# How to sum over j=1 to (i-1) for each element of [i] (typing formula from article)

I'm trying to type this formula into R: The formula takes the following inputs:

• M: annual number of deaths (all-cause mortality);
• D: annual number of cancer deaths (cancer mortality);
• R: annual number of registered cancer cases;
• N: size of the mid-year population.
• w: Width of each age-interval, eg. [0-5) is 5 years wide, and the final interval is 85+ year, and thus infinitely wide.

All the above input vectors 18 elements long, because they refer to 18 age-intervals. The first 17 age-intervals are 5 years wide, and the last interval (85+ years) is infinitely wide.

The formula estimates lifetime risk of cancer as proposed by Sasieni et al 2011 http://www.nature.com/bjc/journal/v105/n3/full/bjc2011250a.html

It is the that I don't know how to type.

Below I have tried to implement the parts of the equation before and after the .

``````# Input data:
M <-   c(140L, 12L, 12L, 59L, 94L, 101L, 117L, 213L, 368L, 607L, 1025L,
1488L, 2255L, 2787L, 3257L, 3715L, 4231L, 6281L)

R <-  c(42L, 22L, 28L, 54L, 77L, 108L, 169L, 227L, 293L, 531L, 863L,
1464L, 2591L, 3334L, 3045L, 2605L, 1890L, 1261L)

D <-  c(2L, 1L, 2L, 6L, 4L, 7L, 15L, 26L, 67L, 120L, 304L, 497L, 883L,
1158L, 1321L, 1318L, 1177L, 1065L)

N <- c(167323L, 168088L, 176017L, 180986L, 168189L, 155506L, 174274L,
195538L, 207287L, 204711L, 183802L, 174342L, 183415L, 151277L,
104199L, 71782L, 47503L, 33946L)

# W width of age interval
w <-  c( 5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,Inf )

# function
v1 <- numeric()

for(i in 1:length(R))  {

v1[i] <- R[i] /  ( R[i] + M[i] - D[i] )  *  ( 1 - exp( - (w[i]/N[i]) *  (R[i] + M[i] - D[i]) ) )

}

sum(v1)
``````

Answers where the code looks as much as possible like the equation are preferred, so that coworkers with no knowledge of R can recognize the equation in the code.

The answer is supposed to be 0.376127241057822

• Can you pinpoint the problem? – Roman Luštrik Apr 14 '16 at 9:11
• Do you know that the result should be? – Richard Telford Apr 16 '16 at 17:22
• No i don't know what the result should be unfortunately. – Rasmus Larsen Apr 16 '16 at 17:23
• so when i=1, S_0 is the summation from j=1 to i=1-1? or is this defined to be 1? or more likely I don't understand math – rawr Apr 16 '16 at 20:58
• @rawr This is defined to be zero. I just asked at math.stackexchange.com/a/1743772/92875 – Rasmus Larsen Apr 17 '16 at 10:59

Maybe this will work. Isn't there an example in the paper that you can check?

``````f <- function(idx) {
s <- numeric(idx)
for (i in 1:idx)
s[i] <- R[i] / (R[i] + M[i] - D[i]) * S(i) * (1 - exp(-w[i] / N[i] * (R[i] + M[i] - D[i])))
s
}

S <- function(idx) {
if (idx == 1L)
return(1)
s <- numeric(idx - 1)
for (j in 1:(idx - 1))
s[j] <- (R[j] + (M[j] - D[j])) / N[j]
exp(-sum(s))
}

# Input data:
M <-   c(140L, 12L, 12L, 59L, 94L, 101L, 117L, 213L, 368L, 607L, 1025L,
1488L, 2255L, 2787L, 3257L, 3715L, 4231L, 6281L)
R <-  c(42L, 22L, 28L, 54L, 77L, 108L, 169L, 227L, 293L, 531L, 863L,
1464L, 2591L, 3334L, 3045L, 2605L, 1890L, 1261L)
D <-  c(2L, 1L, 2L, 6L, 4L, 7L, 15L, 26L, 67L, 120L, 304L, 497L, 883L,
1158L, 1321L, 1318L, 1177L, 1065L)
N <- c(167323L, 168088L, 176017L, 180986L, 168189L, 155506L, 174274L,
195538L, 207287L, 204711L, 183802L, 174342L, 183415L, 151277L,
104199L, 71782L, 47503L, 33946L)
# W width of age interval
w <-  c( 5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,Inf )

f(18)
#   0.0012516883 0.0006533947 0.0007939380 0.0014874104 0.0022786758 0.0034506651
#   0.0048088199 0.0057397672 0.0069608906 0.0126706127 0.0226156951 0.0395612334
#  0.0644167605 0.0956951717 0.1184236481 0.1330917708 0.1256574840 0.1421444626

sum(f(18))
#  0.7817021
``````

