Literature DB >> 25537884

Global analysis of methylation profiles from high resolution CpG data.

Ni Zhao1, Douglas A Bell, Arnab Maity, Ana-Maria Staicu, Bonnie R Joubert, Stephanie J London, Michael C Wu.   

Abstract

New high throughput technologies are now enabling simultaneous epigenetic profiling of DNA methylation at hundreds of thousands of CpGs across the genome. A problem of considerable practical interest is identification of large scale, global changes in methylation that are associated with environmental variables, clinical outcomes, or other experimental conditions. However, there has been little statistical research on methods for global methylation analysis using technologies with individual CpG resolution. To address this critical gap in the literature, we develop a new strategy for global analysis of methylation profiles using a functional regression approach wherein we approximate either the density or the cumulative distribution function (CDF) of the methylation values for each individual using B-spline basis functions. The spline coefficients for each individual are allowed to summarize the individual's overall methylation profile. We then test for association between the overall distribution and a continuous or dichotomous outcome variable using a variance component score test that naturally accommodates the correlation between spline coefficients. Simulations indicate that our proposed approach has desirable power while protecting type I error. The method was applied to detect methylation differences, both genome wide and at LINE1 elements, between the blood samples from rheumatoid arthritis patients and healthy controls and to detect the epigenetic changes of human hepatocarcinogenesis in the context of alcohol abuse and hepatitis C virus infection. A free implementation of our methods in the R language is available in the Global Analysis of Methylation Profiles (GAMP) package at http://research.fhcrc.org/wu/en.html.
© 2014 WILEY PERIODICALS, INC.

Entities:  

Keywords:  density approximation; epigenome wide association study; global testing; spline smoothing; variance component testing

Mesh:

Year:  2014        PMID: 25537884      PMCID: PMC4314375          DOI: 10.1002/gepi.21874

Source DB:  PubMed          Journal:  Genet Epidemiol        ISSN: 0741-0395            Impact factor:   2.135


  42 in total

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2.  Powerful SNP-set analysis for case-control genome-wide association studies.

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4.  Interaction Models for Functional Regression.

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6.  Prenatal Exposure to Mercury: Associations with Global DNA Methylation and Hydroxymethylation in Cord Blood and in Childhood.

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8.  CpG-set association assessment of lipid concentration changes and DNA methylation.

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9.  Cohort Profile: Pregnancy And Childhood Epigenetics (PACE) Consortium.

Authors:  Janine F Felix; Bonnie R Joubert; Andrea A Baccarelli; Gemma C Sharp; Catarina Almqvist; Isabella Annesi-Maesano; Hasan Arshad; Nour Baïz; Marian J Bakermans-Kranenburg; Kelly M Bakulski; Elisabeth B Binder; Luigi Bouchard; Carrie V Breton; Bert Brunekreef; Kelly J Brunst; Esteban G Burchard; Mariona Bustamante; Leda Chatzi; Monica Cheng Munthe-Kaas; Eva Corpeleijn; Darina Czamara; Dana Dabelea; George Davey Smith; Patrick De Boever; Liesbeth Duijts; Terence Dwyer; Celeste Eng; Brenda Eskenazi; Todd M Everson; Fahimeh Falahi; M Daniele Fallin; Sara Farchi; Mariana F Fernandez; Lu Gao; Tom R Gaunt; Akram Ghantous; Matthew W Gillman; Semira Gonseth; Veit Grote; Olena Gruzieva; Siri E Håberg; Zdenko Herceg; Marie-France Hivert; Nina Holland; John W Holloway; Cathrine Hoyo; Donglei Hu; Rae-Chi Huang; Karen Huen; Marjo-Riitta Järvelin; Dereje D Jima; Allan C Just; Margaret R Karagas; Robert Karlsson; Wilfried Karmaus; Katerina J Kechris; Juha Kere; Manolis Kogevinas; Berthold Koletzko; Gerard H Koppelman; Leanne K Küpers; Christine Ladd-Acosta; Jari Lahti; Nathalie Lambrechts; Sabine A S Langie; Rolv T Lie; Andrew H Liu; Maria C Magnus; Per Magnus; Rachel L Maguire; Carmen J Marsit; Wendy McArdle; Erik Melén; Phillip Melton; Susan K Murphy; Tim S Nawrot; Lorenza Nisticò; Ellen A Nohr; Björn Nordlund; Wenche Nystad; Sam S Oh; Emily Oken; Christian M Page; Patrice Perron; Göran Pershagen; Costanza Pizzi; Michelle Plusquin; Katri Raikkonen; Sarah E Reese; Eva Reischl; Lorenzo Richiardi; Susan Ring; Ritu P Roy; Peter Rzehak; Greet Schoeters; David A Schwartz; Sylvain Sebert; Harold Snieder; Thorkild I A Sørensen; Anne P Starling; Jordi Sunyer; Jack A Taylor; Henning Tiemeier; Vilhelmina Ullemar; Marina Vafeiadi; Marinus H Van Ijzendoorn; Judith M Vonk; Annette Vriens; Martine Vrijheid; Pei Wang; Joseph L Wiemels; Allen J Wilcox; Rosalind J Wright; Cheng-Jian Xu; Zongli Xu; Ivana V Yang; Paul Yousefi; Hongmei Zhang; Weiming Zhang; Shanshan Zhao; Golareh Agha; Caroline L Relton; Vincent W V Jaddoe; Stephanie J London
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10.  Predicting hepatocellular carcinoma development for cirrhosis patients via methylation detection of heparocarcinogenesis-related genes.

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