I want to convert all 0s in the matrices of a list into NAs. I figured out a way how to achieve this task. However, it is too complex and I think there should be an easy way how to do it. Here some example data:

```
ABlue <- list("111.2012"=matrix(c(1, 0, 6, 0, 1, 0),
nrow = 1, byrow = T),
"112.2012"=matrix(c(6, 2, 2, 0, 3, 1),
nrow = 1, byrow = T),
"111.2011"=matrix(c(3, 2, 0, 0, 1, 9),
nrow = 1, byrow = T),
"112.2011"=matrix(c(1, 2, 0, 0, 7, 0),
nrow = 1, byrow = T))
CNTRYs <- c("USA", "GER", "UK", "IT", "CND", "FRA")
ABlue <- lapply(ABlue , "colnames<-", CNTRYs ) # gets names from Country list
```

Important is that the original matrices already have Country names as colnames, so it would be nice to match with this list (ABlue).

Here the way I use until now:

```
ABlue.df<-data.frame(do.call("rbind",ABlue)) # two step approach to replace 0 with NA according to: "http://stackoverflow.com/questions/22870198/is-there-a-more-efficient-way-to-replace-null-with-na-in-a-list"
ABlue.df.withNA <- sapply(ABlue.df, function(x) ifelse(x == 0, NA, x))
ABlueNA <- split(ABlue.df.withNA, 1:NROW(ABlue.df.withNA)) # is again a list (of vectors)
names(ABlueNA) <- names(ABlue) # list with old names
ABlueNAdf <- lapply(ABlueNA, function(x) as.data.frame(x)) # turned into list of dfs of one column
ABlueNAdfT <- lapply(ABlueNAdf, function(x) t(x)) # transponed to list of dfs of one row and 206 cols
ABlueNAdfTnam <- lapply(ABlueNAdfT , "colnames<-", CNTRYs ) # gets names from Country list
ABlueNAdfTnam <- lapply(ABlueNAdfTnam , "rownames<-", 1:NROW(ABlueNAdfTnam[1]) )
ABlue2 <- ABlueNAdfTnam
```

Ideas how to reduce lines and complexity? Thanks

**Edit:** I want to have the same structure as in the original data!