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Fast and accurate average genome size and 16S rRNA gene average copy number computation in metagenomic data

机译:快速准确的平均基因组大小和16S rRNA基因平均拷贝数计算偏心组数据

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Metagenomics caused a quantum leap in microbial ecology. However, the inherent size and complexity of metagenomic data limit its interpretation. The quantification of metagenomic traits in metagenomic analysis workflows has the potential to improve the exploitation of metagenomic data. Metagenomic traits are organisms' characteristics linked to their performance. They are measured at the genomic level taking a random sample of individuals in a community. As such, these traits provide valuable information to uncover microorganisms' ecological patterns. The Average Genome Size (AGS) and the 16S rRNA gene Average Copy Number (ACN) are two highly informative metagenomic traits that reflect microorganisms' ecological strategies as well as the environmental conditions they inhabit. Here, we present the ags.sh and acn.sh tools, which analytically derive the AGS and ACN metagenomic traits. These tools represent an advance on previous approaches to compute the AGS and ACN traits. Benchmarking shows that ags.sh is up to 11 times faster than state-of-the-art tools dedicated to the estimation AGS. Both ags.sh and acn.sh show comparable or higher accuracy than existing tools used to estimate these traits. To exemplify the applicability of both tools, we analyzed the 139 prokaryotic metagenomes of TARA Oceans and revealed the ecological strategies associated with different water layers. We took advantage of recent advances in gene annotation to develop the ags.sh and acn.sh tools to combine easy tool usage with fast and accurate performance. Our tools compute the AGS and ACN metagenomic traits on unassembled metagenomes and allow researchers to improve their metagenomic data analysis to gain deeper insights into microorganisms' ecology. The ags.sh and acn.sh tools are publicly available using Docker container technology at https://github.com/pereiramemo/AGS-and-ACN-tools .
机译:Metagenomics引起了微生物生态的量子飞跃。然而,偏心组织数据的固有尺寸和复杂性限制了其解释。偏见分析工作流程中的偏见性状性状的定量具有改善偏心组数据的剥削。 Metagenomic特征是与其表现相关的生物体特征。它们在基因组水平上测量,在社区中占据各个个体的随机样本。因此,这些特征提供了揭示微生物的生态模式的宝贵信息。平均基因组大小(AGS)和16S rRNA基因的平均拷贝数(ACN)是两种高度信息性的偏见性状,反映了微生物的生态策略以及它们居住的环境条件。在这里,我们介绍了AGS.SH和ACN.SH工具,其分析了AGS和ACN Metagenomic特征。这些工具代表了以前的方法来计算AGS和ACN特征的前进。基准测试显示,ags.sh比专门针对估计年牌的最先进的工具快11倍。 ags.sh和acn.sh都显示出比用于估计这些特征的现有工具的可比或更高的精度。为了举例说明两种工具的适用性,我们分析了塔拉海洋的139个原核梅毒群,并揭示了与不同水层相关的生态策略。我们利用了基因注释的最新进展,以开发AGS.SH和ACN.SH工具,以便快速准确地使用易于刀具使用。我们的工具将AGS和ACN Metagenomic特征计算在未组装的Metagenomes上,并允许研究人员改善其偏见数据分析,以获得更深入的洞察微生物的生态学。 AGS.SH和ACN.SH工具在HTTPS://github.com/pereiramemo/ags-and-acn-tools上公开可公开使用Docker Container技术。

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