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DMclust, a Density‐based Modularity Method for Accurate OTU Picking of 16S rRNA Sequences

机译:DMCLUST,一种基于密度的模块化方法,用于精确OTU挑选16S rRNA序列

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Abstract Clustering 16S rRNA sequences into operational taxonomic units (OTUs) is a crucial step in analyzing metagenomic data. Although many methods have been developed, how to obtain an appropriate balance between clustering accuracy and computational efficiency is still a major challenge. A novel density‐based modularity clustering method, called DMclust, is proposed in this paper to bin 16S rRNA sequences into OTUs with high clustering accuracy. The DMclust algorithm consists of four main phases. It first searches for the sequence dense group defined as n ‐sequence community, in which the distance between any two sequences is less than a threshold. Then these dense groups are used to construct a weighted network, where dense groups are viewed as nodes, each pair of dense groups is connected by an edge, and the distance of pairwise groups represents the weight of the edge. Then, a modularity‐based community detection method is employed to generate the preclusters. Finally, the remaining sequences are assigned to their nearest preclusters to form OTUs. Compared with existing widely used methods, the experimental results on several metagenomic datasets show that DMclust has higher accurate clustering performance with acceptable memory usage.
机译:将16S rRNA序列分析到分析偏见数据的关键步骤。虽然已经开发了许多方法,但如何在聚类准确度和计算效率之间获得适当的平衡仍然是一个重大挑战。在本文中提出了一种称为DMClust的基于密度的模块化聚类方法,以高分聚类精度达到OTU的16S rRNA序列。 DMClust算法由四个主要阶段组成。它首先搜索定义为n序社区的序列密集组,其中任意两个序列之间的距离小于阈值。然后,这些致密基团用于构建加权网络,其中致密的基团被视为节点,每对致密基团通过边缘连接,并且成对基团的距离表示边缘的重量。然后,采用模块化的社区检测方法来生成预制度。最后,将剩余的序列分配给他们最近的预防器以形成OTU。与现有的广泛使用方法相比,若干偏见数据集的实验结果表明,DMClust具有更高的准确聚类性能,具有可接受的内存使用情况。

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