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Exploring Monoallelic Methylation Using High-throughput Sequencing

Exploring Monoallelic Methylation Using High-throughput Sequencing. Cristian Coarfa Ronald Harris Aleksandar Milosavljevic Joe Costello. Sequence-based profiling of DNA methylation: comparisons of methods and catalogue of allelic epigenetic modifications

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Exploring Monoallelic Methylation Using High-throughput Sequencing

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  1. Exploring Monoallelic Methylation Using High-throughput Sequencing Cristian Coarfa Ronald Harris Aleksandar Milosavljevic Joe Costello

  2. Sequence-based profiling of DNA methylation: comparisons of methods and catalogue of allelic epigenetic modifications Harris RA, Wang T, Coarfa C, Zhou X, Xi Y, Nagarajan RP, Hong C, Downey S, Johnson BE, Delaney A, Zhao Y, Olshen A, Ballinger T, Schillebeeckx M, Echipare L, O’Geen H, Lister R, Pelizzola M, Epstein C, Bernstein BE, Hawkins RD, Ren B, Chung WY, Gu H, Bock C, Gnirke A, Zhang MQ, Haussler D, Ecker J, Li W, Farnham PJ, Waterland RA, Meissner A, Marra MA, Hirst M, Milosavljevic A, Costello JF. In press, Nature Biotechnology

  3. Biological importance of intermediate methylation levels • Imprinting • Non-imprinted monoallelic methylation • Cell type-specific methylation • Sites of inter-individual variation in methylation level?

  4. Methylated Unmethylated 5’ CpG islands are unmethylated 3’ CpG island is partially methylated Unmethylated CpGs Methylated CpGs methylation-sensitive restriction digestion(MRE) methyl DNA immunoprecipitation (MeDIP) combine parallel digests, ligate adapters, size-select 100-300 bp IP sonicated, adapter-ligated DNA, size-select 100-300 bp Illumina library construction IGAII sequencing ~20 million reads/sample ~100 million reads/sample data visualization

  5. Unmethylated and Methylatedpatches within a CpG island

  6. high MRE and MeDIP (uniform) 3 high MRE and MeDIP (patch Methylation) 4 high MeDIP, no or low MRE 1 high MRE, no or low MeDIP 2

  7. Intermediate methylation levels at imprinted genes

  8. Initial catalogue of Intermediate methylation sites Start Stop MRE MeDIP nearest gene Gene Chr1. . . . . . . . . . . . . . . . . . . chr22 . . . . . . . . . . . . . . . . Ting Wang, Washington University

  9. Using Genetic Variation to Detect Monoallelic Epigenomic and Transcription States • Monoallelic DNA methylation (MRE and MeDIP) • Monoallelic expression (MethylC-seq and RNA-seq) • Monoallelic Histone H3K4me3 (MethylC-seq and Chip-seq)

  10. 21 1 0 4 34 39 21 Monoallelic Epigenomic Marks and Expression MethylC-seq + RNA-seq MRE-seq + MeDIP-seq MethylC-seq + ChIP-seq

  11. CpG islands MRE-seq 1 MeDIP-seq 1 MRE-seq 2 MeDIP-seq 2 Bisulfite POTEB Location Medip Allele CountMRE Allele Count chr15:19346666-19350003 G 9A 30 Intermediate methylation levels in POTEB

  12. Validation of monoallelic DNA methylation in POTEB

  13. Searching for Monoallelic Methlylation Using Shotgun Bisulfite Sequencing • We expect streaks of 50%+/-delta methylation ratios • Use 500bp windows tiling CpG Islands • Compute average CpG methylation • CpG Islands • 1000 loci • Infer distribution of methylation in 1000 loci • Subselect 500bp windows tiling CpG Islands • In the selected windows, look for allele specific methylation

  14. Questions • How many of the 1000 loci can we rediscover ? • How many of the 1000 loci show allele-specific methylation ? • How many additional 500bp sites do we discover ?

  15. Average methylation over 500 bp window in CpG Islands and 1000 loci

  16. Parameter Search • Experimented with various lower and upper bounds for methylation • Guidelines • Discover as many of the 1000 loci • Reduce the number of additional 500bp windows 30-80 rediscovers 958 of loci, at the highest specificity

  17. Incorporating Genetic Variation • Search for allele-specific methylation • Look only into the 30-80% methylation loci overlapping with CpG Islands • Use het SNPs • Check for those that separate reads into methylation states in different directions • One allele >20% • Other allele <20% • Other thresholding methods possible

  18. Results • Found 6295 heterozygous sites • 586 sites have allele specific methylation • Overlap with 62 of the 1000 loci

  19. Monoallelic Epigenomic Marks and Expression Distribution of the 62 SBS-ASM loci 1 0 0 4 7 9 16 MethylC-seq + RNA-seq Additional 25 loci MRE-seq + MeDIP-seq MethylC-seq + ChIP-seq

  20. Acknowledgements NIEHS/NIDA: Joni Rutter, Tanya Barrett, Fred Tyson, Christine Colvis EDACC: R. Alan Harris, Cristian Coarfa, Xin Zhou, Yuanxin Xi, Wei Li, Robert A. Waterland, Aleksandar Milosavljevic UCSF/GSC REMC: Raman Nagarajan, Chibo Hong, Sara Downey, Brett E. Johnson, Allen Delaney, Yongjun Zhao, Marco Marra, Martin Hirst, Joseph Costello • UCSC: Tracy Ballinger, David Haussler • Washington University: Maximiliaan Schillebeeckx, Ting Wang • UCD: Lorigail Echipare, Henriette O’Geen, Peggy J. Farnham UCSD REMC: Ryan Lister, Mattia Pelizzola, Bing Ren, Joseph Ecker • Cold Spring Harbor: Wen-Yu Chung, Michael Q. Zhang Broad REMC: Hongcang Gu, Christoph Bock, Andreas Gnirke, Chuck Epstein, Brad Bernstein, Alexander Meissner

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