extractCTDCClass {protr} | R Documentation |
CTD Descriptors - Composition (with customized amino acid classification support)
Description
This function calculates the Composition descriptor of the CTD descriptors, with customized amino acid classification support.
Usage
extractCTDCClass(x, aagroup1, aagroup2, aagroup3)
Arguments
x |
A character vector, as the input protein sequence. |
aagroup1 |
A named list which contains the first group of customized amino acid classification. See example below. |
aagroup2 |
A named list which contains the second group of customized amino acid classification. See example below. |
aagroup3 |
A named list which contains the third group of customized amino acid classification. See example below. |
Value
A length k * 3
named vector, k
is the number of
amino acid properties used.
Note
For this descriptor type, users need to intelligently evaluate the underlying details of the descriptors provided, instead of using this function with their data blindly. It would be wise to use some negative and positive control comparisons where relevant to help guide interpretation of the results.
Author(s)
Nan Xiao <https://nanx.me>
References
Inna Dubchak, Ilya Muchink, Stephen R. Holbrook and Sung-Hou Kim. Prediction of protein folding class using global description of amino acid sequence. Proceedings of the National Academy of Sciences. USA, 1995, 92, 8700-8704.
Inna Dubchak, Ilya Muchink, Christopher Mayor, Igor Dralyuk and Sung-Hou Kim. Recognition of a Protein Fold in the Context of the SCOP classification. Proteins: Structure, Function and Genetics, 1999, 35, 401-407.
See Also
See extractCTDTClass
and
extractCTDDClass
for Transition and Distribution
of the CTD descriptors with customized amino acid classification support.
Examples
x <- readFASTA(system.file("protseq/P00750.fasta", package = "protr"))[[1]]
# using five customized amino acid property classification
group1 <- list(
"hydrophobicity" = c("R", "K", "E", "D", "Q", "N"),
"normwaalsvolume" = c("G", "A", "S", "T", "P", "D", "C"),
"polarizability" = c("G", "A", "S", "D", "T"),
"secondarystruct" = c("E", "A", "L", "M", "Q", "K", "R", "H"),
"solventaccess" = c("A", "L", "F", "C", "G", "I", "V", "W")
)
group2 <- list(
"hydrophobicity" = c("G", "A", "S", "T", "P", "H", "Y"),
"normwaalsvolume" = c("N", "V", "E", "Q", "I", "L"),
"polarizability" = c("C", "P", "N", "V", "E", "Q", "I", "L"),
"secondarystruct" = c("V", "I", "Y", "C", "W", "F", "T"),
"solventaccess" = c("R", "K", "Q", "E", "N", "D")
)
group3 <- list(
"hydrophobicity" = c("C", "L", "V", "I", "M", "F", "W"),
"normwaalsvolume" = c("M", "H", "K", "F", "R", "Y", "W"),
"polarizability" = c("K", "M", "H", "F", "R", "Y", "W"),
"secondarystruct" = c("G", "N", "P", "S", "D"),
"solventaccess" = c("M", "S", "P", "T", "H", "Y")
)
extractCTDCClass(x, aagroup1 = group1, aagroup2 = group2, aagroup3 = group3)