4.7 Article

ARPEGGIO: Automated Reproducible Polyploid EpiGenetic GuIdance workflOw

Journal

BMC GENOMICS
Volume 22, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s12864-021-07845-2

Keywords

Snakemake; Epigenetics; Bisulfite-sequencing; Polyploidy; Allopolyploids; Reproducibility; Automation; Workflow; Dna-methylation; Whole-genome-bisulfite-sequencing

Funding

  1. University Research Priority Program (URPP) Evolution in Action of the University of Zurich
  2. JST CREST [JPMJCR16O3]
  3. Swiss National Science Foundation [31003A_182318]
  4. MEXT KAKENHI [16H06469]
  5. Swiss National Science Foundation (SNF) [31003A_182318] Funding Source: Swiss National Science Foundation (SNF)

Ask authors/readers for more resources

ARPEGGIO is a workflow for analyzing epigenetic data in allopolyploids, utilizing the EAGLE-RC read classification algorithm to address sequence similarity challenges among parental genomes. This workflow offers automation and a complete set of analyses starting from raw WGBS data to outputting a list of genes showing differential methylation, ensuring reproducibility with simple set up and interpretation. ARPEGGIO stands out as the only workflow supporting polyploid data, as shown through its performance evaluation and agreement with published results.
Background: Whole genome duplication (WGD) events are common in the evolutionary history of many living organisms. For decades, researchers have been trying to understand the genetic and epigenetic impact of WGD and its underlying molecular mechanisms. Particular attention was given to allopolyploid study systems, species resulting from an hybridization event accompanied by WGD. Investigating the mechanisms behind the survival of a newly formed allopolyploid highlighted the key role of DNA methylation. With the improvement of high-throughput methods, such as whole genome bisulfite sequencing (WGBS), an opportunity opened to further understand the role of DNA methylation at a larger scale and higher resolution. However, only a few studies have applied WGBS to allopolyploids, which might be due to lack of genomic resources combined with a burdensome data analysis process. To overcome these problems, we developed the Automated Reproducible Polyploid EpiGenetic GuIdance workflOw (ARPEGGIO): the first workflow for the analysis of epigenetic data in polyploids. This workflow analyzes WGBS data from allopolyploid species via the genome assemblies of the allopolyploid's parent species. ARPEGGIO utilizes an updated read classification algorithm (EAGLE-RC), to tackle the challenge of sequence similarity amongst parental genomes. ARPEGGIO offers automation, but more importantly, a complete set of analyses including spot checks starting from raw WGBS data: quality checks, trimming, alignment, methylation extraction, statistical analyses and downstream analyses. A full run of ARPEGGIO outputs a list of genes showing differential methylation. ARPEGGIO was made simple to set up, run and interpret, and its implementation ensures reproducibility by including both package management and containerization. Results: We evaluated ARPEGGIO in two ways. First, we tested EAGLE-RC's performance with publicly available datasets given a ground truth, and we show that EAGLE-RC decreases the error rate by 3 to 4 times compared to standard approaches. Second, using the same initial dataset, we show agreement between ARPEGGIO's output and published results. Compared to other similar workflows, ARPEGGIO is the only one supporting polyploid data. Conclusions: The goal of ARPEGGIO is to promote, support and improve polyploid research with a reproducible and automated set of analyses in a convenient implementation. ARPEGGIO is available at https://github.com/ supermaxiste/ARPEGGIO.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available