I have a list of dataframe and would like to apply if else function through the list

```
df1= data.frame(letter=LETTERS[1:5], res=runif(10), cens=rep(0:1,5))
df2= data.frame(letter=LETTERS[1:5], res=runif(10), cens=rep(0,5))
df3= data.frame(letter=LETTERS[1:5], res=runif(10), cens=rep(0:1,5))
df4= data.frame(letter=LETTERS[1:5], res=runif(10), cens=rep(0,5))
df.list=list(df1,df2,df3,df4)
reg.stats = function(var1){
gm.reg=exp(mean(log(var1)))
gsd.reg=exp(sd(log(var1)))
return(c(gm.reg,gsd.reg))
}
other.stats = function(obs,cens){
nondetects <- obs[cens==1]
detects <- obs[cens== 0]
gm.other=exp(mean(log(detects)))
gsd.other=exp(sd(log(detects)))
return(c(gm.other,gsd.other))
}
```

I would like to loop through each df and if the sum of the cens variable in an individual df = 0 (i.e. df2) then apply the reg.stats function, otherwise apply the other.stats function.

In the real dataset, I have a list of 50+ dfs and what I did in the past was to manually pick out the dfs where all the cens = 0 and use the lapply function. It was ok but if I separate the dataframe and use lapply separate for each list and then combine the results, the order is changed and then I need to reorder the result. Is there a quicker, cleaner way to do this?

```
uncens.list = df.list[c(2,4)]
uncens.res= lapply(uncens.list, function(i) reg.stats(i$res))
cens.list = df.list[c(1,3)]
cens.res.=lapply(cens.list,function(i) other.stats(i$res,i$cens))
```