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minfi (version 1.18.4)

preprocessSWAN: Subset-quantile Within Array Normalisation for Illumina Infinium HumanMethylation450 BeadChips

Description

Subset-quantile Within Array Normalisation (SWAN) is a within array normalisation method for the Illumina Infinium HumanMethylation450 platform. It allows Infinium I and II type probes on a single array to be normalized together.

Usage

preprocessSWAN(rgSet, mSet = NULL, verbose = FALSE)

Arguments

rgSet
An object of class RGChannelSet.
mSet
An optional object of class MethylSet. If set to NULL preprocessSwan uses preprocessRaw on the rgSet argument. In case mSet is supplied, make sure it is the result of preprocessing the rgSet argument.
verbose
Should the function be verbose?

Value

MethylSet

Details

The SWAN method has two parts. First, an average quantile distribution is created using a subset of probes defined to be biologically similar based on the number of CpGs underlying the probe body. This is achieved by randomly selecting N Infinium I and II probes that have 1, 2 and 3 underlying CpGs, where N is the minimum number of probes in the 6 sets of Infinium I and II probes with 1, 2 or 3 probe body CpGs. If no probes have previously been filtered out e.g. sex chromosome probes, etc. N=11,303. This results in a pool of 3N Infinium I and 3N Infinium II probes. The subset for each probe type is then sorted by increasing intensity. The value of each of the 3N pairs of observations is subsequently assigned to be the mean intensity of the two probe types for that row or “quantile”. This is the standard quantile procedure. The intensities of the remaining probes are then separately adjusted for each probe type using linear interpolation between the subset probes.

References

J Maksimovic, L Gordon and A Oshlack (2012). SWAN: Subset quantile Within-Array Normalization for Illumina Infinium HumanMethylation450 BeadChips. Genome Biology 13, R44.

See Also

RGChannelSet and MethylSet as well as IlluminaMethylationManifest.

Examples

Run this code
## Not run: 
# if (require(minfiData)) {
#   dat <- preprocessRaw(RGsetEx)
#   preprocessMethod(dat)
#   datSwan <- preprocessSWAN(RGsetEx, mSet = dat)
#   datIlmn <- preprocessIllumina(RGsetEx)
#   preprocessMethod(datIlmn)
#   datIlmnSwan <- preprocessSWAN(RGsetEx, mSet = datIlmn)
# }
# ## End(Not run)

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