School of Environment and State Key Joint Laboratory of Environment Simulation and Pollution Control, Tsinghua University, Beijing 100084, China.
Sci Total Environ. 2018 Jul 1;628-629:94-102. doi: 10.1016/j.scitotenv.2018.02.007. Epub 2018 Feb 13.
Linking microbial community structure to physiology and ecological processes is a critical focus of microbial ecology. To understand the microbial functional gene patterns related to soil greenhouse gas [carbon dioxide (CO), methane (CH) and nitrous oxide (NO)] emissions under oil contamination, we used functional gene array (GeoChip 5.0) analysis and network methods to investigate the feedback responses of soil microbial functional gene patterns and identify keystone genes in Shengli Oilfield, China. The microbial functional gene number, relative abundance and diversity involved in carbon degradation and nitrogen cycling decreased consistently with the reduced CO and NO flux in oil contaminated soils, whereas the gene number and relative abundance of methane-production related genes increased with contamination. Functional molecular ecological networks were built based on random matrix theory, where network structures and properties showed significantly variation between oil contaminated and uncontaminated soils (P<0.05). Network nodes, connectivity and complexity all reduced under oil contamination. The sensitive and the highest connective genes in the network were identified as keystone genes, based on Mann-Whitney U tests and network analysis. Our findings improved the understanding of the microbe-mediated mechanisms affecting soil greenhouse gas emissions.
将微生物群落结构与生理和生态过程联系起来是微生物生态学的一个关键焦点。为了了解油污染下与土壤温室气体(二氧化碳(CO)、甲烷(CH)和氧化亚氮(NO))排放相关的微生物功能基因模式,我们使用功能基因芯片(GeoChip 5.0)分析和网络方法来研究土壤微生物功能基因模式的反馈响应,并确定中国胜利油田的关键基因。在受油污染的土壤中,与碳降解和氮循环相关的微生物功能基因数量、相对丰度和多样性持续减少,而与甲烷生成相关的基因数量和相对丰度增加。基于随机矩阵理论构建了功能分子生态网络,其中网络结构和特性在污染和未污染土壤之间表现出显著差异(P<0.05)。网络节点、连接性和复杂性在油污染下均降低。根据曼-惠特尼 U 检验和网络分析,确定网络中敏感和最高连接性的基因是关键基因。我们的研究结果提高了对影响土壤温室气体排放的微生物介导机制的理解。