If you want to average every gene in the group, not single column, making long format data first might be helpful. You can use both tidyr
and data.table
packages.
tidyr
approach
library(tidyverse)
gene <-
read_table("Cell_Cluster ARB2 DRAB2A FOXP2
C18|O11.F2 2.234 0.315 3.325
C18|010.J2 0.215 1.215 -0.310
C18|S92.C1 -0.562 4.624 1.426
C20|O11.F2 1.150 -1.326 3.135
C20|S93.C2 -1.135 3.001 -2.932
C21|010.J2 2.125 1.250 0.013")
gather(key, value)
can make the data long. You can specify column.
(gene1 <-
gene %>%
gather(-Cell_Cluster, key = key, value = value)) # gather except Cell_Cluster
#> # A tibble: 18 x 3
#> Cell_Cluster key value
#> <chr> <chr> <dbl>
#> 1 C18|O11.F2 ARB2 2.23
#> 2 C18|010.J2 ARB2 0.215
#> 3 C18|S92.C1 ARB2 -0.562
#> 4 C20|O11.F2 ARB2 1.15
#> 5 C20|S93.C2 ARB2 -1.14
#> 6 C21|010.J2 ARB2 2.12
#> 7 C18|O11.F2 DRAB2A 0.315
#> 8 C18|010.J2 DRAB2A 1.22
#> 9 C18|S92.C1 DRAB2A 4.62
#> 10 C20|O11.F2 DRAB2A -1.33
#> 11 C20|S93.C2 DRAB2A 3.00
#> 12 C21|010.J2 DRAB2A 1.25
#> 13 C18|O11.F2 FOXP2 3.32
#> 14 C18|010.J2 FOXP2 -0.31
#> 15 C18|S92.C1 FOXP2 1.43
#> 16 C20|O11.F2 FOXP2 3.14
#> 17 C20|S93.C2 FOXP2 -2.93
#> 18 C21|010.J2 FOXP2 0.013
Since you want to group by cell_cluster before |
(if I understand right), you can separate the column into two. Split by \\|
.
gene1 %>%
separate(Cell_Cluster, into = c("cell", "cluster"),
sep = "\\|", remove = FALSE)
#> # A tibble: 18 x 5
#> Cell_Cluster cell cluster key value
#> <chr> <chr> <chr> <chr> <dbl>
#> 1 C18|O11.F2 C18 O11.F2 ARB2 2.23
#> 2 C18|010.J2 C18 010.J2 ARB2 0.215
#> 3 C18|S92.C1 C18 S92.C1 ARB2 -0.562
#> 4 C20|O11.F2 C20 O11.F2 ARB2 1.15
#> 5 C20|S93.C2 C20 S93.C2 ARB2 -1.14
#> 6 C21|010.J2 C21 010.J2 ARB2 2.12
#> 7 C18|O11.F2 C18 O11.F2 DRAB2A 0.315
#> 8 C18|010.J2 C18 010.J2 DRAB2A 1.22
#> 9 C18|S92.C1 C18 S92.C1 DRAB2A 4.62
#> 10 C20|O11.F2 C20 O11.F2 DRAB2A -1.33
#> 11 C20|S93.C2 C20 S93.C2 DRAB2A 3.00
#> 12 C21|010.J2 C21 010.J2 DRAB2A 1.25
#> 13 C18|O11.F2 C18 O11.F2 FOXP2 3.32
#> 14 C18|010.J2 C18 010.J2 FOXP2 -0.31
#> 15 C18|S92.C1 C18 S92.C1 FOXP2 1.43
#> 16 C20|O11.F2 C20 O11.F2 FOXP2 3.14
#> 17 C20|S93.C2 C20 S93.C2 FOXP2 -2.93
#> 18 C21|010.J2 C21 010.J2 FOXP2 0.013
Now you can calculate the mean for each group. You want additional column, so dplyr::mutate()
can be used.
With spread(key, value)
, you can go back to the original format.
gene %>%
gather(-Cell_Cluster, key = key, value = value) %>%
separate(Cell_Cluster, into = c("cell", "cluster"),
sep = "\\|", remove = FALSE) %>%
group_by(cell) %>% # group by cell column
mutate(M = mean(value)) %>% # make mean column
spread(key, value) %>%
ungroup() %>% # do not need cell and cluster column, so remove them
select(-cell, -cluster)
#> # A tibble: 6 x 5
#> Cell_Cluster M ARB2 DRAB2A FOXP2
#> <chr> <dbl> <dbl> <dbl> <dbl>
#> 1 C18|010.J2 1.39 0.215 1.22 -0.31
#> 2 C18|O11.F2 1.39 2.23 0.315 3.32
#> 3 C18|S92.C1 1.39 -0.562 4.62 1.43
#> 4 C20|O11.F2 0.315 1.15 -1.33 3.14
#> 5 C20|S93.C2 0.315 -1.14 3.00 -2.93
#> 6 C21|010.J2 1.13 2.12 1.25 0.013
You can see the M
column which has calculated each gene group.
data.table
approach
Gene data might be large, so data.table
can be more appropriate to implement.
- Instead of
tidyr::gather()
, you can use data.table::melt()
- Instead of
tidyr::separate()
, you can use data.table::tstrsplit()
- To use regular expression
\\|
, add perl = TRUE
.
- Instead of
tidyr::spread()
, you can use data.table::dcast()
- formula: In the left side, put id and adding variable. In the right side, put the original variable.
value.var
All at once,
gene %>%
data.table() %>%
melt(id.vars = "Cell_Cluster", variable.name = "key") %>% # gather
.[,
c("cell", "cluster") := tstrsplit(Cell_Cluster, split = "\\|", perl = TRUE)] %>% # split Cell_Cluster
.[,
M := mean(value), # average value column
by = cell] %>% # group by cell
dcast(Cell_Cluster + M ~ key, value.var = "value") # spread
#> Cell_Cluster M ARB2 DRAB2A FOXP2
#> 1: C18|010.J2 1.387 0.215 1.215 -0.310
#> 2: C18|O11.F2 1.387 2.234 0.315 3.325
#> 3: C18|S92.C1 1.387 -0.562 4.624 1.426
#> 4: C20|O11.F2 0.315 1.150 -1.326 3.135
#> 5: C20|S93.C2 0.315 -1.135 3.001 -2.932
#> 6: C21|010.J2 1.129 2.125 1.250 0.013
This data.table
would be much faster.
microbenchmark::microbenchmark(
DPLYR = {
gene %>%
gather(-Cell_Cluster, key = key, value = value) %>%
separate(Cell_Cluster, into = c("cell", "cluster"),
sep = "\\|", remove = FALSE) %>%
group_by(cell) %>%
mutate(M = mean(value)) %>%
spread(key, value) %>%
ungroup() %>%
select(-cell, -cluster)
},
DATATABLE = {
gene %>%
data.table() %>%
melt(id.vars = "Cell_Cluster", variable.name = "key") %>%
.[,
c("cell", "cluster") := tstrsplit(Cell_Cluster, split = "\\|", perl = TRUE)] %>%
.[,
M := mean(value),
by = cell] %>%
dcast(Cell_Cluster + M ~ key, value.var = "value")
},
times = 50
)
#> Unit: milliseconds
#> expr min lq mean median uq max neval
#> DPLYR 8.55 10.15 11.7 11.39 12.53 20.22 50
#> DATATABLE 3.39 3.94 4.8 4.77 5.46 7.69 50
library(dplyr); df %>% group_by(Cell_Cluster = sub('\\|.*', '', Cell_Cluster)) %>% summarise_all(mean)