Meta-omics approaches to understand and improve wastewater treatment systems

废水 组学 生物 计算机科学 数据科学 计算生物学 环境科学 生物信息学 废物管理 工程类
作者
Elisa Rodríguez,Pedro A. García‐Encina,Alfons Johannes Maria Stams,Farai Maphosa,Diana Z. Sousa
出处
期刊:Reviews In Environmental Science And Bio/technology [Springer Science+Business Media]
卷期号:14 (3): 385-406 被引量:78
标识
DOI:10.1007/s11157-015-9370-x
摘要

Biological treatment of wastewaters depends on microbial processes, usually carried out by mixed microbial communities. Environmental and operational factors can affect microorganisms and/or impact microbial community function, and this has repercussion in bioreactor performance. Novel high-throughput molecular methods (metagenomics, metatranscriptomics, metaproteomics, metabolomics) are providing detailed knowledge on the microorganisms governing wastewater treatment systems and on their metabolic capabilities. The genomes of uncultured microbes with key roles in wastewater treatment plants (WWTP), such as the polyphosphate-accumulating microorganism “Candidatus Accumulibacter phosphatis”, the nitrite oxidizer “Candidatus Nitrospira defluvii” or the anammox bacterium “Candidatus Kuenenia stuttgartiensis” are now available through metagenomic studies. Metagenomics allows to genetically characterize full-scale WWTP and provides information on the lifestyles and physiology of key microorganisms for wastewater treatment. Integrating metagenomic data of microorganisms with metatranscriptomic, metaproteomic and metabolomic information provides a better understanding of the microbial responses to perturbations or environmental variations. Data integration may allow the creation of predictive behavior models of wastewater ecosystems, which could help in an improved exploitation of microbial processes. This review discusses the impact of meta-omic approaches on the understanding of wastewater treatment processes, and the implications of these methods for the optimization and design of wastewater treatment bioreactors
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