Literature DB >> 21519831

Statistical approaches for the analysis of DNA methylation microarray data.

Kimberly D Siegmund1.   

Abstract

Following the rapid development and adoption in DNA methylation microarray assays, we are now experiencing a growth in the number of statistical tools to analyze the resulting large-scale data sets. As is the case for other microarray applications, biases caused by technical issues are of concern. Some of these issues are old (e.g., two-color dye bias and probe- and array-specific effects), while others are new (e.g., fragment length bias and bisulfite conversion efficiency). Here, I highlight characteristics of DNA methylation that suggest standard statistical tools developed for other data types may not be directly suitable. I then describe the microarray technologies most commonly in use, along with the methods used for preprocessing and obtaining a summary measure. I finish with a section describing downstream analyses of the data, focusing on methods that model percentage DNA methylation as the outcome, and methods for integrating DNA methylation with gene expression or genotype data.

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Year:  2011        PMID: 21519831      PMCID: PMC3166559          DOI: 10.1007/s00439-011-0993-x

Source DB:  PubMed          Journal:  Hum Genet        ISSN: 0340-6717            Impact factor:   4.132


  67 in total

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4.  MEDME: an experimental and analytical methodology for the estimation of DNA methylation levels based on microarray derived MeDIP-enrichment.

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6.  A Robust Unified Approach to Analyzing Methylation and Gene Expression Data.

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Journal:  Comput Stat Data Anal       Date:  2009-03-15       Impact factor: 1.681

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Review 8.  Epigenetic modifications as therapeutic targets.

Authors:  Theresa K Kelly; Daniel D De Carvalho; Peter A Jones
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  23 in total

1.  IMA: an R package for high-throughput analysis of Illumina's 450K Infinium methylation data.

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2.  Exploratory analysis of ERCC2 DNA methylation in survival among pediatric medulloblastoma patients.

Authors:  Emilyn Banfield; Austin L Brown; Erin C Peckham; Surya P Rednam; Jeffrey Murray; M Fatih Okcu; Laura E Mitchell; Murali M Chintagumpala; Ching C Lau; Michael E Scheurer; Philip J Lupo
Journal:  Cancer Epidemiol       Date:  2016-09-05       Impact factor: 2.984

3.  Human methylome variation across Infinium 450K data on the Gene Expression Omnibus.

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4.  Estimating DNA methylation levels by joint modeling of multiple methylation profiles from microarray data.

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5.  Analysis of the interplay between methylation and expression reveals its potential role in cancer aetiology.

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6.  Study designs and methods post genome-wide association studies.

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7.  Epigenetic Repression of CCDC37 and MAP1B Links Chronic Obstructive Pulmonary Disease to Lung Cancer.

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8.  TCGA Workflow: Analyze cancer genomics and epigenomics data using Bioconductor packages.

Authors:  Tiago C Silva; Antonio Colaprico; Catharina Olsen; Fulvio D'Angelo; Gianluca Bontempi; Michele Ceccarelli; Houtan Noushmehr
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9.  Recent thymic emigrants and mature naive T cells exhibit differential DNA methylation at key cytokine loci.

Authors:  Amy M Berkley; Deborah W Hendricks; Kalynn B Simmons; Pamela J Fink
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10.  Identification of novel epigenetic abnormalities as sputum biomarkers for lung cancer risk among smokers and COPD patients.

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