mosaicsPeak: Call peaks using fitted MOSAiCS model

Description Usage Arguments Details Value Author(s) References See Also Examples

Description

Call peaks using MosaicsFit class object, which is a fitted MOSAiCS model.

Usage

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mosaicsPeak( object, ... )
## S4 method for signature 'MosaicsFit'
mosaicsPeak( object, signalModel="2S", FDR=0.05, 
    binsize=NA, maxgap=200, minsize=50, thres=10 )

Arguments

object

Object of class MosaicsFit, a fitted MOSAiCS model obtained using function mosaicsFit.

signalModel

Signal model. Possible values are "1S" (one-signal-component model) and "2S" (two-signal-component model). Default is "2S".

FDR

False discovery rate. Default is 0.05.

binsize

Size of each bin. Value should be positive integer. If binsize=NA, mosaicsPeak function calcuates the value from data. Default is NA.

maxgap

Initial nearby peaks are merged if the distance (in bp) between them is less than maxgap. Default is 200.

minsize

An initial peak is removed if its width is narrower than minsize. Default is 50.

thres

A bin within initial peak is removed if its ChIP tag counts are less than thres. Default is 10.

...

Other parameters to be passed through to generic mosaicsPeak.

Details

mosaicsPeak is developed to identify narrow peaks such as transcription factor binding sites. If you are interested in identifying broad peaks such as histone modifications, please use mosaicsFitHMM and mosaicsPeakHMM instead of mosaicsPeak.

When peaks are called, proper signal model needs to be specified. The optimal choice for the number of signal components depends on the characteristics of ChIP-seq data. In order to support users in the choice of optimal signal model, Bayesian Information Criterion (BIC) values and Goodness of Fit (GOF) plot are provided for the fitted MOSAiCS model. BIC values and GOF plot can be obtained by applying show and plot methods, respectively, to the MosaicsFit class object, which is a fitted MOSAiCS model.

maxgap, minsize, and thres are for refining initial peaks called using specified signalModel and FDR. If you use a bin size shorter than the average fragment length of the experiment, we recommend to set maxgap to the average fragment length and minsize to the bin size. If you set the bin size to the average fragment length or if bin size is larger than the average fragment length, set maxgap to the average fragment length and minsize to a value smaller than the average fragment length. See the vignette for further details.

Value

Construct MosaicsPeak class object.

Author(s)

Dongjun Chung, Pei Fen Kuan, Rene Welch, Sunduz Keles

References

Kuan, PF, D Chung, G Pan, JA Thomson, R Stewart, and S Keles (2011), "A Statistical Framework for the Analysis of ChIP-Seq Data", Journal of the American Statistical Association, Vol. 106, pp. 891-903.

Chung, D, Zhang Q, and Keles S (2014), "MOSAiCS-HMM: A model-based approach for detecting regions of histone modifications from ChIP-seq data", Datta S and Nettleton D (eds.), Statistical Analysis of Next Generation Sequencing Data, Springer.

See Also

mosaicsFit, MosaicsPeak, MosaicsFit.

Examples

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## Not run: 
library(mosaicsExample)
data(exampleBinData)
exampleFit <- mosaicsFit( exampleBinData, analysisType="IO" )
examplePeak <- mosaicsPeak( exampleFit, signalModel = "2S", FDR = 0.05 )

## End(Not run)

dongjunchung/mosaics documentation built on March 1, 2020, 3:44 a.m.