BiocStyle::markdown() library(knitr)
Package: r Biocpkg("methInheritSim")
Authors: r packageDescription("methInheritSim")[["Author"]]
Version: r packageDescription("methInheritSim")$Version
Compiled date: r Sys.Date()
License: r packageDescription("methInheritSim")[["License"]]
The r Biocpkg("methInheritSim")
package and the underlying
r Biocpkg("methInheritSim")
code
are distributed under the Artistic license 2.0. You are free to use and
redistribute this software.
If you use this package for a publication, we would ask you to cite the following:
Pascal Belleau, Astrid Deschênes, Marie-Pier Scott-Boyer, Romain Lambrot, Mathieu Dalvai, Sarah Kimmins, Janice Bailey, Arnaud Droit; Inferring and modeling inheritance of differentially methylated changes across multiple generations, Nucleic Acids Research, Volume 46, Issue 14, 21 August 2018, Pages e85. DOI: https://doi.org/10.1093/nar/gky362
DNA methylation plays an important role in the biology of tissue development and diseases. High-throughput sequencing techniques enable genome-wide detection of differentially methylated elements (DME), commonly sites (DMS) or regions (DMR). The analysis of treatment effects on DNA methylation, from one generation to the next (inter-generational) and across generations that were not exposed to the initial environment (trans-generational) represent complex designs. There are two main approaches to study the methylation inheritance, the first is based on segregation in pedigree while the second uses the intersection between the DME of each generation (useful when pedigree is unknown). The power and the false positve rate of those types of design are relatively hard to evaluate.
We present a package that simulates the methylation inheritance. Using real datasets, the package generates a synthetic chromosome by sampling regions. Two different distributions are used to simulate the methylation level at each CpG site: one for the DMS and one for all the other sites. The second distribution takes advantage of parameters estimated using the control datasets. The package also offers the option to select the proportion of sites randomly fixed as DMS, as well as, the fraction of the cases that inherited the DMS in the subsequent generations.
The r Biocpkg("methInheritSim")
package generates simulated
multigenerational DMS datasets that are useful to evaluate the power and the
false discovery rate of experiment design analysis, such as the
r Biocpkg("methylInheritance")
package does.The multigenerational DMS
datasets can also be used to compare the efficiency of different inheritance
detection software.
As with any R package, the r Biocpkg("methInheritSim")
package should
first be loaded with the following command:
library(methInheritSim)
The first step of the simulation process is to create a synthetic chromosome made up of methylated sites. The synthetic methylated sites (or CpG sites) are generated using a real dataset (methData parameter). The read dataset only needs to contain methylation for controls on one generation; a real multigenerational dataset is not needed.
Two parameters are critical during this process:
Those two parameters unable to reproduce CpG islands of customizable size. It also reproduces the relation between the methylation level and the distance associated to adjacent methylated sites.
For each methylated site of the synthetic chromosome, the alpha and beta parameters of a Beta distribution are estimated from the mean and variance of the proportion of C/T at the site of the real control dataset.
A Beta distribution is used to simulate the proportion of C/T in the methylated sites of the simulated control dataset.
Using the synthetic chromosome, DMS are randomly selected from the methylated sites. The rateDiff parameter fixes the mean of the proportion sites that are differentially methylated (DMS).
To recreate differentially methylated regions (DMR), the successors site of a DMS, located within 1000 base pairs, has a higher probability to be selected as a DMS.
The inheritance is done through the DMR. This means that when the following generation inherits of a DMR region, it inherits all of the DMS present in the region. The propInherite parameter fixes the proportion of DMR that are inherited.
For the methylated sites in the F1 generation of the simulated case dataset, a Beta distribution is used to simulate the proportion of C/T. This is the exact same distribution as for the control dataset.
A proportion of cases, fixed by the vpDiff parameter, are selected to be have DMS. Those DMS are assigned an updated proportion of C/T that follows a shifted Beta distribution with parameters estimated using the mean of control $\pm$ vDiff. The vpDiff parameter is similar to penetrance. Not all sites of the selected cases will have DMS, only a proportion of those sites, as fixed by rateDiff than represent the mean proportion of sites selected as DMS.
