I am currently working on drawing a volcano plot so that I need to calculate the fold-change and p-value. The data is extremely large so I first did some modification in R.

```
table <- read.csv("Sample_OTU_table.csv")
head(table)
table <- matrix(colMeans(table[,2:157]))
```

Now you can see a matrix which is 156X1

```
> head(table)
[,1]
[1,] 0.3950838
[2,] 0.1429951
[3,] 0.1280243
[4,] 0.1098179
[5,] 0.1831748
[6,] 0.3418168
```

It is the means of each of 20000+ data in one column.

I am thinking of merge the rows, such as row1, row2, row3, calculate its mean (in this example, it is (0.39+0.14+0.12)/3), and leave the row4. Then merge row5, row6, row7 and leave row8. So that the matrix will be a 78X1 matrix. Then by using the code

```
newpairs <- as.matrix(pairs, nrow=2, byrow=TRUE)
```

We can split the matrix into two columns X 39 rows matrix, then using the package simpleaffy, the function

```
pc <- get.fold.change.and.t.test(eset.rma,"table",c(",1",",2"))
```

will give the fold-change and p-value of the pair variables. Then the volcano plots will be straightforward.