makeRobustCNVR | R Documentation |
This generic function calculates robust CNV regions by
segmenting the I/NI call per genomic region
of an object CNVDetectionResult-class
.
## S4 method for signature 'CNVDetectionResult'
makeRobustCNVR(object, robust = 0.5,
minWidth = 4, ...)
object |
An instance of "CNVDetectionResult" |
robust |
Robustness parameter. The higher the value, the more samples are required to have a CNV that confirms the CNV region. Setting this parameter to 0 restores the original CNV regions. (Default=0.5) |
minWidth |
The minimum length measured in genomic regions a CNV region has to span in order to be called. A parameter of the segmentation algorithm. (Default=4). |
... |
Additional parameters passed to the segmentation algorithm. |
This generic function calculates robust CNV regions by
segmenting the I/NI call per genomic region
of an object CNVDetectionResult-class
.
cn.mops usually reports a CNV region if at least one individual has a CNV in this region. For some applications it is useful to find more common CNV regions, i.e., regions in which more than one sample has a CNV. The I/NI call measures both signal strength and how many sample show an abnormal copy number, therefore segmentation of the I/NI call can provide robust CNV regions.
makeRobustCNVR
returns a "CNVDetectionResult"
object containing new values in the slot "cnvr".
Guenter Klambauer klambauer@bioinf.jku.at
data(cn.mops)
r <- cn.mops(X[1:100,1:5])
rr <- calcIntegerCopyNumbers(makeRobustCNVR(r,robust=0.1,minWidth=3))
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