Calculate mean, standard deviation, n, etc. across columns and create new data frame

I am trying to calculate the number of samples, mean, standard deviation, coefficient of variation, lower and upper 95% confidence limits, and quartiles of this data set across each column and put it into a new data frame.

The numbers below are not necessarily all correct & I didn't fill them all in, just provides an example. These values will be used to create a box plot, hence the need for the quartiles. Rows and columns would be headers in the end. See example below.

Here is the structure:

B1 <- c(8, 6, 13, 6, 27, 104, 18, 3)
B2 <- c(2, 13, 1, 64, 127, 24, 4, 3)
B3 <- c(8, 16, 113, 680, 227, 310, 138, 30)
B4 <- c(238, 46, 613, 69, 7, 14, 4, 8)

x <- data.frame(B1, B2, B3, B4)

B1  B2  B3  B4
1    8   2   8 238
2    6  13  16  46
3   13   1 113 613
4    6  64 680  69
5   27 127 227   7
6  104  24 310  14

Desired output:

> y
B1    B2   B3    B4
n                  8     8     8    8
mean               23   30    190   125
Stand dev          5    2     34     2
CoeffofVariation   0.3   0.4  0.7   1.3
LowerConfInterval  2    20    35    45
UpperConfInterval  50    120  122   120
LowerQuartile
Median
Upper Quantile
Inter Quartile Range
Minimum
Maximum
Regression equation
• Write a function that returns a named vector with each statistic of interest. Then use sapply to loop over the data.frame. myFunc <- function(x) c(mean=mean(x), n=length(x), median=median(x)) and then sapply(dat, myFunc). Wrap this in data.frame to get a data.frame rather than a matrix. – lmo Oct 2 '17 at 13:53
• – Jaap Oct 2 '17 at 13:57
• "...These values will be used to create a box plot" Then why not just use ggplot2's geom_boxplot? ggplot2.tidyverse.org/reference/geom_boxplot.html – r.bot Oct 2 '17 at 14:09

You could use something like this:

B1 <- c(8, 6, 13, 6, 27, 104, 18, 3)
B2 <- c(2, 13, 1, 64, 127, 24, 4, 3)
B3 <- c(8, 16, 113, 680, 227, 310, 138, 30)
B4 <- c(238, 46, 613, 69, 7, 14, 4, 8)

combDF <- data.frame(cbind(B1,B2,B3,B4))

data_long <- gather(combDF, factor_key=TRUE)

data_long%>% group_by(key)%>%
summarise(mean= mean(value), sd= sd(value), max = max(value),min = min(value))

and the output would be:

# A tibble: 4 x 5
key    mean        sd   max   min
<fctr>   <dbl>     <dbl> <dbl> <dbl>
1     B1  23.125  33.60458   104     3
2     B2  29.750  44.59260   127     1
3     B3 190.250 224.72253   680     8
4     B4 124.875 212.08653   613     4

You have not specified which confidence level you are looking but the code I posted can be adapted to your problem.

• that tidyr package function gather is awesome! – kslayerr Oct 2 '17 at 14:45

As lmo mentioned, you could use sapply, like this:

sapply(x, function(x) c( "Stand dev" = sd(x),
"Mean"= mean(x,na.rm=TRUE),
"n" = length(x),
"Median" = median(x),
"CoeffofVariation" = sd(x)/mean(x,na.rm=TRUE),
"Minimum" = min(x),
"Maximun" = max(x),
"Upper Quantile" = quantile(x,1),
"LowerQuartile" = quantile(x,0)
)
)

Output:

B1         B2         B3         B4
Stand dev            33.604581  44.592600 224.722527 212.086531
Mean                 23.125000  29.750000 190.250000 124.875000
n                     8.000000   8.000000   8.000000   8.000000
Median               10.500000   8.500000 125.500000  30.000000
CoeffofVariation      1.453171   1.498911   1.181196   1.698391
Minimum               3.000000   1.000000   8.000000   4.000000
Maximun             104.000000 127.000000 680.000000 613.000000
Upper Quantile.100% 104.000000 127.000000 680.000000 613.000000
LowerQuartile.0%      3.000000   1.000000   8.000000   4.000000