detector_2nOrdre_init: Detection of Transcription Factor Binding Sites Through...

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

View source: R/detector_2nOrdre_init.R

Description

This detection algorithm is based on Information Theory. Specifically, this method uses a parametric divergence. This algorithm evaluates the variation on the total Renyi entropy of a set of sequences assuming correlation between positions in the bindng sequence. When a candidate sequence is assumed to be a a true binding site belonging to the set.The measurement of the variation of the total redundancy when the candidate sequence is added to the set has been computed by using the difference between the redundancy profile.

Usage

1
detector_2nOrdre_init(training.set, val.set, iicc)

Arguments

training.set

A set of aligned nucleotide sequences

val.set

A candidate sequence

iicc

A set of initial conditions for the MEET-package (mode, method, background,alignment,threshold,parameters,TranscriptionFactor,nummotif,lenmotif,sentit,position,missing,vector, gapopen,maxiters,gapextend).

Details

This function calculates of initials conditions for divergence method.

Author(s)

Joan Maynou <joan.maynou@upc.edu>

References

J. Maynou, M. Vallverdu, F. Claria, J.J. Gallardo-Chacon, P. Caminal and A. Perera,Transcription Factor Binding Site Detection through Position Cross-Mutual Information variability analysis. 31st Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

See Also

detector_1rOrdre_diff

Examples

1
2
3
4
5
6
data(iicc)
data(TranscriptionFactor)
data(BackgroundOrganism)
training.set<-TranscriptionFactor
val.set<-sample(c('A','T','C','G'),ncol(TranscriptionFactor), replace=TRUE,Prob)
detector_2nOrdre_init(training.set, val.set, iicc)

MEET documentation built on May 2, 2019, 5:52 p.m.