不在,是塑造群落组合的机制之一。然而,量化扩散影响仍然具有挑战性,尤其是在个体种群水平上。接收群落中移民的活动往往没有得到充分考虑,这导致在确定群落组成与环境参数之间的关系时存在潜在偏差。

结果

本研究从上游全规模厌氧反应器定量测定了微生物向下游活性污泥反应器的扩散。通过 16S rRNA 基因扩增子测序数据的质量平衡,计算了活性污泥反应器中各个种群的净增长率。在观察到的 1178 个操作分类单元(OTU)中,有 582 个具有正增长率,包括丰度大于 0.1%的所有种群。这些活跃种群共占活性污泥总序列的 99%。增长率≤0 的其余 596 个 OTU 被归类为非活跃种群。上游厌氧反应器中丰富的种群在活性污泥过程中均为非活跃,表明扩散影响可忽略不计。我们使用有监督学习回归器基于群落组成预测环境参数,并比较了基于整个群落或活跃种群进行预测的准确性。温度是最可预测的参数,当仅使用活跃种群来训练回归器时,预测准确性得到提高。

结论

计算下游系统中个体微生物种群的增长率为确定微生物活性和量化扩散影响提供了一种有效方法。对于所研究的生物过程,观察到的扩散影响很小,这可能是由于上游和下游过程的生长环境存在显著差异。由于移民导致的非活跃种群被排除在外,进一步提高了对影响过程性能的关键环境参数的预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/164f/6471889/556a994982d7/40168_2019_682_Fig1_HTML.jpg

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