I have a table, the start is below:
Control_H1455_121005_4 Case_X1456_121005_1 Case_V1457_121005_7 Control_K1461_121005_2 ENSG00000419.8 0 0 14 3 ENSG00000457.8 2 0 1 0 ENSG00000460.11 18 3 16 6 ENSG00000938.7 0 0 0 0
1) First I want to change the colnames. Only the part before the 2nd underscore is important, so e.g in Control_H1455_121005_4, I want to shorten it to just Control_H1455. Here's my code so far:
But this returns
"_H1455_121005_4". The part I want to keep is actually
Case_H1455. So I just want to keep all the characters up until the 2nd underscore.
UPDATE: for (2), I have the following code:
#separating data into Control & Case groups data_con=data[which(substring(names(data),2,2) %in% c("o"))] data_case=data[which(substring(names(data),2,2) %in% c("a"))] #delete rows if both case and control groups have >= 90% cols that contain 0 #data <- data[(rowSums(data_case==0)/ncol(data_case) < 0.9 & rowSums(data_con==0)/ncol(data_con) < 0.9) , ]
It seems to be working.
2) I want to filter through the each row and divide the data in that row in 2 groups: Control and Case. Then, I want to delete a row if and only if it satisfies the following condition: that >= 90% of the cols contains 0 in both Case AND Control group. So in this sample table, in order to delete a row, the groups Control and Case have to each contain >=90% of cols that contain 0. So here it'd be the last row. If the Case group contains >=90% of cols that have 0 but the Control group has <90% cols with 0 (or vice versa), then that row should be kept. To do this, I currently have the following code:
data <- data[rowSums(data==0)/ncol(data) < 0.9, ]
but this doesn't separate each row by Case and Control and look at each group individually. Please keep in mind also that there are many more cols and rows in the actually data and Control and Case appear randomly from col to col.
So any help on number (1) would be greatly appreciated!