MetMap enables genome-scale Methyltyping for determining methylation states in populations.

The ability to assay genome-scale methylation patterns using high-throughput sequencing makes it possible to carry out association studies to determine the relationship between epigenetic variation and phenotype. While bisulfite sequencing can determine a methylome at high resolution, cost inhibits...

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Main Authors: Meromit Singer, Dario Boffelli, Joseph Dhahbi, Alexander Schönhuth, Gary P Schroth, David I K Martin, Lior Pachter
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2010-08-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC2924245?pdf=render
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spelling doaj-430fa0f4a1654ca18dc77688f172dfb52020-11-25T01:13:35ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582010-08-0168e100088810.1371/journal.pcbi.1000888MetMap enables genome-scale Methyltyping for determining methylation states in populations.Meromit SingerDario BoffelliJoseph DhahbiAlexander SchönhuthGary P SchrothDavid I K MartinLior PachterThe ability to assay genome-scale methylation patterns using high-throughput sequencing makes it possible to carry out association studies to determine the relationship between epigenetic variation and phenotype. While bisulfite sequencing can determine a methylome at high resolution, cost inhibits its use in comparative and population studies. MethylSeq, based on sequencing of fragment ends produced by a methylation-sensitive restriction enzyme, is a method for methyltyping (survey of methylation states) and is a site-specific and cost-effective alternative to whole-genome bisulfite sequencing. Despite its advantages, the use of MethylSeq has been restricted by biases in MethylSeq data that complicate the determination of methyltypes. Here we introduce a statistical method, MetMap, that produces corrected site-specific methylation states from MethylSeq experiments and annotates unmethylated islands across the genome. MetMap integrates genome sequence information with experimental data, in a statistically sound and cohesive Bayesian Network. It infers the extent of methylation at individual CGs and across regions, and serves as a framework for comparative methylation analysis within and among species. We validated MetMap's inferences with direct bisulfite sequencing, showing that the methylation status of sites and islands is accurately inferred. We used MetMap to analyze MethylSeq data from four human neutrophil samples, identifying novel, highly unmethylated islands that are invisible to sequence-based annotation strategies. The combination of MethylSeq and MetMap is a powerful and cost-effective tool for determining genome-scale methyltypes suitable for comparative and association studies.http://europepmc.org/articles/PMC2924245?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Meromit Singer
Dario Boffelli
Joseph Dhahbi
Alexander Schönhuth
Gary P Schroth
David I K Martin
Lior Pachter
spellingShingle Meromit Singer
Dario Boffelli
Joseph Dhahbi
Alexander Schönhuth
Gary P Schroth
David I K Martin
Lior Pachter
MetMap enables genome-scale Methyltyping for determining methylation states in populations.
PLoS Computational Biology
author_facet Meromit Singer
Dario Boffelli
Joseph Dhahbi
Alexander Schönhuth
Gary P Schroth
David I K Martin
Lior Pachter
author_sort Meromit Singer
title MetMap enables genome-scale Methyltyping for determining methylation states in populations.
title_short MetMap enables genome-scale Methyltyping for determining methylation states in populations.
title_full MetMap enables genome-scale Methyltyping for determining methylation states in populations.
title_fullStr MetMap enables genome-scale Methyltyping for determining methylation states in populations.
title_full_unstemmed MetMap enables genome-scale Methyltyping for determining methylation states in populations.
title_sort metmap enables genome-scale methyltyping for determining methylation states in populations.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2010-08-01
description The ability to assay genome-scale methylation patterns using high-throughput sequencing makes it possible to carry out association studies to determine the relationship between epigenetic variation and phenotype. While bisulfite sequencing can determine a methylome at high resolution, cost inhibits its use in comparative and population studies. MethylSeq, based on sequencing of fragment ends produced by a methylation-sensitive restriction enzyme, is a method for methyltyping (survey of methylation states) and is a site-specific and cost-effective alternative to whole-genome bisulfite sequencing. Despite its advantages, the use of MethylSeq has been restricted by biases in MethylSeq data that complicate the determination of methyltypes. Here we introduce a statistical method, MetMap, that produces corrected site-specific methylation states from MethylSeq experiments and annotates unmethylated islands across the genome. MetMap integrates genome sequence information with experimental data, in a statistically sound and cohesive Bayesian Network. It infers the extent of methylation at individual CGs and across regions, and serves as a framework for comparative methylation analysis within and among species. We validated MetMap's inferences with direct bisulfite sequencing, showing that the methylation status of sites and islands is accurately inferred. We used MetMap to analyze MethylSeq data from four human neutrophil samples, identifying novel, highly unmethylated islands that are invisible to sequence-based annotation strategies. The combination of MethylSeq and MetMap is a powerful and cost-effective tool for determining genome-scale methyltypes suitable for comparative and association studies.
url http://europepmc.org/articles/PMC2924245?pdf=render
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