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Statistical Quantification of Methylation Levels by Next-Generation Sequencing

Author

Listed:
  • Guodong Wu
  • Nengjun Yi
  • Devin Absher
  • Degui Zhi

Abstract

Background/Aims: Recently, next-generation sequencing-based technologies have enabled DNA methylation profiling at high resolution and low cost. Methyl-Seq and Reduced Representation Bisulfite Sequencing (RRBS) are two such technologies that interrogate methylation levels at CpG sites throughout the entire human genome. With rapid reduction of sequencing costs, these technologies will enable epigenotyping of large cohorts for phenotypic association studies. Existing quantification methods for sequencing-based methylation profiling are simplistic and do not deal with the noise due to the random sampling nature of sequencing and various experimental artifacts. Therefore, there is a need to investigate the statistical issues related to the quantification of methylation levels for these emerging technologies, with the goal of developing an accurate quantification method. Methods: In this paper, we propose two methods for Methyl-Seq quantification. The first method, the Maximum Likelihood estimate, is both conceptually intuitive and computationally simple. However, this estimate is biased at extreme methylation levels and does not provide variance estimation. The second method, based on Bayesian hierarchical model, allows variance estimation of methylation levels, and provides a flexible framework to adjust technical bias in the sequencing process. Results: We compare the previously proposed binary method, the Maximum Likelihood (ML) method, and the Bayesian method. In both simulation and real data analysis of Methyl-Seq data, the Bayesian method offers the most accurate quantification. The ML method is slightly less accurate than the Bayesian method. But both our proposed methods outperform the original binary method in Methyl-Seq. In addition, we applied these quantification methods to simulation data and show that, with sequencing depth above 40–300 (which varies with different tissue samples) per cleavage site, Methyl-Seq offers a comparable quantification consistency as microarrays.

Suggested Citation

  • Guodong Wu & Nengjun Yi & Devin Absher & Degui Zhi, 2011. "Statistical Quantification of Methylation Levels by Next-Generation Sequencing," PLOS ONE, Public Library of Science, vol. 6(6), pages 1-12, June.
  • Handle: RePEc:plo:pone00:0021034
    DOI: 10.1371/journal.pone.0021034
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    References listed on IDEAS

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    1. Ryan Lister & Mattia Pelizzola & Robert H. Dowen & R. David Hawkins & Gary Hon & Julian Tonti-Filippini & Joseph R. Nery & Leonard Lee & Zhen Ye & Que-Minh Ngo & Lee Edsall & Jessica Antosiewicz-Bourg, 2009. "Human DNA methylomes at base resolution show widespread epigenomic differences," Nature, Nature, vol. 462(7271), pages 315-322, November.
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    Cited by:

    1. Ching-Lin Hsiao & Ai-Ru Hsieh & Ie-Bin Lian & Ying-Chao Lin & Hui-Min Wang & Cathy S J Fann, 2014. "A Novel Method for Identification and Quantification of Consistently Differentially Methylated Regions," PLOS ONE, Public Library of Science, vol. 9(5), pages 1-11, May.

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