uco calculates some codon usage indices: the codon counts
eff, the relative frequencies
freq or the Relative Synonymous Codon Usage
a coding sequence as a vector of chars
an integer (0, 1, 2) giving the frame of the coding sequence
codon usage index choice, partial matching is allowed.
when an amino-acid is missing, RSCU are no more defined and repported
as missing values (
Codons with ambiguous bases are ignored.
RSCU is a simple measure of non-uniform usage of synonymous codons in a coding sequence
(Sharp et al. 1986).
RSCU values are the number of times a particular codon is observed, relative to the number
of times that the codon would be observed for a uniform synonymous codon usage (i.e. all the
codons for a given amino-acid have the same probability).
In the absence of any codon usage bias, the RSCU values would be 1.00 (this is the case
cds in the exemple thereafter). A codon that is used
less frequently than expected will have an RSCU value of less than 1.00 and vice versa for a codon
that is used more frequently than expected.
Do not use correspondence analysis on RSCU tables as this is a source of artifacts
(Perrière and Thioulouse 2002, Suzuki et al. 2008). Within-aminoacid correspondence analysis is a
simple way to study synonymous codon usage (Charif et al. 2005). For an introduction
to correspondence analysis and within-aminoacid correspondence analysis see the
chapter titled Multivariate analyses in the seqinR manual that ships with the
seqinR package in the doc folder. You can also use internal correspondence
analysis if you want to analyze simultaneously a row-block structure such as the
within and between species variability (Lobry and Chessel 2003).
as.data.frame is FALSE,
uco returns one of these:
a table of codon counts
a table of codon relative frequencies
a numeric vector of relative synonymous codon usage values
as.data.frame is TRUE,
uco returns a data frame with five columns:
a vector containing the name of amino-acid
a vector containing the corresponding codon
a numeric vector of codon counts
a numeric vector of codon relative frequencies
a numeric vector of RSCU index
as.data.frame is FALSE, the default, a table for
a numeric vector for
as.data.frame is TRUE,
a data frame with all indices is returned.
D. Charif, J.R. Lobry, G. Perrière
Sharp, P.M., Tuohy, T.M.F., Mosurski, K.R. (1986) Codon usage in yeast: cluster
analysis clearly differentiates highly and lowly expressed genes.
Nucl. Acids. Res., 14:5125-5143.
Perrière, G., Thioulouse, J. (2002) Use and misuse of correspondence analysis in
codon usage studies. Nucl. Acids. Res., 30:4548-4555.
Lobry, J.R., Chessel, D. (2003) Internal correspondence analysis of codon and
amino-acid usage in thermophilic bacteria.
Journal of Applied Genetics, 44:235-261. http://jag.igr.poznan.pl/2003-Volume-44/2/pdf/2003_Volume_44_2-235-261.pdf.
Charif, D., Thioulouse, J., Lobry, J.R., Perrière, G. (2005) Online
Synonymous Codon Usage Analyses with the ade4 and seqinR packages.
Bioinformatics, 21:545-547. https://pbil.univ-lyon1.fr/members/lobry/repro/bioinfo04/.
Suzuki, H., Brown, C.J., Forney, L.J., Top, E. (2008) Comparison of Correspondence Analysis Methods for Synonymous Codon Usage in Bacteria. DNA Research, 15:357-365. http://dnaresearch.oxfordjournals.org/cgi/reprint/15/6/357.
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## Show all possible codons: words() ## Make a coding sequence from this: (cds <- s2c(paste(words(), collapse = ""))) ## Get codon counts: uco(cds, index = "eff") ## Get codon relative frequencies: uco(cds, index = "freq") ## Get RSCU values: uco(cds, index = "rscu") ## Show what happens with ambiguous bases: uco(s2c("aaannnttt")) ## Use a real coding sequence: rcds <- read.fasta(file = system.file("sequences/malM.fasta", package = "seqinr"))[] uco( rcds, index = "freq") uco( rcds, index = "eff") uco( rcds, index = "rscu") uco( rcds, as.data.frame = TRUE) ## Show what happens with RSCU when an amino-acid is missing: ecolicgpe5 <- read.fasta(file = system.file("sequences/ecolicgpe5.fasta",package="seqinr"))[] uco(ecolicgpe5, index = "rscu") ## Force NA to zero: uco(ecolicgpe5, index = "rscu", NA.rscu = 0)