# How to quantify overlap between three periods?

I am writing a function to calculate the duration of overlap between three periods, but I am having trouble in finding out how to efficiently program this, so hopefully someone can help me out.

I have a dataset of people who have been followed over time. The starting date, and also the time spent in the study differs between the participants. For each participant, I would like to calculate how many days they were in the study in a specific year and in which 5-year age category that was. For example, if someone was in the study from 01-01-2000 to 01-06-2001, and he was born on 15-06-1965, he would contribute 166 days to the 30-34 year age category in 2000, 200 days in the 35-39 year age category in 2000 and 151 days in to the 35-39 year age category in 2001, while he spent 0 days in all other categories.

In other words: I would like to quantify the overlap between these periods:

A = entering study to ending study (varies among participants, but fixed value within participant)

B = begin specific year to end specific year (same among participants, varies within participant)

C = entering specific 5-yr age category to exiting specific 5-yr age category (varies among participants, varies within participant)

My data looks something like this:

dat <- data.frame(lapply(
data.frame("Birth"=c("1965-06-15","1960-02-01","1952-05-02"),
"Begin"=c("2000-01-01","2003-08-14","2007-12-05"),
"End"=c("2001-06-01","2006-10-24","2012-03-01")),as.Date))

Thus far, I came up with this, but now do not know how to proceed (or whether I should take a totally different approach)…

spec.fu <- function(years,birth,begin,end,age.cat,data){

birth <- data[,birth]
start.A <- data[,begin]
end.A <- data[,end]

for (i in years){
start.B <- as.Date(paste(i,"01-01",sep="-"))
end.B <- as.Date(paste(i+1,"01-01",sep="-"))

for (j in age.cat){
start.C <- paste((as.numeric(format(birth, "%Y"))+j),
format(birth,"%m-%d"), sep="-")
end.C <- paste((as.numeric(format(birth, "%Y"))+j+5),
format(birth,"%m-%d"), sep="-")

result <- ?????

data[,ncol(data)+?????] <- result
colnames(data)[ncol(data)+?????] <- paste("fu",j,"in",i,sep="")
}
}
return(data)
}

And use it like this:

newdata <- spec.fu(years=2000:2001,birth="Birth",begin="Begin",
end="End",age.cat=seq(30,35,5),data=dat)

So, in this case, I want to make 2 (no. of age categories) * 2 (no. of years) = 4 new columns for each participant, each containing the no. of days that someone has spent in the study in that specific category (e.g. in age category 30-34 in 2001).

Hopefully I was able to clearly explain my problem.

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You may want to look at the ?survSplit function in the eha package. df <- survSplit(dat, cut=as.Date(paste(1950:2013, "01", "01", sep="-")), end="End", start="Birth", event="ev",id="id") –  shadow Jul 31 '13 at 13:23
@shadow Thanks, survSplit looks really useful. I found a solution without using it though (see below), but perhaps using survSplit (or code based on it) could be more efficient/concise. –  Rob Aug 1 '13 at 12:59

I found a solution (see below). The code looks rather cumbersome though, so can probably be made more efficient. Any advise is welcome!

spec.fu <- function(years,birth,begin,end,age.cat,data){

birth <- data[,birth]
start.A <- data[,begin]
end.A <- data[,end]

if (any(sapply(c(birth,start.A,end.A),FUN=function(x) class(x)!="Date"))) {
stop("'birth', 'begin' and 'end' must be of class 'Date''") }

# ifelse-function that saves Date class in vectors
# (http://stackoverflow.com/questions/6668963)
safe.ifelse <- function(cond, yes, no) {
structure(ifelse(cond, yes, no), class = class(yes))}

for (i in years){
start.B <- rep(as.Date(paste(i,"01-01",sep="-")),nrow(data))
end.B <- rep(as.Date(paste(i+1,"01-01",sep="-")),nrow(data))

start.AB <- safe.ifelse((start.A <= end.B & start.B <= end.A) &
start.A >= start.B, start.A,
safe.ifelse((start.A <= end.B & start.B <= end.A) &
start.B >= start.A, start.B,
as.Date("1000-01-01")))
#in latter case overlap is zero, but a Date is required later on

end.AB <- safe.ifelse((start.A <= end.B & start.B <= end.A) &
end.A <= end.B, end.A,
safe.ifelse((start.A <= end.B & start.B <= end.A) &
end.B <= end.A, end.B,
as.Date("1000-01-01")))

for (j in age.cat){
start.C <- safe.ifelse(format(birth,"%m")=="02" & format(birth,
"%d")=="29",
as.Date(paste((as.numeric(format(birth,
"%Y"))+j),format(birth,"%m"),
"28", sep="-")),
as.Date(paste((as.numeric(format(birth,
"%Y"))+j), format(birth,"%m-%d"),
sep="-")))
end.C <- safe.ifelse(format(birth,"%m")=="02" & format(birth,
"%d")=="29",
as.Date(paste((as.numeric(format(birth,
"%Y"))+j+5),format(birth,"%m"),
"28", sep="-")),
as.Date(paste((as.numeric(format(birth,
"%Y"))+j+5),format(birth,"%m-%d"),
sep="-")))
start.ABC <- safe.ifelse((start.AB <= end.C & start.C <= end.AB) &
start.AB >= start.C, start.AB,
safe.ifelse((start.AB <= end.C & start.C <= end.AB) &
start.C >= start.AB, start.C,
as.Date("1000-01-01")))

end.ABC <- safe.ifelse((start.AB <= end.C & start.C <= end.AB) &
end.AB <= end.C, end.AB,
safe.ifelse((start.AB <= end.C & start.C <= end.AB) &
end.C <= end.AB, end.C,
as.Date("1000-01-01")))

result <- as.numeric(difftime(end.ABC,start.ABC,units="days"))

data <- cbind(data,result)
colnames(data) <- c(colnames(data)[1:(ncol(data)-1)],
paste("fu",j,"in",i,sep=""))
}
}
return(data)
}

The function can be used as follows:

newdata <- spec.fu(years=2000:2001,birth="Birth",begin="Begin",
end="End",age.cat=seq(30,35,5),data=dat)

Which gives the following result (new columns 4:7):

> newdata
Birth      Begin        End fu30in2000 fu35in2000 fu30in2001 fu35in2001
1 1965-06-15 2000-01-01 2001-06-01        166        200          0        151
2 1960-02-01 2003-08-14 2006-10-24          0          0          0          0
3 1952-05-02 2007-12-05 2012-03-01          0          0          0          0

UPDATE (August 6 2013): Fixed bug in function that caused NA's when date of birth was on leap day.

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