# How can I avoid right-truncated subjects being dropped?

I'm doing a survival analysis about the time some individual components remain in the source code of a software project, but some of these components are being dropped by the survfit function.

This is what I'm doing:

library(survival)
data <- read.table(text = "component_id weeks removed
1              1       1
2              1       1
3              1       1
4              1       1
5              1       1
6              1       1
7              1       1
8              2       0
9              2       0
10              2       0
11              2       0
12              2       1
13              2       1
14              2       0
15              2       0
16              2       0
17              2       0
18              2       0
19              2       0
20              2       1
21              2       1
22              2       0
23              2       0
24              3       1
25              3       1
26              3       1
27              3       1
28              7       1
29              7       1
30             14       1
31             14       1
32             14       1
33             14       1
34             14       1
35             14       1
36             14       1
37             14       1
38             14       1
39             14       1
40             14       1
41             14       1
42             14       1
43             14       1
44             14       1
45             14       1
46             14       1
47             14       1
48             40       1
49             40       1
50             40       1
51             40       1
52             48       1
53             48       1
54             48       1
55             48       1
56             48       1
57             48       1
58             48       1
59             48       1
60             56       1
61             56       1
62             56       1
63             56       1
64             56       1
65             56       1
66             56       1
67             56       1
68             56       1
69             56       1", header = TRUE)

fit <- survfit(Surv(data$$weeks, data$$removed) ~ 1)
summary(fit, censored=TRUE)


And this is the output

Call: survfit(formula = Surv(data$$weeks, data$$removed) ~ 1)

time n.risk n.event survival std.err lower 95% CI upper 95% CI
1     69       7    0.899  0.0363        0.830        0.973
2     62       4    0.841  0.0441        0.758        0.932
3     46       4    0.767  0.0533        0.670        0.879
7     42       2    0.731  0.0567        0.628        0.851
14     40      18    0.402  0.0654        0.292        0.553
40     22       4    0.329  0.0629        0.226        0.478
48     18       8    0.183  0.0520        0.105        0.319
56     10      10    0.000     NaN           NA           NA


I was expecting the number of events to be 69 but I get 12 subjects dropped.

I initially thought I was misusing the package functions, and carried a type="interval2" approach, following a similar situation, but the drops keep happening with now a weird continuous number of subjects and events counts:

as.t2 <- function(i, data) if (data$$removed[i] == 1) data$$weeks[i] else NA
size  <- length(data$$weeks) t1 <- data$$weeks
t2    <- sapply(1:size, as.t2, data = data)
interval_fit <- survfit(Surv(t1, t2, type="interval2") ~ 1)
summary(interval_fit, censored=TRUE)


Next, I found what I call a mid-air explanation, clarifying a bit further the situation. I understand this is caused by non-censored subjects appearing after a "constant censoring time", but again, why?

That led me somehow to dig deeper and read about right-truncation and realized that type of studies mapped very closely to the drops I'm experiencing. Here's Klein & Moeschberger:

Truncation of survival data occurs when only those individuals whose event time lies within a certain observational window $$(Y_L,Y_R)$$ are observed. An individual whose event time is not in this interval is not observed and no information on this subject is available to the investigator.

Right truncation occurs when $$Y_L$$ is equal to zero. That is, we observe the survival time $$X$$ only when $$X \leq Y_R$$.

From my perspective, these drops carry important information for my study regardless of their time of entry.

How can I stop the drops?

## migrated from stats.stackexchange.comApr 10 at 16:45

This question came from our site for people interested in statistics, machine learning, data analysis, data mining, and data visualization.

• I have only had grief with R's survival package. It is far easier to solve the problem using the advice on the survival analysis page of Wikipedia and R's $optim$ funtion using the full negative log likelihood described in Wikipedia. Will need a hazard function, and there are several to choose from, also described in Wikipedia. – Peter Leopold Apr 10 at 16:30
• Any chance we could be overlooking any option in the survival package? – elhoyos Apr 11 at 15:14
• I don't mean to nitpick, but I want to get clearer about terminology. I think that will help solve your problem. It looks like you have right-censoring, not truncation, as you do not appear to have a single upper limit of follow-up time for all observations. Using Klein & Moeschberger's terminology, you don't have a $Y_R$ value that is fixed. I say this because you have quite a few rows among IDs 8-23 that have a follow-up time of 2 weeks that do not have removed event recorded---and you have many observations for more than 2 weeks. Thus we have right-censoring, not truncation. – Gregor Apr 15 at 15:25
• I'm also surprised by your statement "I was expecting the number of events to be 69 but I get 12 subjects dropped.". I think we need to clarify subjects vs events. Your data has 69 rows, each with a unique ID, so you have 69 subjects. In the removed column which you use to mark events, there are 57 1s. So among your 69 subjects, you observe 57 events. 12 subjects do not have events in your data. This is a simple description of your data, nothing to do with the survival package or the survfit function. – Gregor Apr 15 at 15:29
• All 69 subjects are included in the survfit results, you can see them in the n.risk column. Those numbers match your data by week. No subjects are dropped until their weeks of observation ends. If you want, I can try to write this up as an answer... – Gregor Apr 15 at 15:31