etagenome Analysis using Megan

D. Huson, Alexander F. Auch, Qi Ji, S. Schuster
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引用次数: 2

Abstract

In metagenomics, the goal is to analyze the genomic content of a sample of organisms collected from a common habitat. One approach is to apply large-scale random shotgun sequencing techniques to obtain a collection of DNA reads from the sample. This data is then compared against databases of known sequences such as NCBI-nr or NCBI-nt, in an attempt to identify the taxonomical content of the sample. We introduce a new software called MEGAN (Meta Genome ANalyzer) that generates species profiles from such sequencing data by assigning reads to taxa of the NCBI taxonomy using a straight-forward assignment algorithm. The approach is illustrated by application to a number of datasets obtained using both sequencing-by-synthesis and Sanger sequencing technology, including metagenomic data from a mammoth bone, a portion of the Sargasso sea data set, and several complete microbial test genomes used for validation proposes.
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使用Megan进行基因组分析
在宏基因组学中,目标是分析从共同栖息地收集的生物体样本的基因组内容。一种方法是应用大规模随机霰弹枪测序技术,从样本中获得DNA读数的集合。然后将这些数据与NCBI-nr或NCBI-nt等已知序列的数据库进行比较,试图确定样本的分类内容。本文介绍了一种名为MEGAN (Meta Genome ANalyzer)的新软件,该软件通过使用直接分配算法将这些测序数据分配给NCBI分类的分类群,从而生成物种概况。该方法通过应用于使用合成测序和Sanger测序技术获得的许多数据集来说明,包括来自猛犸象骨骼的宏基因组数据,马尾藻海数据集的一部分,以及用于验证建议的几个完整的微生物测试基因组。
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