Wijaya Jonathan, Oh Seungdae
Department of Civil Engineering, College of Engineering, Kyung Hee University, Yongin, Republic of Korea.
Department of Civil Engineering, College of Engineering, Kyung Hee University, Yongin, Republic of Korea.
Environ Res. 2023 Apr 1;222:115366. doi: 10.1016/j.envres.2023.115366. Epub 2023 Jan 25.
Membrane bioreactor (MBR) systems are one of the most widely used wastewater treatment processes for various municipal and industrial waste streams. The present study aimed to advance the understanding of ecologically important keystone taxa that play an important role in full-scale MBR systems. A machine-learning (ML) modeling framework based on microbiome data was developed to successfully predict, with an average accuracy of >91.6%, the operational characteristics of three representative full-scale wastewater systems: an MBR, a conventional activated sludge system, and a sequencing batch reactor. ML-based feature-importance analysis identified Ferruginibacter as a keystone organism in the MBR system. The phylogeny and known ecophysiology of members of Ferruginibacter supported their role in metabolizing complex organic polymers (e.g., extracellular polymeric substances) in MBR systems characterized by high concentrations of mixed liquor suspended solids and a high solid retention time. ML regression modeling also revealed temporal patterns of Ferruginibacter in response to water temperature. ML modeling was thus successfully employed in the present study to investigate complex/non-linear relationships between keystone taxa and environmental conditions that cannot be detected using conventional approaches. Overall, our microbiome-data-enabled ML modeling approach represents a methodological advance for identifying keystone taxa and their complex ecological interactions, which has implications for the sustainable and predictive management of MBR systems.
膜生物反应器(MBR)系统是处理各种城市和工业废水流时应用最广泛的废水处理工艺之一。本研究旨在加深对在全尺寸MBR系统中发挥重要作用的具有生态重要性的关键分类群的理解。基于微生物组数据开发了一个机器学习(ML)建模框架,以成功预测三个具有代表性的全尺寸废水系统的运行特性,平均准确率>91.6%,这三个系统分别是一个MBR系统、一个传统活性污泥系统和一个序批式反应器。基于ML的特征重要性分析确定了Ferruginibacter是MBR系统中的关键生物。Ferruginibacter成员的系统发育和已知生态生理学支持了它们在以高浓度混合液悬浮固体和高固体停留时间为特征的MBR系统中代谢复杂有机聚合物(如胞外聚合物)的作用。ML回归建模还揭示了Ferruginibacter响应水温的时间模式。因此,本研究成功应用ML建模来研究关键分类群与环境条件之间复杂/非线性关系,而这些关系是使用传统方法无法检测到的。总体而言,我们基于微生物组数据的ML建模方法代表了一种在识别关键分类群及其复杂生态相互作用方面的方法学进展,这对MBR系统的可持续和预测性管理具有重要意义。