MMASS: an optimized array-based method for assessing CpG island methylation.
Ashraf E.K. Ibrahim,Natalie P. Thorne,Katie Baird,Nuno L. Barbosa-Morais,Nuno L. Barbosa-Morais,Simon Tavaré,V. Peter Collins,Andrew H. Wyllie,Mark J. Arends,James D. Brenton +9 more
TL;DR: It is shown that the distribution of methylation microarray data is inherently skewed and requires exogenous spiked controls for normalization and that analysis of digestion of methylated and unmethylated control sequences together with linear fit models of replicate data showed superior statistical power for the MMASS-v2 method.
read more
Abstract: We describe an optimized microarray method for identifying genome-wide CpG island methylation called microarray-based methylation assessment of single samples (MMASS) which directly compares methylated to unmethylated sequences within a single sample. To improve previous methods we used bioinformatic analysis to predict an optimized combination of methylation-sensitive enzymes that had the highest utility for CpG-island probes and different methods to produce unmethylated representations of test DNA for more sensitive detection of differential methylation by hybridization. Subtraction or methylation-dependent digestion with McrBC was used with optimized (MMASS-v2) or previously described (MMASS-v1, MMASS-sub) methylation-sensitive enzyme combinations and compared with a published McrBC method. Comparison was performed using DNA from the cell line HCT116. We show that the distribution of methylation microarray data is inherently skewed and requires exogenous spiked controls for normalization and that analysis of digestion of methylated and unmethylated control sequences together with linear fit models of replicate data showed superior statistical power for the MMASS-v2 method. Comparison with previous methylation data for HCT116 and validation of CpG islands from PXMP4, SFRP2, DCC, RARB and TSEN2 confirmed the accuracy of MMASS-v2 results. The MMASS-v2 method offers improved sensitivity and statistical power for high-throughput microarray identification of differential methylation.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Principles and challenges of genome-wide DNA methylation analysis
TL;DR: There is such a diversity of DNA methylation profiling techniques that it can be challenging to select one, and this Review discusses the different approaches and their relative merits and introduces considerations for data analysis.
1.6K
Basic concepts of epigenetics
TL;DR: Two specific types of epigenetic regulation established in early development include X-chromosome inactivation and genomic imprinting regulate gene expression in a dosage-dependent and parent-of-origin-specific manner, respectively.
186
DNA methylation in breast and colorectal cancers.
TL;DR: A brief overview of the mechanism of DNA methylation, its relationship to extrinsic stimulation including dietary intake and aging, and of abnormally methylated DNA in breast and colorectal cancers are provided, which could be used as prognostic and diagnostic markers.
153
DNA methylation-based biomarkers in serum of patients with breast cancer.
Lien Van De Voorde,Reinhart Speeckaert,Dirk Van Gestel,Marc Bracke,Wilfried De Neve,Joris R. Delanghe,Marijn M. Speeckaert +6 more
TL;DR: Multiple serum DNA methylation assays are reviewed to highlight the value of those novel biomarkers in diagnosis, prognosis and prediction of therapeutic outcome and to evaluate the predictive and prognostic characteristics ofThose novel promising biomarkers.
72
Profiling DNA Methylomes from Microarray to Genome-Scale Sequencing
TL;DR: Current and emerging microarray and next-generation sequencing based technologies that enhance knowledge of DNA methylation profiling are reviewed, providing new insights into the regulation and dynamics ofDNA methylation in genomes.
65
References
•Journal Article
R: A language and environment for statistical computing.
TL;DR: Copyright (©) 1999–2012 R Foundation for Statistical Computing; permission is granted to make and distribute verbatim copies of this manual provided the copyright notice and permission notice are preserved on all copies.
410.8K
Basic Local Alignment Search Tool
TL;DR: A new approach to rapid sequence comparison, basic local alignment search tool (BLAST), directly approximates alignments that optimize a measure of local similarity, the maximal segment pair (MSP) score.
98.8K
Linear Models and Empirical Bayes Methods for Assessing Differential Expression in Microarray Experiments
TL;DR: The hierarchical model of Lonnstedt and Speed (2002) is developed into a practical approach for general microarray experiments with arbitrary numbers of treatments and RNA samples and the moderated t-statistic is shown to follow a t-distribution with augmented degrees of freedom.
DNA methylation patterns and epigenetic memory
TL;DR: The heritability of methylation states and the secondary nature of the decision to invite or exclude methylation support the idea that DNA methylation is adapted for a specific cellular memory function in development.
The fundamental role of epigenetic events in cancer
Peter A. Jones,Stephen B. Baylin +1 more
TL;DR: This review discusses patterns of DNA methylation and chromatin structure in neoplasia and the molecular alterations that might cause them and/or underlie altered gene expression in cancer.
6K
Related Papers (5)
Ryan Lister,Mattia Pelizzola,Robert H. Dowen,R. David Hawkins,Gary C. Hon,Julian Tonti-Filippini,Joseph R. Nery,Leonard Lee,Zhen Ye,Que Minh Ngo,Lee Edsall,Jessica Antosiewicz-Bourget,Jessica Antosiewicz-Bourget,Ron Stewart,Ron Stewart,Victor Ruotti,Victor Ruotti,A. Harvey Millar,James A. Thomson,Bing Ren,Bing Ren,Joseph R. Ecker +21 more