Description Usage Arguments Details Value Author(s) References See Also Examples
Profile-based protein representation derived by PSSM (Position-Specific Scoring Matrix) and auto cross covariance
1 | extrProtPSSMAcc(pssmmat, lag)
|
pssmmat |
The PSSM computed by |
lag |
The lag parameter. Must be less than the number of amino acids in the sequence (i.e. the number of columns in the PSSM matrix). |
This function calculates the feature vector based on the PSSM by running PSI-Blast and auto cross covariance tranformation.
A length lag * 20^2
named numeric vector,
the element names are derived by the amino acid name abbreviation
(crossed amino acid name abbreviation) and lag index.
Min-feng Zhu <wind2zhu@163.com>, Nan Xiao <http://r2s.name>
Wold, S., Jonsson, J., Sj\"orstr\"om, M., Sandberg, M., & R\"annar, S. (1993). DNA and peptide sequences and chemical processes multivariately modelled by principal component analysis and partial least-squares projections to latent structures. Analytica chimica acta, 277(2), 239–253.
extrProtPSSM extrProtPSSMFeature
1 2 3 4 5 6 7 | x = readFASTA(system.file('protseq/P00750.fasta', package = 'BioMedR'))[[1]]
dbpath = tempfile('tempdb', fileext = '.fasta')
invisible(file.copy(from = system.file('protseq/Plasminogen.fasta',
package = 'BioMedR'), to = dbpath))
pssmmat = extrProtPSSM(seq = x, database.path = dbpath)
pssmacc = extrProtPSSMAcc(pssmmat, lag = 3)
tail(pssmacc)
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