BMC Genomics (Oct 2012)

Methods for high-throughput MethylCap-Seq data analysis

  • Rodriguez Benjamin AT,
  • Frankhouser David,
  • Murphy Mark,
  • Trimarchi Michael,
  • Tam Hok-Hei,
  • Curfman John,
  • Huang Rita,
  • Chan Michael WY,
  • Lai Hung-Cheng,
  • Parikh Deval,
  • Ball Bryan,
  • Schwind Sebastian,
  • Blum William,
  • Marcucci Guido,
  • Yan Pearlly,
  • Bundschuh Ralf

DOI
https://doi.org/10.1186/1471-2164-13-S6-S14
Journal volume & issue
Vol. 13, no. Suppl 6
p. S14

Abstract

Read online

Abstract Background Advances in whole genome profiling have revolutionized the cancer research field, but at the same time have raised new bioinformatics challenges. For next generation sequencing (NGS), these include data storage, computational costs, sequence processing and alignment, delineating appropriate statistical measures, and data visualization. Currently there is a lack of workflows for efficient analysis of large, MethylCap-seq datasets containing multiple sample groups. Methods The NGS application MethylCap-seq involves the in vitro capture of methylated DNA and subsequent analysis of enriched fragments by massively parallel sequencing. The workflow we describe performs MethylCap-seq experimental Quality Control (QC), sequence file processing and alignment, differential methylation analysis of multiple biological groups, hierarchical clustering, assessment of genome-wide methylation patterns, and preparation of files for data visualization. Results Here, we present a scalable, flexible workflow for MethylCap-seq QC, secondary data analysis, tertiary analysis of multiple experimental groups, and data visualization. We demonstrate the experimental QC procedure with results from a large ovarian cancer study dataset and propose parameters which can identify problematic experiments. Promoter methylation profiling and hierarchical clustering analyses are demonstrated for four groups of acute myeloid leukemia (AML) patients. We propose a Global Methylation Indicator (GMI) function to assess genome-wide changes in methylation patterns between experimental groups. We also show how the workflow facilitates data visualization in a web browser with the application Anno-J. Conclusions This workflow and its suite of features will assist biologists in conducting methylation profiling projects and facilitate meaningful biological interpretation.