R draw survival curve and calculate P-value at specific times

I am trying to figure out how to generate a survival curve and calculate P-value of a specific time point and not of the entire survival curve.

I use the `surv` and `survfit` methods from packages `survminer`, `survival` to create the survival object and `ggsurvplot` to draw the curve and it's p-value.

``````df_surv <- Surv(time = df\$diff_in_days, event = df\$survivalstat)
df_survfit <- survfit(dat_surv ~ Schedule, data = df)

ggsurvplot(
df_survfit ,
data = df,
pval = TRUE
)
``````

Now it calculates the p-value over the entire curve of 2500+ days. I would also like to calculate the P-value at exact intervals. Let's say I would like to know the survival probability at / up-to 365 days.

I can't simply cut-off all records which have survival times longer than x (e.g. 365) days, as below. Then all survival probability drops to 0% since subjects who had the event occur later than 365 aren't taken into account.

the event hasn't there also isn't anybody alive beyond x days anymore.

``````df <- df[df\$diff_in_days <= 365, ]
``````

How can I calculate the P-value at a specific time from the overall curve?

The `dput(head(df)` of my dataframe for reproducible example.

``````structure(list(diff_in_days = structure(c(2160, 84, 273, 1245,
2175, 114), class = "difftime", units = "days"), Schedule = c(1,
1, 1, 2, 2, 2), survivalstat = c(0, 1, 1, 0, 1, 1)), row.names = c(12L,
28L, 33L, 38L, 58L, 62L), class = "data.frame")
``````

My dataframe

• UID (each row is a new entry)
• Event occurrence no/yes (0,1)
• Integer amount of days till event happened (if occurence didnt happen yet, the days from start of monitoring till current is calculated (right-censoring))

EDIT:

using following code to set everybody's event occurance to 0 after 365 days.

``````dat\$survivalstat <- ifelse(dat\$diff_in_days > 365, 0, dat\$survivalstat)
``````

It does calculate the p-value but still over the entire curve. After 365 days it stays horizontal till the end at 2500+ days (since no events occur) and those events after 365 days are all still taken into account because theyre still in the curve. (I assume that even tho all the datapoints after 365 are the same, they still affect the P-value?)

• Could you please provide a minimal reproducible example? – Mr_Z Nov 9 '18 at 9:21
• I can't simply cut-off all records which have survival times longer than x... since subjects who had the event occur later than 365 aren't taken into account. And if you set the survival status `0` for these subjects? – Stéphane Laurent Nov 15 '18 at 13:12
• i've edited my post. It does calculate the p-value but still over the entire curve. After 365 days it stays horizontal till the end at 2500+ days (since no events occur) and those events after 365 days are all still taken into account because theyre still in the curve. – Krijn van der Burg Nov 15 '18 at 13:57
• This is more of a statistics question than a programming question and should be moved to cross validated – Mike Nov 15 '18 at 15:31

If you want a p-value at a specific time point you can do a z-test at a particular time point. In my example below I used the lung data set from the survival package. For better help to see if this method is appropriate I would post this question on cross validated.

``````library(survival)
library(dplyr)
library(broom)
library(ggplot2)
fit1 <- survfit(Surv(time,status)~sex,data = lung)
#turn into df
df <- broom::tidy(fit1)

fit_df <- df  %>%
#group by strata
group_by(strata) %>%
#get day  of interest or day before it
filter(time <= 365) %>%
arrange(time) %>%
# pulls last date
do(tail(.,1))

#calculate z score based on 2 sample test at that time point
z <- (fit_df\$estimate[1]-fit_df\$estimate[2]) /
(sqrt( fit_df\$std.error[1]^2+ fit_df\$std.error[2]^2))
#get probability of z score
pz <- pnorm(abs(z))
#get p value
pvalue <- round(2 * (1-pz),2)

ggplot(data = df,  aes(x=time, y=estimate, group=strata, color= strata)) +
geom_line(size = 1.5)+
geom_ribbon(aes(ymin = conf.low, ymax = conf.high), alpha = 0.2)+
geom_vline(aes(xintercept=365))+
geom_text(aes(x = 500,y=.8,label = paste0("p = " ,pvalue) ))+
scale_y_continuous("Survival",
limits = c(0,1))+
scale_x_continuous("Time")+
scale_color_manual(" ", values = c("grey", "blue"))+
scale_fill_discrete(guide = FALSE)+
theme(axis.text.x = element_text(angle = 45, hjust = 1, size=14),
axis.title.x = element_text(size =14),
axis.text.y = element_text(size = 14),
strip.text.x = element_text(size=14),
axis.title.y = element_blank())+
theme_bw()
``````

Update - getting p-value up to a specific time point using log rank

``````#First censor and make follow time to the time point of interest
lung2 <- lung %>%
mutate(time2 = ifelse(time >= 365, 365, time),
status2 = ifelse(time >= 365, 1,status))
#Compute log rank test using survdiff
sdf <- survdiff(Surv(time2,status2)~sex,data = lung2)
#extract p-value
p.val <- round(1 - pchisq(sdf\$chisq, length(sdf\$n) - 1),3)
``````

In the `ggplot` code above you can replace `pvalue` with `p.val` so it shows the log rank score.

• Thank you very much! this is exactly what I was looking for. Though I was hoping to have the P-value calculated using log-rank. Could you perhaps refer me a link where I can calculate the P-value using log-rank using your method. Thanks again! – Krijn van der Burg Nov 16 '18 at 12:26
• @KrijnvanderBurg I updated the post to show how to get a log rank p-value at a specific time point – Mike Nov 16 '18 at 14:37