In the subsequent generation, only a proportion of the DMS present in the initial simulated case dataset are selected to be inherited. The proposition of inherited DMS is calculated as:
$$ \mathbf{vpDiff\ \times\ {vInheritance}^{number\ of\ generations\ after\ F2} }$$
The proportion of C/T of those selected inherited sites follows a shifted Beta distribution with parameters estimated using mean of control $\pm$ (vDiff xpropHetero). The propHetero is 0.5 if one of the parent is a control.
A dataset containing methylation data (6 cases and 6 controls) has been
generated using the r Biocpkg("methInheritSim")
package using a real
dataset from Rat experiment (the real dataset is not public yet, so we used a
simulation based on it). The data have been formated, using
the r Biocpkg("methylkit")
package, into a methylBase object
(using the r Biocpkg("methylkit")
functions: filterByCoverage,
normalizeCoverage and unite).
## Load read DMS dataset (not in this case but normaly) data(samplesForChrSynthetic) ## Print the first three rows of the object head(samplesForChrSynthetic, n = 3)
The simulation is run using the runSim function. The outputDir parameter fixes the directory where the results are stored.
## Directory where the files related to the simulation will be saved temp_dir <- "test_runSim" ## Run the simulation runSim(methData = samplesForChrSynthetic, # The dataset use for generate # the synthetic chr. nbSynCHR = 1, # The number of synthetic chromosome nbSimulation = 2, # The number of simulation for each parameter nbBlock = 10, nbCpG = 20, # The number of site in the # synthetic chr is nbBLock * nbCpG nbGeneration = 3, # At least 2 generations must be present vNbSample = c(3, 6), # The number of controls (= number of cases) in # each simulation vpDiff = c(0.9), # Mean proportion of samples with # differentially methylated values vpDiffsd = c(0.1), # Standard deviation associated to vpDiff vDiff = c(0.8), # The shift of the mean of the C/T ratio in # the differentially methylated sites vInheritance = c(0.5), # The proportion of cases that inherit # differentially methylated sites propInherite = 0.3, # The proportion of diffementially methylated # regions that are inherited rateDiff = 0.3, # The mean frequency of the differentially # methylated regions minRate = 0.2, # The minimum rate for differentially # methylated sites propHetero = 0.5, # The reduction of vDiff for the following # generations keepDiff = FALSE, # When FALSE, the differentially methylated # sites are the same in all simulations outputDir = temp_dir, # Directory where files are saved fileID = "S1", runAnalysis = TRUE, nbCores = 1, vSeed = 32) # Fix seed to unable reproductive results # The files generated dir(temp_dir)
if (dir.exists(temp_dir)) { unlink(temp_dir, recursive = TRUE, force = FALSE) }
Three types of files are generated by default:
The first type of files contains information about the synthetic chromosome. This information is stored as a GRanges that contains the CpG (or methylated sites).The GRanges has four metadata inherited from the real dataset:
The file name is composed of those elements, separated by "_":
An example of a valid file name: syntheticChr_S1_1.rds
## The synthetic chromosome syntheticChr <- readRDS("demo_runSim/syntheticChr_S1_1.rds") ## In GRanges format, only Cpg present head(syntheticChr, n=3)
The second type of files contains information about the simulation stored in a GRanges format. The GRanges object has four metadata related to real dataset:
Plus a metadata for each sample (case or control):
The file name is composed of those elements, separated by "_":
An example of a valid file name: simData_S1_1_3_0.9_0.8_0.5_1.rds
#### The simulation dataset simData <- readRDS("demo_runSim/simData_S1_1_3_0.9_0.8_0.5_1.rds") #### Information for the first generation F1 head(simData[[1]], n=3) #### Information for the second generation F2 head(simData[[2]], n=3)
The third type of files contains a list with 2 entries. The first entry is called stateDiff and contains a vector of integer (0 and 1) with a length corresponding the length of stateInfo object. The statDiff object indicates, using a 1, the positions where the CpG sites are differentially methylated. The second entry is called statInherite and contains a vector of integer (0 and 1) with a length corresponding the length of stateInfo. The statInherite indicates, using a 1, the positions where the CpG values are inherited.
