La Trobe

MethPat: a tool for the analysis and visualisation of complex methylation patterns obtained by massively parallel sequencing

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posted on 2023-01-31, 05:34 authored by NC Wong, BJ Pope, IL Candiloro, D Korbie, M Trau, Stephen Q Wong, Thomas Mikeska, X Zhang, M Pitman, S Eggers, Stephen R Doyle, Alexander Dobrovic
Background: DNA methylation at a gene promoter region has the potential to regulate gene transcription. Patterns of methylation over multiple CpG sites in a region are often complex and cell type specific, with the region showing multiple allelic patterns in a sample. This complexity is commonly obscured when DNA methylation data is summarised as an average percentage value for each CpG site (or aggregated across CpG sites). True representation of methylation patterns can only be fully characterised by clonal analysis. Deep sequencing provides the ability to investigate clonal DNA methylation patterns in unprecedented detail and scale, enabling the proper characterisation of the heterogeneity of methylation patterns. However, the sheer amount and complexity of sequencing data requires new synoptic approaches to visualise the distribution of allelic patterns. Results: We have developed a new analysis and visualisation software tool "Methpat", that extracts and displays clonal DNA methylation patterns from massively parallel sequencing data aligned using Bismark. Methpat was used to analyse multiplex bisulfite amplicon sequencing on a range of CpG island targets across a panel of human cell lines and primary tissues. Methpat was able to represent the clonal diversity of epialleles analysed at specific gene promoter regions. We also used Methpat to describe epiallelic DNA methylation within the mitochondrial genome. Conclusions: Methpat can summarise and visualise epiallelic DNA methylation results from targeted amplicon, massively parallel sequencing of bisulfite converted DNA in a compact and interpretable format. Unlike currently available tools, Methpat can visualise the diversity of epiallelic DNA methylation patterns in a sample.

Funding

This work was supported, in part, by National Breast Cancer Foundation of Australia (NCBF) grants to AD, DK and MT (CG-08-07, CG-10-04 and CG-12-07), the Cancer Council of Victoria to AD, and by grants from the Victorian Cancer Agency to NW and AD. SW was supported by the Melbourne Melanoma Project funded by the Victorian Cancer Agency Translational Research program and established through support of the Victor Smorgon Charitable Fund. Computation time was granted by the Life Sciences Computation Centre (LSCC) at the Victorian Life Sciences Computational Initiative (VLSCI) under grant VR0002. The Murdoch Childrens Research Institute and the Olivia Newton-John Cancer Research Institute are supported by the Victorian Government Operational and Infrastructure Support Grant.

History

Publication Date

2016-02-24

Journal

BMC Bioinformatics

Volume

17

Issue

1

Article Number

98

Pagination

14p. (p. 1-14)

Publisher

BioMed Central

ISSN

1471-2105

Rights Statement

© 2016 Wong et al. This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.