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Elucidating food web structure of the Poyang Lake ecosystem using amino acid nitrogen isotopes and Bayesian mixing model
Zhongyi Zhang;  Jing Tian;  Yansheng Cao;  Nengjian Zheng;  Jingjing Zhao;  Hongwei Xiao;  Wei Guo;  Renguo Zhu;  Huayun Xiao
2019
发表期刊Limnology and Oceanography: Methods
卷号17期号:11页码:555-564
摘要

Compound‐specific isotope analysis of amino acids (CSIA‐AA) is regarded as a more advanced method of unraveling food web connections than the traditional bulk isotope approach. One of the most important assumptions of the CSIA‐AA approach is that the initial offset (β) between glutamate and phenylalanine in primary producers should remain unchanged. However, the considerable difference in β values between algae (+3.4‰) and vascular plants (−8.0‰) raises concern regarding the application of the CSIA‐AA approach for complex ecosystems that depend on both resources. In the present study, a Bayesian mixing model was used to estimate the individual contribution of basal dietary resources to each consumer of Poyang Lake, and then, the β was reevaluated to adapt to the assimilation of the individual primary producer for each consumer specimen. In general, the contributions of vascular plant‐derived resources to most consumers are consistent with their feeding behaviors. The smaller contribution of vascular plants to planktivorous fish (usually less than 20%) is biologically expected because of their feeding ecology. Using this strategy, we successfully obtained realistic trophic positions (TP) of consumers in Poyang Lake, which are significantly different from traditional TPalgae or TPvascular. For instance, the TP value of grass carp (2.04) was consistent with the feeding behavior of this fish, i.e., they primarily feed on vascular hydrophytes. Therefore, the combination of the CSIA‐AA and Bayesian mixing model provides a better understanding of food web structures, even in a complex freshwater ecosystem.

收录类别SCI
语种英语
文献类型期刊论文
条目标识符http://ir.gyig.ac.cn/handle/42920512-1/10818
专题环境地球化学国家重点实验室
作者单位1.Jiangxi Province Key Laboratory of the Causes and Control of Atmospheric Pollution, East China University of Technology,Nanchang 330013, China
2.School of Water Resources and Environmental Engineering, East China University of Technology, Nanchang 330013, China
3.State K ey Laboratory of Environmental Geochemistry, Institute of Geochemistry, Chinese Academy of Sciences, Guiyang 550081, China
4.University of Chinese Academy of Sciences, Beijing 100039, China
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GB/T 7714
Zhongyi Zhang;Jing Tian;Yansheng Cao;Nengjian Zheng;Jingjing Zhao;Hongwei Xiao;Wei Guo;Renguo Zhu;Huayun Xiao. Elucidating food web structure of the Poyang Lake ecosystem using amino acid nitrogen isotopes and Bayesian mixing model[J]. Limnology and Oceanography: Methods,2019,17(11):555-564.
APA Zhongyi Zhang;Jing Tian;Yansheng Cao;Nengjian Zheng;Jingjing Zhao;Hongwei Xiao;Wei Guo;Renguo Zhu;Huayun Xiao.(2019).Elucidating food web structure of the Poyang Lake ecosystem using amino acid nitrogen isotopes and Bayesian mixing model.Limnology and Oceanography: Methods,17(11),555-564.
MLA Zhongyi Zhang;Jing Tian;Yansheng Cao;Nengjian Zheng;Jingjing Zhao;Hongwei Xiao;Wei Guo;Renguo Zhu;Huayun Xiao."Elucidating food web structure of the Poyang Lake ecosystem using amino acid nitrogen isotopes and Bayesian mixing model".Limnology and Oceanography: Methods 17.11(2019):555-564.
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