LMAS: evaluating metagenomic short de novo assembly methods through defined communities

Author:

Mendes Catarina Inês1ORCID,Vila-Cerqueira Pedro1ORCID,Motro Yair2ORCID,Moran-Gilad Jacob2ORCID,Carriço João André1ORCID,Ramirez Mário1ORCID

Affiliation:

1. Instituto de Microbiologia, Instituto de Medicina Molecular, Faculdade de Medicina, Universidade de Lisboa , 1649-028 Lisboa, Portugal

2. Faculty of Health Sciences, Ben-Gurion University of the Negev , 8410501 Beer-Sheva, Israel

Abstract

Abstract Background The de novo assembly of raw sequence data is key in metagenomic analysis. It allows recovering draft genomes from a pool of mixed raw reads, yielding longer sequences that offer contextual information and provide a more complete picture of the microbial community. Findings To better compare de novo assemblers for metagenomic analysis, LMAS (Last Metagenomic Assembler Standing) was developed as a flexible platform allowing users to evaluate assembler performance given known standard communities. Overall, in our test datasets, k-mer De Bruijn graph assemblers outperformed the alternative approaches but came with a greater computational cost. Furthermore, assemblers branded as metagenomic specific did not consistently outperform other genomic assemblers in metagenomic samples. Some assemblers still in use, such as ABySS, MetaHipmer2, minia, and VelvetOptimiser, perform relatively poorly and should be used with caution when assembling complex samples. Meaningful strain resolution at the single-nucleotide polymorphism level was not achieved, even by the best assemblers tested. Conclusions The choice of a de novo assembler depends on the computational resources available, the replicon of interest, and the major goals of the analysis. No single assembler appeared an ideal choice for short-read metagenomic prokaryote replicon assembly, each showing specific strengths. The choice of metagenomic assembler should be guided by user requirements and characteristics of the sample of interest, and LMAS provides an interactive evaluation platform for this purpose. LMAS is open source, and the workflow and its documentation are available at https://github.com/B-UMMI/LMAS and https://lmas.readthedocs.io/, respectively.

Funder

Fundação para a Ciência e Tecnologia

Publisher

Oxford University Press (OUP)

Subject

Computer Science Applications,Health Informatics

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