PEMA: a flexible Pipeline for Environmental DNA Metabarcoding Analysis of the 16S/18S ribosomal RNA, ITS, and COI marker genes

Author:

Zafeiropoulos Haris12ORCID,Viet Ha Quoc1,Vasileiadou Katerina13,Potirakis Antonis1,Arvanitidis Christos14,Topalis Pantelis5,Pavloudi Christina1,Pafilis Evangelos1

Affiliation:

1. Institute of Marine Biology, Biotechnology and Aquaculture (IMBBC), Hellenic Centre for Marine Research (HCMR), Former U.S. Base of Gournes P.O. Box 2214, 71003, Heraklion, Crete, Greece

2. Department of Biology, University of Crete, Voutes University Campus, Heraklion, Greece

3. Charles University, Department of Ecology, Faculty of Science, Viničná 7, CZ-12844, Prague, Czech Republic

4. LifeWatch ERIC, Plaza España SN, SECTOR II-III 41013, Seville, Spain

5. Institute of Molecular Biology and Biotechnology (IMBB), Foundation for Research and Technology (FORTH), Foundation for Research and Technology – Hellas, N. Plastira 100, GR-70013, Heraklion, Crete, Greece

Abstract

Abstract Background Environmental DNA and metabarcoding allow the identification of a mixture of species and launch a new era in bio- and eco-assessment. Many steps are required to obtain taxonomically assigned matrices from raw data. For most of these, a plethora of tools are available; each tool's execution parameters need to be tailored to reflect each experiment's idiosyncrasy. Adding to this complexity, the computation capacity of high-performance computing systems is frequently required for such analyses. To address the difficulties, bioinformatic pipelines need to combine state-of-the art technologies and algorithms with an easy to get-set-use framework, allowing researchers to tune each study. Software containerization technologies ease the sharing and running of software packages across operating systems; thus, they strongly facilitate pipeline development and usage. Likewise programming languages specialized for big data pipelines incorporate features like roll-back checkpoints and on-demand partial pipeline execution. Findings PEMA is a containerized assembly of key metabarcoding analysis tools that requires low effort in setting up, running, and customizing to researchers’ needs. Based on third-party tools, PEMA performs read pre-processing, (molecular) operational taxonomic unit clustering, amplicon sequence variant inference, and taxonomy assignment for 16S and 18S ribosomal RNA, as well as ITS and COI marker gene data. Owing to its simplified parameterization and checkpoint support, PEMA allows users to explore alternative algorithms for specific steps of the pipeline without the need of a complete re-execution. PEMA was evaluated against both mock communities and previously published datasets and achieved results of comparable quality. Conclusions A high-performance computing–based approach was used to develop PEMA; however, it can be used in personal computers as well. PEMA's time-efficient performance and good results will allow it to be used for accurate environmental DNA metabarcoding analysis, thus enhancing the applicability of next-generation biodiversity assessment studies.

Funder

Hellenic Foundation for Research and Innovation

General Secretariat for Research and Technology

Publisher

Oxford University Press (OUP)

Subject

Computer Science Applications,Health Informatics

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