An ORFome assembly approach to metagenomics sequences analysis.

Yuzhen Ye, Haixu Tang
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Abstract

Metagenomics is an emerging methodology for the direct genomic analysis of a mixed community of uncultured microorganisms. The current analyses of metagenomics data largely rely on the computational tools originally designed for microbial genomics projects. The challenge of assembling metagenomic sequences arises mainly from the short reads and the high species complexity of the community. Alternatively, individual (short) reads will be searched directly against databases of known genes (or proteins) to identify homologous sequences. The latter approach may have low sensitivity and specificity in identifying homologous sequences, which may further bias the subsequent diversity analysis. In this paper, we present a novel approach to metagenomic data analysis, called Metagenomic ORFome Assembly (MetaORFA). The whole computational framework consists of three steps. Each read from a metagenomics project will first be annotated with putative open reading frames (ORFs) that likely encode proteins. Next, the predicted ORFs are assembled into a collection of peptides using an EULER assembly method. Finally, the assembled peptides (i.e., ORFome) are used for database searching of homologs and subsequent diversity analysis. We applied MetaORFA approach to several metagenomics datasets with low coverage short reads. The results show that MetaORFA can produce long peptides even when the sequence coverage of reads is extremely low. Hence, the ORFome assembly significantly increased the sensitivity of homology searching, and may potentially improve the diversity analysis of the metagenomic data. This improvement is especially useful for the metagenomic projects when the genome assembly does not work because of the low sequence coverage.

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ORFome组装方法用于宏基因组序列分析。
宏基因组学是一种新兴的方法,用于对未培养的混合微生物群落进行直接基因组分析。目前元基因组学数据的分析很大程度上依赖于最初为微生物基因组学项目设计的计算工具。组装宏基因组序列的挑战主要来自于群落的短序列和高物种复杂性。或者,单个(短)reads将直接针对已知基因(或蛋白质)的数据库进行搜索,以确定同源序列。后一种方法在识别同源序列时可能灵敏度和特异性较低,这可能进一步影响后续的多样性分析。在本文中,我们提出了一种新的宏基因组数据分析方法,称为宏基因组ORFome组装(metagenomics ORFome Assembly, MetaORFA)。整个计算框架由三个步骤组成。每个来自宏基因组项目的读数将首先用可能编码蛋白质的假定开放阅读框(orf)进行注释。接下来,使用EULER组装方法将预测的orf组装成肽的集合。最后,将组装好的多肽(即ORFome)用于同源物的数据库检索和随后的多样性分析。我们将MetaORFA方法应用于几个覆盖率低的短reads元基因组学数据集。结果表明,MetaORFA即使在reads的序列覆盖率极低的情况下也能产生长肽。因此,ORFome组件显著提高了同源性搜索的敏感性,并可能潜在地改善宏基因组数据的多样性分析。当基因组组装由于低序列覆盖率而无法工作时,这种改进对宏基因组计划特别有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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