I have a 94 varibles(sample+proteins+group) and 172 observations in a matrix as:
Sample   Protein1   Protein2 ... Protein92 Group
1          1.53      3.325   ...   5.63      0
2          2.32      3.451   ...   6.32      0
.
. 
.
103        3.24      4.21    ...   3.53      0               
104        3.44      5.22    ...   6.78      1
.
.
.
192        6.75      4.34    ...   6.15      1
Some of the sample are in group 0 and some are in group 1. I want to test if there is a differences between group 0 and 1 using a t-test and I want to do it for all the proteins. I was thinking of using an apply, but I am not sure how to use it. Also the names are not Protein1, protein2... , it is much longer so I would not want to have to write them all.
I also would only like the p-value for each protein in a matrix, something like this:
Protein  p-value
Protein1   0.00563
Protein2   0.0640
.
.
Protein92  0.610
Or something similar so that I after can find just the ones with a p-value lower than 0.05/92.
Edit:
Started working in long format this thing is not really a problem anymore:
library(tidyverse)
df %>%
gather(Protein, Value,-Sample,-Group)) %>%
group_by(Protein) %>%
do(broom::tidy(t.test(Value ~ Group, data = .))) %>%
ungroup() %>% 
mutate(Adjusted_pval = p.adjust(p.value, method = "fdr"))
 
    