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MetLab: An In Silico Experimental Design, Simulation and Analysis Tool for Viral Metagenomics Studies

机译:MetLab:用于病毒超基因组学研究的计算机模拟实验设计,仿真和分析工具

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摘要

Metagenomics, the sequence characterization of all genomes within a sample, is widely used as a virus discovery tool as well as a tool to study viral diversity of animals. Metagenomics can be considered to have three main steps; sample collection and preparation, sequencing and finally bioinformatics. Bioinformatic analysis of metagenomic datasets is in itself a complex process, involving few standardized methodologies, thereby hampering comparison of metagenomics studies between research groups. In this publication the new bioinformatics framework MetLab is presented, aimed at providing scientists with an integrated tool for experimental design and analysis of viral metagenomes. MetLab provides support in designing the metagenomics experiment by estimating the sequencing depth needed for the complete coverage of a species. This is achieved by applying a methodology to calculate the probability of coverage using an adaptation of Stevens' theorem. It also provides scientists with several pipelines aimed at simplifying the analysis of viral metagenomes, including; quality control, assembly and taxonomic binning. We also implement a tool for simulating metagenomics datasets from several sequencing platforms. The overall aim is to provide virologists with an easy to use tool for designing, simulating and analyzing viral metagenomes. The results presented here include a benchmark towards other existing software, with emphasis on detection of viruses as well as speed of applications. This is packaged, as comprehensive software, readily available for Linux and OSX users at https://github.com/norling/metlab.
机译:元基因组学是样品中所有基因组的序列特征,被广泛用作病毒发现工具以及研究动物病毒多样性的工具。元基因组学可以分为三个主要步骤;样品收集和准备,测序以及最后的生物信息学。宏基因组数据集的生物信息学分析本身就是一个复杂的过程,涉及很少的标准化方法,从而妨碍了研究组之间宏基因组学研究的比较。在本出版物中,介绍了新的生物信息学框架MetLab,旨在为科学家提供用于病毒基因组的实验设计和分析的集成工具。 MetLab通过估算物种完全覆盖所需的测序深度,为设计宏基因组学实验提供支持。这是通过应用一种方法来实现的,该方法使用对史蒂文斯定理的改编来计算覆盖率。它还为科学家提供了旨在简化病毒基因组分析的几种途径,包括:质量控制,组装和分类分类。我们还实现了一种工具,用于模拟来自多个测序平台的宏基因组学数据集。总体目标是为病毒学家提供一种易于使用的工具,用于设计,模拟和分析病毒基因组。此处显示的结果包括针对其他现有软件的基准,重点是病毒的检测以及应用程序的速度。它作为综合软件打包在一起,可从https://github.com/norling/metlab上的Linux和OSX用户轻松获得。

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