Comparative (Computational) Analysis of the DNA Methylation Status of Trinucleotide Repeat Expansion Diseases

Previous studies have examined DNA methylation in different trinucleotide repeat diseases. We have combined this data and used a pattern searching algorithm to identify motifs in the DNA surrounding aberrantly methylated CpGs found in the DNA of patients with one of the three trinucleotide repeat (...

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Main Authors: Mohammadmersad Ghorbani, Simon J. E. Taylor, Mark A. Pook, Annette Payne
Format: Article
Language:English
Published: Wiley 2013-01-01
Series:Journal of Nucleic Acids
Online Access:http://dx.doi.org/10.1155/2013/689798
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author Mohammadmersad Ghorbani
Simon J. E. Taylor
Mark A. Pook
Annette Payne
author_facet Mohammadmersad Ghorbani
Simon J. E. Taylor
Mark A. Pook
Annette Payne
author_sort Mohammadmersad Ghorbani
collection DOAJ
description Previous studies have examined DNA methylation in different trinucleotide repeat diseases. We have combined this data and used a pattern searching algorithm to identify motifs in the DNA surrounding aberrantly methylated CpGs found in the DNA of patients with one of the three trinucleotide repeat (TNR) expansion diseases: fragile X syndrome (FRAXA), myotonic dystrophy type I (DM1), or Friedreich’s ataxia (FRDA). We examined sequences surrounding both the variably methylated (VM) CpGs, which are hypermethylated in patients compared with unaffected controls, and the nonvariably methylated CpGs which remain either always methylated (AM) or never methylated (NM) in both patients and controls. Using the J48 algorithm of WEKA analysis, we identified that two patterns are all that is necessary to classify our three regions CCGG* which is found in VM and not in AM regions and AATT* which distinguished between NM and VM + AM using proportional frequency. Furthermore, comparing our software with MEME software, we have demonstrated that our software identifies more patterns than MEME in these short DNA sequences. Thus, we present evidence that the DNA sequence surrounding CpG can influence its susceptibility to be de novo methylated in a disease state associated with a trinucleotide repeat.
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spelling doaj-art-cee0d1e2c74242dc9ec553b7f17f72872025-02-03T05:46:05ZengWileyJournal of Nucleic Acids2090-02012090-021X2013-01-01201310.1155/2013/689798689798Comparative (Computational) Analysis of the DNA Methylation Status of Trinucleotide Repeat Expansion DiseasesMohammadmersad Ghorbani0Simon J. E. Taylor1Mark A. Pook2Annette Payne3Department of Information Systems and Computing, Brunel University, Uxbridge Middlesex UB8 3PH, UKDepartment of Information Systems and Computing, Brunel University, Uxbridge Middlesex UB8 3PH, UKDivision of Biosciences, School of Health Sciences & Social Care, Brunel University, Uxbridge Middlesex UB8 3PH, UKDepartment of Information Systems and Computing, Brunel University, Uxbridge Middlesex UB8 3PH, UKPrevious studies have examined DNA methylation in different trinucleotide repeat diseases. We have combined this data and used a pattern searching algorithm to identify motifs in the DNA surrounding aberrantly methylated CpGs found in the DNA of patients with one of the three trinucleotide repeat (TNR) expansion diseases: fragile X syndrome (FRAXA), myotonic dystrophy type I (DM1), or Friedreich’s ataxia (FRDA). We examined sequences surrounding both the variably methylated (VM) CpGs, which are hypermethylated in patients compared with unaffected controls, and the nonvariably methylated CpGs which remain either always methylated (AM) or never methylated (NM) in both patients and controls. Using the J48 algorithm of WEKA analysis, we identified that two patterns are all that is necessary to classify our three regions CCGG* which is found in VM and not in AM regions and AATT* which distinguished between NM and VM + AM using proportional frequency. Furthermore, comparing our software with MEME software, we have demonstrated that our software identifies more patterns than MEME in these short DNA sequences. Thus, we present evidence that the DNA sequence surrounding CpG can influence its susceptibility to be de novo methylated in a disease state associated with a trinucleotide repeat.http://dx.doi.org/10.1155/2013/689798
spellingShingle Mohammadmersad Ghorbani
Simon J. E. Taylor
Mark A. Pook
Annette Payne
Comparative (Computational) Analysis of the DNA Methylation Status of Trinucleotide Repeat Expansion Diseases
Journal of Nucleic Acids
title Comparative (Computational) Analysis of the DNA Methylation Status of Trinucleotide Repeat Expansion Diseases
title_full Comparative (Computational) Analysis of the DNA Methylation Status of Trinucleotide Repeat Expansion Diseases
title_fullStr Comparative (Computational) Analysis of the DNA Methylation Status of Trinucleotide Repeat Expansion Diseases
title_full_unstemmed Comparative (Computational) Analysis of the DNA Methylation Status of Trinucleotide Repeat Expansion Diseases
title_short Comparative (Computational) Analysis of the DNA Methylation Status of Trinucleotide Repeat Expansion Diseases
title_sort comparative computational analysis of the dna methylation status of trinucleotide repeat expansion diseases
url http://dx.doi.org/10.1155/2013/689798
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AT markapook comparativecomputationalanalysisofthednamethylationstatusoftrinucleotiderepeatexpansiondiseases
AT annettepayne comparativecomputationalanalysisofthednamethylationstatusoftrinucleotiderepeatexpansiondiseases