Introduction into DNA Methylation
Papers
This is a list of links to papers that have essential information on
DNA Methylation.
Principles of
DNA methylation and their implications for biology and medicine.
- Discusses that methylation patterns are established in a programmed
process that continues throughout development, thus setting up stable
gene expression profiles
DNA
methylation in human diseases
- Discusses findings on DNA methylation in common diseases
- Describes promises and unique challenges of epigenetic
epidemiological studies and proposes some potential solutions
Methods
for genome-wide DNA methylation analysis in human cancer
- Presents the current key technologies used to detect high-throughput
genome-wide DNA methylation, and the available cancer-associated
methylation databases
- Focuses on the computational methods for preprocessing, analyzing
and interpreting the cancer methylome data
- Summarizes emerging challenges in the computational analysis of
cancer methylome data
Whole
Genome Bisulfite Sequencing
- Presents an integrated analysis of whole-genome bisulfite sequencing
and RNA sequencing data from human samples and cell lines
- Their results suggest that DNA methylation outside promoters also
plays critical roles in gene regulation
The human colon
cancer methylome shows similar hypo- and hypermethylation at conserved
tissue-specific CpG island shores
- Shows that most methylation alterations in colon cancer do not occur
in promoters nor CpG islands, but in sequences up to 2 kb distant, which
we term ‘CpG island shores’
- Discusses that methylation changes in cancer are at sites that vary
normally in tissue differentiation, consistent with the epigenetic
progenitor model of cancer, which proposes that epigenetic alterations
affecting tissue-specific differentiation are the predominant mechanism
by which epigenetic changes cause cancer
The
CpG Island Methylator Phenotype: What’s in a Name?
- Discusses the use of the term CIMP in cancer, its significance in
clinical practice, and future directions that may aid in identifying the
true cause and definition of CIMP in different forms of human
neoplasia.
Disease
prediction by cell-free DNA methylation
- Provides thorough reviews and discussions on the statistical method
developments and data analysis strategies for using cell-free DNA
methylation profiles to construct disease diagnostic models
- Focuses on two important aspects: marker selection and prediction
model construction
DNA
methylation profiling reveals novel diagnostic biomarkers in renal cell
carcinoma
- Identifies a single panel of DNA methylation biomarkers that
reliably distinguishes tumor from benign adjacent tissue in all of the
most common kidney cancer histologic subtypes and a second panel does
the same specifically for clear cell renal cell carcinoma tumors
Tools
Here are some R packages and tools that can be used for DNA
methylation analysis.
methylKit This is an R package for analysis and
annotation of DNA methylation information obtained by high-throughput
bisulfite sequencing.The package is designed to deal with sequencing
data from RRBS and its variants. But, it can potentially handle
whole-genome bisulfite sequencing data if proper input format is
provided. To access the R package, click
here.
To access the vignette, click
here.
IlluminaHumanMethylation450kmanifest
This is an R package used for annotation for Illumina’s 450k
methylation arrays. To access the R package, click
here.
minfi
This is an R package used to analyze Illumina’s Methylation arrays,
specifically the 450k and EPIC (also known as the 850k) arrays. This
package includes preprocessing, QC assessments, identification of
interesting methylation loci and plotting functionality. To access the R
package, click
here.
To access the vignette, click
here.
methyAnalysis
This is an R package that was developed for chromosome location based
DNA methylation analysis and visualization. The package also includes
functions of estimating the methylation levels from Methy-Seq data. To
access the R package, click
here.
To access the vignette, click
here.
A cross-package Bioconductor workflow for analysing
methylation array data
This is a Bioconductor workflow that uses multiple packages for the
analysis of methylation array data. This workflow demonstrates steps
involved in a typical differential methylation analysis pipeline
including: quality control, filtering, normalization, data exploration
and statistical testing for probe-wise differential methylation. To
access the vignette, click
here.