The file name is composed of those elements, separated by "_":
An example of a valid file name: stateDiff_S1_1_3_0.9_0.8_0.5_1.rds
#### The DMS state information stateDiff <- readRDS("demo_runSim/stateDiff_S1_1_3_0.9_0.8_0.5_1.rds") #### In stateDiff, the position of DMS is indicated by 1 #### in stateInherite, the position of inherited DMS is indicated by 1 head(stateDiff)
When saveGRanges parameter is TRUE, the package saves two extra types of files:
The first type of files is generated for each simulation and contains a list of GRangesList. The length of the list corresponds to the number of generations (as specified by the nbGeneration paramater). The generations are stored in order (first entry = first generation, second entry = second generation, etc..). All samples related to one generations are stored in a GRangesList object. The GRangesList object contains a list of GRanges. Each GRanges stores the raw methylation data of one sample.
There is one file per simulation. The file name is composed of those elements, separated by "_":
An example of a valid file name: methylGR_S1_1_3_0.9_0.8_0.5_1.rds
#### The raw methylation data in GRanges methylGR <- readRDS("demo_runSim/methylGR_S1_1_3_0.9_0.8_0.5_1.rds") #### The third sample of the first generation head(methylGR[[1]][[3]], n = 3) #### The fourth sample of the third generation head(methylGR[[3]][[4]], n = 3)
The second type of files contains a numeric vector denoting controls and cases (controls = 0 and cases = 1). One file is generated for each entry in the vNbSample vector parameter.
The file name is composed of those elements, separated by "_":
An example of a valid file name: treatment_S1_1_3.rds
#### The information about controls and cases treatment <- readRDS("demo_runSim/treatment_S1_1_3.rds") #### 0 = control, 1 = case, length = number of samples head(treatment)
When saveMethylKit is TRUE, one extra file is saved for each generation:
The file contains the raw methylation information from the simulated dataset
formated into S4 methylRaw objects using r Biocpkg("methylKit")
package.
All samples related to the same generation are contained in a
S4 methylRawList object that is present inside a list. The length of
the list corresponds to the number of generations. The generations
are stored in order (first entry = first generation, second entry = second
generation, etc..). The S4 methylRawList object contains two Slots:
There is one file per simulation. The file name is composed of those elements, separated by "_":
An example of a valid file name: methylObj_S1_1_3_0.9_0.8_0.5_1.rds
## The raw methylation data methylObj <- readRDS("demo_runSim/methylObj_S1_1_3_0.9_0.8_0.5_1.rds") #### The third sample of the first generation head(methylObj[[1]][[3]], n = 3) #### The fourth sample of the third generation head(methylObj[[3]][[4]], n = 3)
When runAnalysis is TRUE, two extra files are saved for each simulation:
The first file contains the simulated dataset formated with
the r Biocpkg("methylKit")
package into a S4 methylBase object. The
transformation is made using the r Biocpkg("methylKit")
functions:
filterByCoverage(), normalizeCoverage() and unite(). Each simulation
has it own file. Only sites having minimum reads alignment in all
samples are present in the file.
The file name is composed of those elements, separated by "_":
An example of a valid file name: meth_S1_1_3_0.9_0.8_0.5_1.rds
#### The methylation events present in multiple samples meth <- readRDS("demo_runSim/meth_S1_1_3_0.9_0.8_0.5_1.rds") #### Information for all samples in the first generation head(meth[[1]], n = 3)
The second file contains the result of the differential methylation calculation
done on the simulated dataset. Each generation of the dataset is analysed
separately using the calculateDiffMeth() function of the
r Biocpkg("methylKit")
package. A S4 methylDiff object is created for
each generation and is stored in the file inside a list (first entry =
first generation, second entry = second generation, etc...).
The file name is composed of those elements, separated by "_":
An example of a valid file name: methDiff_S1_1_3_0.9_0.8_0.5_1.rds
#### The differential methylation statistics methDiff <- readRDS("demo_runSim/methDiff_S1_1_3_0.9_0.8_0.5_1.rds") #### Information for the first generation head(methDiff[[1]], n = 3)
The r Biocpkg("methInheritSim")
package generates simulated
multigenerational DMS datasets. Several simulator parameters can be derived
from real dataset provided by the user in order to replicate realistic
case-control scenarios.
The results of a simulation could be analysed, using the
r Biocpkg("methylInheritance")
package, to evaluate the power and the
false discovery rate of an experiment design.
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.