1

I want to transfer a named vector to matrix and fill up missing values (fill with 0s).

For example, I have a dataframe like this:

col1     col2    col3
Cancer1  Gene1   2.1
Cancer1  Gene2   2.51
Cancer1  Gene3   3.0
Cancer2  Gene1   0.9

Which has two columns of names: col1 and col2. Then I want to transform this into a matrix, like:

        Cancer1   Cancer2
Gene1   2.1       0.9
Gene2   2.51      0
Gene3   3.0       0

If there are missing values in the vector, fill with 0s.

How can I do this efficiently in R?

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  • 1
    It looks to me you want to convert a data.frame into a matrix... – Damiano Fantini Aug 14 '17 at 21:03
  • Yes. It is a data.frame, but only with one column of values. Others are names. – Tian Aug 14 '17 at 21:05
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    tidyr::spread(mydata, col1, col3) – M-- Aug 14 '17 at 21:08
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    You want xtabs(col3 ~ col1 +clo2, data=your.data.frame.name). This will return a table object which inherits methods from the matrix class. – IRTFM Aug 14 '17 at 21:08
  • @42- xtabs(col3 ~ col2 +col1, data=your.data.frame.name) will be exactly what OP wants. (genes in the rows and cancers in the columns) – M-- Aug 14 '17 at 21:13
3

You can use tidyr package:

tidyr::spread(mydata, col1, col3, fill = 0)

#    col2 Cancer1 Cancer2 
# 1 Gene1    2.10     0.9 
# 2 Gene2    2.51     0.0 
# 3 Gene3    3.00     0.0

Data:

mydata <- structure(list(col1 = structure(c(1L, 1L, 1L, 2L), .Label = c("Cancer1", 
"Cancer2"), class = "factor"), col2 = structure(c(1L, 2L, 3L, 
1L), .Label = c("Gene1", "Gene2", "Gene3"), class = "factor"), 
col3 = c(2.1, 2.51, 3, 0.9)), .Names = c("col1", "col2", 
"col3"), class = "data.frame", row.names = c(NA, -4L))
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3

Either xtabs or tapply should do it.

tapply(my.df$col3, rev(my.df[-3]), c)
       col1
col2    cancer1 cancer2
  gene1     2.1     2.2
  gene2     2.5      NA
  gene3      NA     3.0

tapply would have the advantage that, if there were multiple instances of any one combination, you could return a function result like mean applied to the group.

xtabs(col3 ~ col2 +col1, my.df)  #same matrix result

Note that using tidyverse methods like spread are likely to give you data-objects of a "special" class (not matrices), which if you're not expecting them may have annoying properties, or if you are expecting them may seem wonderful.

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0

You can do a nested sapply, looping through each gene and cancer type. Use levels if you have factors or unique() if you have a character vector.

my.df <- data.frame(col1=c("cancer1", "cancer1", "cancer2", "cancer2"),
           col2=c("gene1", "gene2", "gene3", "gene1"), 
           col3=c(2.1, 2.5, 3.0, 2.2))

my.mat <- sapply(levels(my.df$col1), (function(cancer){
  sapply(levels(my.df$col2), (function(gene){
    tmp <- my.df[my.df$col1 == cancer & my.df$col2 == gene, "col3"]
    if (length(tmp) > 0) {
      as.numeric(tmp[1])
    } else {
      NA
    }
  }))
}))
my.mat
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  • else { NA should be else { 0. – M-- Aug 14 '17 at 21:23
  • Much more complex than it should be. – IRTFM Aug 14 '17 at 21:23
  • @Masoud: About else { NA... You are right... But only if you assume that the gene expression level is missing because it wasn't expressed at all just in a selected sample... – Damiano Fantini Aug 14 '17 at 21:40
  • @DamianoFantini "If there are missing values in the vector, fill with 0s." OP explicitly wants zeros. – M-- Aug 14 '17 at 21:42
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    I know what was stated in the request, and I told you were right... I was just suggesting to be careful with such biological assumptions while working with gene expression data. That's all. – Damiano Fantini Aug 14 '17 at 21:47

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