浮游细菌
河流生态系统
支流
生态学
生态演替
生物
流域
群落结构
拟杆菌
社区
溪流
生态系统
地理
浮游植物
营养物
16S核糖体RNA
计算机网络
遗传学
地图学
细菌
计算机科学
作者
Daniel S. Read,Hyun S. Gweon,Michael J. Bowes,Lindsay K. Newbold,Dawn Field,Mark Bailey,Robert I. Griffiths
出处
期刊:The ISME Journal
[Springer Nature]
日期:2014-09-19
卷期号:9 (2): 516-526
被引量:222
标识
DOI:10.1038/ismej.2014.166
摘要
Abstract Lotic ecosystems such as rivers and streams are unique in that they represent a continuum of both space and time during the transition from headwaters to the river mouth. As microbes have very different controls over their ecology, distribution and dispersion compared with macrobiota, we wished to explore biogeographical patterns within a river catchment and uncover the major drivers structuring bacterioplankton communities. Water samples collected across the River Thames Basin, UK, covering the transition from headwater tributaries to the lower reaches of the main river channel were characterised using 16S rRNA gene pyrosequencing. This approach revealed an ecological succession in the bacterial community composition along the river continuum, moving from a community dominated by Bacteroidetes in the headwaters to Actinobacteria-dominated downstream. Location of the sampling point in the river network (measured as the cumulative water channel distance upstream) was found to be the most predictive spatial feature; inferring that ecological processes pertaining to temporal community succession are of prime importance in driving the assemblages of riverine bacterioplankton communities. A decrease in bacterial activity rates and an increase in the abundance of low nucleic acid bacteria relative to high nucleic acid bacteria were found to correspond with these downstream changes in community structure, suggesting corresponding functional changes. Our findings show that bacterial communities across the Thames basin exhibit an ecological succession along the river continuum, and that this is primarily driven by water residence time rather than the physico-chemical status of the river.
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