海洋微生物多样性分析的相似网络方法

Wei Chen, Yong-mei Cheng, Shaowu Zhang, Li-yang Hao, Peng Ding
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引用次数: 0

摘要

世界海洋微生物是地球上最丰富的生物,对维持海洋生态平衡起着重要作用。然而,由于目前大规模数据的方法和对海洋微生物进行的狭窄调查的限制,人们对生态相互依赖性知之甚少,而微生物自然表现出显着的谱系间关联。本文提出了一种基于相似性网络的方法来表示和分析基于16S rRNA序列的海洋微生物之间潜在的相互作用。通过计算网络度、短路径、聚类系数等参数来表征相似网络拓扑结构。发现了几个核心子网络(或网络基序),表明海洋环境中微生物具有群集倾向和进化相关性,同时,网络基序的变量也表明微生物多样性存在区域差异。这些结果表明,基于网络的方法对于进一步了解实验技术后海洋微生物群落的复杂性和功能是有效的。
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A similarity network approach for analyzing the marine microbial diversity
The microbes in the world's oceans are most abundant organisms on earth, playing an important role in the maintenance the balance of marine ecology. However, little knowledge of ecological interdependencies is known due to the limitation of current method for large-scale data and narrow surveys done for marine microbes while microbe exhibited significant inter-lineage associations naturally. Here we present a similarity network-based method to represent and analyze potential interactions among the marine microbes based on the 16S rRNA sequences. A set of parameters such as network degrees, short path, clustering coefficient and so on, are computed to characterize the similarity network topology. A few core sub networks (or network motifs) were found which show that microbe in the marine environment has a cluster propensity and evolutionary relatedness, meanwhile, the variable of network motif also indicated that the microbial diversity has a regional difference. These results show the network-based methods are effective for advance understanding the complexity and function of the marine microbial community after experiment technical.
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