I am using the code below to calculate the correlation map between two datasets. This code worked fine and I got the results which look like:.

```
dir1 <- list.files("D:thly", "*.bin", full.names = TRUE)
dir2 <- list.files("D:002", "*.envi", full.names = TRUE)
file_tot <- array(dim = c(1440, 720, 11, 2))
for(i in 1:length(dir1)) {
file_tot[, , i, 1] <- readBin(dir1[i], numeric(), size = 4,
n = 1440 * 720, signed = T)
file_tot[, , i, 2] <- readBin(dir2[i], numeric(), size = 4,
n = 1440 * 720, signed = T)
}
resultscor<-apply(file_tot,c(1,2),function(x){cor(x[,1],x[,2],use = "na.or.complete")})
```

I would like to calculate the correlation only when the `P-value is lower than 0.05`

. this function will do the job:

```
return_cor = function(x, y) {
z = cor.test(x,y)
if(z[[3]] < 0.05) {
return(z[[5]])
} else {
return(NA)
}
}
```

However I got this error:

```
Error in cor.test.default(x, y) : not enough finite observations
```

in order to return NA when there are less than 3 pairs,this function do the job:

```
cor_withN <- function(...) {
res <- try(cor.test(...)$estimate, silent=TRUE)
ifelse(class(res)=="try-error", NA, res)
}
```

Both functions worked perfectly.How can we merge both functions into one function so we calculate correlation when P value is (certain value, threshold) and also do the calculations even if there are less than 3 pairs.

`z = cor.test(x,y)`

with`z = cor_withN(x,y)`

in your first function (make sure to define`cor_withN`

beforehand). However, you need to modify "return_cor" to handle the case`is.na(z)==TRUE`

. – Roland Feb 21 '13 at 10:44`$estimate`

from`cor_withN`

and let it return the whole object. – Roland Feb 21 '13 at 10:47`resultsr<-apply(file_tot,c(1,2),function(x){return_cor(x[,1],x[,2])})`

but got this error:`Error in z[[3]] : subscript out of bounds`

– Barry Feb 21 '13 at 10:54`is.na(z)==TRUE`

– Barry Feb 21 '13 at 10:55