A more "R" way would be

``````lr <- length(R)
S <- sapply(seq(R), function(idx)
exp(-sum((R[-(idx:lr)] + (M[-(idx:lr)] - D[-(idx:lr)])) / N[-(idx:lr)])))
sum(R / (R + M - D) * S * (1 - exp(-w / N * (R + M - D))))
#  0.7817021
``````
• Does this answer take into account that s should be zero when the idx =1? (and therefore that exp -sum(s)) =1 | idx = 1.) as I believe it should.... – Rasmus Larsen Apr 18 '16 at 15:14
• using negative indices in sapply to get a nested sum is a nifty trick! – jaimedash Apr 19 '16 at 21:34

Maybe I'm reading the problem incorrectly, but could you solve this by manually shifting the S*0(ai) vector by 1 to account for the summation from j=1 to i-1 and combining with `cumsum`?

``````#df is a data.frame of the example data.  Jump to bottom for code.

#index i = row i
#Using mutate() from dplyr library to make code easier to read
df <- dplyr::mutate(df, RMDN.i = R/(R+M-D) * ( 1 - exp( -(w/N) * (R+M-D) ) ))

#Shift values down one because equation sums from j=1 to i-1.
df\$S0.ai <-exp(-cumsum(df\$RMDN.i_1))     #Cumulative sum

#Again, cumulative sum to calculate lifetime risk (Eq. 7)
df <- dplyr::mutate(df, risk = cumsum( R/(R+M-D) * S0.ai * (1 - exp(-(w/N) * (R+M-D)) ) ))

df
#   age    M    R    D      N   w       RMDN.i     RMDN.i_1     S0.ai        risk
#1    0  140   42    2 167323   5 0.0012516883 0.0000000000 1.0000000 0.001251688
#2    5   12   22    1 168088   5 0.0006540980 0.0012516883 0.9987491 0.001904968
#3   10   12   28    2 176017   5 0.0007949486 0.0006540980 0.9980960 0.002698403
#4   15   59   54    6 180986   5 0.0014896253 0.0007949486 0.9973029 0.004184011
#5   20   94   77    4 168189   5 0.0022834186 0.0014896253 0.9958184 0.006457881
#6   25  101  108    7 155506   5 0.0034612823 0.0022834186 0.9935471 0.009896828
#7   30  117  169   15 174274   5 0.0048298858 0.0034612823 0.9901141 0.014678966
#8   35  213  227   26 195538   5 0.0057738828 0.0048298858 0.9853435 0.020368224
#9   40  368  293   67 207287   5 0.0070171053 0.0057738828 0.9796707 0.027242676
#10  45  607  531  120 204711   5 0.0128095925 0.0070171053 0.9728203 0.039704108
#11  50 1025  863  304 183802   5 0.0229777407 0.0128095925 0.9604383 0.061772810
#12  55 1488 1464  497 174342   5 0.0405424457 0.0229777407 0.9386212 0.099826810
#13  60 2255 2591  883 183415   5 0.0669506082 0.0405424457 0.9013283 0.160171288
#14  65 2787 3334 1158 151277   5 0.1016317397 0.0669506082 0.8429595 0.245842732
#15  70 3257 3045 1321 104199   5 0.1299648254 0.1016317397 0.7614977 0.344810654
#16  75 3715 2605 1318  71782   5 0.1532142188 0.1299648254 0.6686912 0.447263656
#17  80 4231 1890 1177  47503   5 0.1550955224 0.1532142188 0.5737009 0.536242096
#18  85 6281 1261 1065  33946 Inf 0.1946888992 0.1550955224 0.4912792 0.631888708

library(ggplot2)
ggplot(df, aes(x= age, y= risk)) + geom_line() + geom_point() + theme_classic()
`````` ``````# Input data:
df <- data.frame(
age = seq(0,85, by = 5),  #age band
M =   c(140L, 12L, 12L, 59L, 94L, 101L, 117L, 213L, 368L, 607L, 1025L,
1488L, 2255L, 2787L, 3257L, 3715L, 4231L, 6281L),
R =  c(42L, 22L, 28L, 54L, 77L, 108L, 169L, 227L, 293L, 531L, 863L,
1464L, 2591L, 3334L, 3045L, 2605L, 1890L, 1261L),
D =  c(2L, 1L, 2L, 6L, 4L, 7L, 15L, 26L, 67L, 120L, 304L, 497L, 883L,
1158L, 1321L, 1318L, 1177L, 1065L),
N = c(167323L, 168088L, 176017L, 180986L, 168189L, 155506L, 174274L,
195538L, 207287L, 204711L, 183802L, 174342L, 183415L, 151277L,
104199L, 71782L, 47503L, 33946L) ,
w =  c( 5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,Inf ) # W width of age interval
)
``````