异养
生态学
原生生物
生物
自然(考古学)
微生物种群生物学
微生物生态学
生化工程
环境科学
生态系统
多样性(政治)
营养物
极端环境
水生生态系统
航程(航空)
作者
Hang Song,Katherine Dowdell,Vincent Delafont,Steven Skerlos,Lutgarde Raskin
标识
DOI:10.1021/acs.est.5c04958
摘要
Heterotrophic protists can be considered the dark matter of microbial communities in engineered water systems. They are ubiquitous and ecologically significant yet remain largely overlooked. Although a growing body of research demonstrates their pivotal roles (e.g., predation, symbiosis, and nutrient cycling) in microbial communities in natural ecosystems, their functions in engineered water systems are poorly characterized, and heterotrophic protists are frequently excluded from microbial analyses. This is largely due to methodological constraints that have only recently been overcome. Recent advances in imaging, high-throughput sequencing, and meta-omics approaches, combined with expanding reference databases, have revolutionized studies of protist diversity and functions in a wide range of natural environments. Drawing on research from the fields of protistology, microbial ecology, and environmental microbiology, this review explores how the well-documented ecological roles of heterotrophic protists in natural environments translate to engineered ecosystems, offering insights into their functions in water treatment. We critically evaluate recent literature to synthesize both beneficial roles and potential risks of heterotrophic protists in various water treatment systems, while identifying key knowledge gaps and proposing directions for future research. We advocate for a shift in perspective that recognizes heterotrophic protists as important players and call for their integration into microbial community characterization and ecological frameworks in microbial ecology studies of engineered water systems. This integration will transform our understanding of microbial communities in engineered water systems, ultimately enabling novel, mechanistic, and ecologically informed management strategies.
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