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MethylScore, a pipeline for accurate and context-aware identification of differentially methylated regions from population-scale plant WGBS data

View ORCID ProfilePatrick Hüther, View ORCID ProfileJörg Hagmann, View ORCID ProfileAdam Nunn, View ORCID ProfileIoanna Kakoulidou, View ORCID ProfileRahul Pisupati, View ORCID ProfileDavid Langenberger, View ORCID ProfileDetlef Weigel, View ORCID ProfileFrank Johannes, View ORCID ProfileSebastian J. Schultheiss, View ORCID ProfileClaude Becker
doi: https://doi.org/10.1101/2022.01.06.475031
Patrick Hüther
1Gregor Mendel Institute of Molecular Plant Biology GmbH, Austrian Academy of Sciences, Vienna BioCenter (VBC), 1030 Vienna, Austria
2LMU Biocenter, Faculty of Biology, Ludwig-Maximilians-University Munich, 82152 Martinsried, Germany
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Jörg Hagmann
3Computomics GmbH, 72072 Tübingen, Germany
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Adam Nunn
4ecSeq Bioinformatics GmbH, 04103 Leipzig, Germany
5Department of Computer Science, Leipzig University, 04107 Leipzig, Germany
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Ioanna Kakoulidou
6Department of Plant Sciences, Technical University of Munich, Freising, Germany
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Rahul Pisupati
1Gregor Mendel Institute of Molecular Plant Biology GmbH, Austrian Academy of Sciences, Vienna BioCenter (VBC), 1030 Vienna, Austria
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David Langenberger
4ecSeq Bioinformatics GmbH, 04103 Leipzig, Germany
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Detlef Weigel
7Department of Molecular Biology, Max Planck Institute of Developmental Biology, 72076 Tübingen, Germany
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Frank Johannes
6Department of Plant Sciences, Technical University of Munich, Freising, Germany
8Institute for Advanced Study, Technical University of Munich, Garching, Germany
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Sebastian J. Schultheiss
3Computomics GmbH, 72072 Tübingen, Germany
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  • For correspondence: sebastian.schultheiss@computomics.com claude.becker@biologie.uni-muenchen.de
Claude Becker
1Gregor Mendel Institute of Molecular Plant Biology GmbH, Austrian Academy of Sciences, Vienna BioCenter (VBC), 1030 Vienna, Austria
2LMU Biocenter, Faculty of Biology, Ludwig-Maximilians-University Munich, 82152 Martinsried, Germany
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  • For correspondence: sebastian.schultheiss@computomics.com claude.becker@biologie.uni-muenchen.de
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Abstract

Whole-genome bisulfite sequencing (WGBS) is the standard method for profiling DNA methylation at single-nucleotide resolution. Many WGBS-based studies aim to identify biologically relevant loci that display differential methylation between genotypes, treatment groups, tissues, or developmental stages. Over the years, different tools have been developed to extract differentially methylated regions (DMRs) from whole-genome data. Often, such tools are built upon assumptions from mammalian data and do not consider the substantially more complex and variable nature of plant DNA methylation. Here, we present MethylScore, a pipeline to analyze WGBS data and to account for plant-specific DNA methylation properties. MethylScore processes data from genomic alignments to DMR output and is designed to be usable by novice and expert users alike. It uses an unsupervised machine learning approach to segment the genome by classification into states of high and low methylation, substantially reducing the number of necessary statistical tests while increasing the signal-to-noise ratio and the statistical power. We show how MethylScore can identify DMRs from hundreds of samples and how its data-driven approach can stratify associated samples without prior information. We identify DMRs in the A. thaliana 1001 Genomes dataset to unveil known and unknown genotype-epigenotype associations. MethylScore is an accessible pipeline for plant WGBS data, with unprecedented features for DMR calling in small- and large-scale datasets; it is built as a Nextflow pipeline and its source code is available at https://github.com/Computomics/MethylScore.

Competing Interest Statement

The authors declare the following competing interests: JH is currently an employee of Computomics GmbH. S.J.S. is currently the CEO of and holds shares in Computomics GmbH. A.N. is currently an employee of ecSeq Bioinformatics GmbH. D.L. is currently the CEO of and holds shares in ecSeq Bioinformatics GmbH.

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY 4.0 International license.
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Posted January 06, 2022.
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MethylScore, a pipeline for accurate and context-aware identification of differentially methylated regions from population-scale plant WGBS data
Patrick Hüther, Jörg Hagmann, Adam Nunn, Ioanna Kakoulidou, Rahul Pisupati, David Langenberger, Detlef Weigel, Frank Johannes, Sebastian J. Schultheiss, Claude Becker
bioRxiv 2022.01.06.475031; doi: https://doi.org/10.1101/2022.01.06.475031
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MethylScore, a pipeline for accurate and context-aware identification of differentially methylated regions from population-scale plant WGBS data
Patrick Hüther, Jörg Hagmann, Adam Nunn, Ioanna Kakoulidou, Rahul Pisupati, David Langenberger, Detlef Weigel, Frank Johannes, Sebastian J. Schultheiss, Claude Becker
bioRxiv 2022.01.06.475031; doi: https://doi.org/10.1101/2022.01.06.475031

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