# Transform a data set to have one row by time-interval

Example

Here is some data for individual with `id = 1`:

``````id time status
--------------
1  t    status
``````

`t` is the time to some event, and `status` is either `1` if then event occurred or `0` if it did not occurred (in which case `t` is the duration of the study).

Say that `t` lies between `a2` and `a3`.

My goal is to transform my data into the following:

``````id period start stop status
---------------------------
1  1     0     a1   0
1  2     a1    a2   0
1  3     a2    t    status
``````

The total time of individual 1 is divided into three intervals where there is no event in `(0, a1)` and `(a1, a2)`

Question

Can you think of an efficient way to write an R-function that inputs a data set and a vector `a=(a1, a2, ..., aK)` and that outputs the transformed data set?

EDIT

Part 1 I have been asked a concrete example. Here is one:

``````    id time status
--------------
1  5    1
``````

and `a1=1`, `a2=3`, `a3=7`.

Part 2 I have also been asked to show my attempt. Here it is

``````> data <- data.frame(id=1, time=5, status=1)
> a <- c(1, 3, 7)
> N <- nrow(data)
> data\$period <- ifelse(data\$time < a[1], 1,
+                       ifelse(data\$time < a[2], 2,
+                              ifelse(data\$time < a[3], 3, 4)))
>
>
> dataTemp1 <- data.frame(matrix(nrow=N, ncol=ncol(data)))
> names(dataTemp1) <- names(data)
> dataTemp2 <- data.frame(matrix(nrow=N, ncol=ncol(data)))
> names(dataTemp2) <- names(data)
> dataTemp3 <- data.frame(matrix(nrow=N, ncol=ncol(data)))
> names(dataTemp3) <- names(data)
> dataTemp4 <- data.frame(matrix(nrow=N, ncol=ncol(data)))
> names(dataTemp4) <- names(data)
>
> for(j in 1:N)
+ {
+   if(data[j, "period"] == 1){
+     data[j, "start"] <- 0
+     data[j, "stop"] <- data[j, "time"]
+   } else if(data[j, "period"] == 2){
+     dataTemp1[j, c("id", "time", "period")] <-
+       data[j, c("id", "time", "period")]
+     dataTemp1[j, "start"] <- 0
+     dataTemp1[j, "stop"] <- a[1]
+     dataTemp1[j, "status"] <- 0
+
+     data[j, "start"] <- a[1]
+     data[j, "stop"] <- data[j, "time"]
+   } else if(data[j, "period"] == 3){
+     dataTemp1[j, c("id", "time", "period")] <-
+       data[j, c("id", "time", "period")]
+     dataTemp1[j, "start"] <- 0
+     dataTemp1[j, "stop"] <- a[1]
+     dataTemp1[j, "status"] <- 0
+
+     dataTemp2[j, c("id", "time", "period")] <-
+       data[j, c("id", "time", "period")]
+     dataTemp2[j, "start"] <- a[1]
+     dataTemp2[j, "stop"] <- a[2]
+     dataTemp2[j, "status"] <- 0
+
+     data[j, "start"] <- a[2]
+     data[j, "stop"] <- data[j, "time"]
+   } else if(data[j, "period"] == 4){
+     dataTemp1[j, c("id", "time", "period")] <-
+       data[j, c("id", "time", "period")]
+     dataTemp1[j, "start"] <- 0
+     dataTemp1[j, "stop"] <- a[1]
+     dataTemp1[j, "status"] <- 0
+
+     dataTemp2[j, c("id", "time", "period")] <-
+       data[j, c("id", "time", "period")]
+     dataTemp2[j, "start"] <- a[1]
+     dataTemp2[j, "stop"] <- a[2]
+     dataTemp2[j, "status"] <- 0
+
+     dataTemp3[j, c("id", "time", "period")] <-
+       data[j, c("id",  "time", "period")]
+     dataTemp3[j, "start"] <- a[2]
+     dataTemp3[j, "stop"] <- a[3]
+     dataTemp3[j, "status"] <- 0
+
+     data[j, "start"] <- a[3]
+     data[j, "stop"] <- data[j, "time"]
+   }
+ }
>
> dataTemp1 <- dataTemp1[complete.cases(dataTemp1), ]
> dataTemp2 <- dataTemp2[complete.cases(dataTemp2), ]
> dataTemp3 <- dataTemp3[complete.cases(dataTemp3), ]
> dataTemp4 <- dataTemp4[complete.cases(dataTemp4), ]
>
> data <- rbind(data, dataTemp1, dataTemp2, dataTemp3, dataTemp4)
> data[, "period"] <- ifelse(data[, "start"] == 0, 1,
+                            ifelse(data[, "start"] == a[1], 2,
+                                   ifelse(data[, "start"] == a[2], 3,
+                                          ifelse(data[, "start"] == a[3], 4,
+                                                 5))))
> data <- data[order(data\$id, data\$start),
+              c("id", "period", "start", "stop", "status")]
> data
id period start stop status
2  1      1     0    1      0
3  1      2     1    3      0
1  1      3     3    5      1
``````
-
You should provide a reproducible example. ai are what dates? Why not to provide some numeeuc values , not just symbols and also can you show what have you tried? –  agstudy Jan 15 '13 at 14:26
@agstudy: I made the edit. However, I would like a fct rather than a program that only works for one single example. –  user7064 Jan 15 '13 at 15:04
@Arun: Wahou, thx ! If you make it an answer, I will accept it! –  user7064 Jan 15 '13 at 15:40

I'll write it as a proper reproducible solution:

``````df <- data.frame( id=1, time=5, status=2)
a <- c(1, 3, 7)

res.fn <- function(df, a) {
id <- rep(1, length(a))
period <- 1:length(a)
start <- c(0, a[1:(length(a)-1)])
stop <- c(a[1:(length(a)-1)], df\$time)
status <- c(rep(0, length(a)-1), df\$status)
data.frame(id, period, start, stop, status)
}
> res.fn(df, a)

id period start stop status
1  1      1     0    1      0
2  1      2     1    3      0
3  1      3     3    5      2
``````
-
That's perfect! –  user7064 Jan 15 '13 at 15:45
Yes, sure, I will. Thx –  user7064 Jan 15 '13 at 15:55