Abstract

BackgroundThe combination of sodium bisulfite treatment with highly-parallel sequencing is a common method for quantifying DNA methylation across the genome. The power to detect between-group differences in DNA methylation using bisulfite-sequencing approaches is influenced by both experimental (e.g. read depth, missing data and sample size) and biological (e.g. mean level of DNA methylation and difference between groups) parameters. There is, however, no consensus about the optimal thresholds for filtering bisulfite sequencing data with implications for the reproducibility of findings in epigenetic epidemiology.ResultsWe used a large reduced representation bisulfite sequencing (RRBS) dataset to assess the distribution of read depth across DNA methylation sites and the extent of missing data. To investigate how various study variables influence power to identify DNA methylation differences between groups, we developed a framework for simulating bisulfite sequencing data. As expected, sequencing read depth, group size, and the magnitude of DNA methylation difference between groups all impacted upon statistical power. The influence on power was not dependent on one specific parameter, but reflected the combination of study-specific variables. As a resource to the community, we have developed a tool, POWEREDBiSeq, which utilizes our simulation framework to predict study-specific power for the identification of DNAm differences between groups, taking into account user-defined read depth filtering parameters and the minimum sample size per group.ConclusionsOur data-driven approach highlights the importance of filtering bisulfite-sequencing data by minimum read depth and illustrates how the choice of threshold is influenced by the specific study design and the expected differences between groups being compared. The POWEREDBiSeq tool, which can be applied to different types of bisulfite sequencing data (e.g. RRBS, whole genome bisulfite sequencing (WGBS), targeted bisulfite sequencing and amplicon-based bisulfite sequencing), can help users identify the level of data filtering needed to optimize power and aims to improve the reproducibility of bisulfite sequencing studies.

Highlights

  • The combination of sodium bisulfite treatment with highly-parallel sequencing is a common method for quantifying DNA methylation across the genome

  • Our data-driven approach highlights the importance of filtering by minimum read depth and minimum number of DNA methylation (DNAm) points per DNAm site, and illustrates how the choice of threshold is influenced by the specific study design and the expected differences between groups being compared

  • Read depth in representation bisulfite sequencing (RRBS) data follows a negative binomial distribution, while the level of DNAm is bimodally distributed As part of an ongoing study of aging, we profiled DNAm in 125 frontal cortex samples dissected from mice aged 2–10 months old using the original RRBS protocol [20]

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Summary

Introduction

The combination of sodium bisulfite treatment with highly-parallel sequencing is a common method for quantifying DNA methylation across the genome. The field of epigenetic epidemiology in human cohorts has been facilitated by the development of cost effective, standardized commercial arrays such as the Illumina EPIC Beadchip [13] Data generated using this platform is relatively straightforward to process and analyze, with a number of standardized software tools and analytical pipelines [14, 15]. These arrays are only currently commonly available for human samples and are limited to capturing predefined genomic positions making up only ~ 3% of CpG sites in the human genome [16]

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