Questions tagged [survival-analysis]

Survival analysis is the statistics of censored time to event data, to which standard regression and classification techniques generally do not apply, due to the uncertain group memberships of the observations. The name originated from biological systems where the outcome of interest was indeed survival or death, but the concept applies equally well to mechanical failure, economic events or other types of prognostication.

Filter by
Sorted by
Tagged with
0
votes
0answers
20 views

Reverse Y-axis of a plot after used flexsurvreg/flexsurvspline function

I'm trying to plot the "inverse" probability curve of a flexible survival model (Royston-Parmar), where the Y-axis is "reversed": instead of having the survival probability curve decreasing on the ...
2
votes
2answers
24 views

How to get the wald test of a specific variable in a multivariate Coxph?

I fitted a multivariate Cox model using the R survival package like follow: library(survival) data(lung) res.cox1 <- coxph(Surv(time, status) ~ sex + ph.karno + wt.loss, data = lung) res.cox1 ...
0
votes
0answers
14 views

Draw a random variable from conditional Weibull

I would like to estimate the remaining lifetime of a number of objects, which all follow a Weibull distribution. Since every object is already runnning for a given amount of time, we are dealing with ...
0
votes
0answers
17 views

Creating time-varying covariates when time is different for each observation

I'm attempting to conduct survival analysis with time-varying covariates. The data comes from a longitudinal survey that is administered biannually, and currently looks something like this: id ...
0
votes
0answers
19 views

Prepare longitudinal data for kaplan-meier/survival analysis

I'm working on a longitudinal data set with multiple patients that have been observed yearly. At each observation (= each row), we tracked if a certain condition is present (ordinal variable). Also, ...
-1
votes
0answers
10 views

AnyLogic survival analysis with system dynamics and ABM

I have a survival analysis ABM (I'm not super familiar with stock-and-flow models, so there may be a faster way to do what I'm trying to do). There are three states for each individual: In hospital ...
1
vote
0answers
22 views

R: returns error when trying to write Summary() into a data frame with function (etm / competing risk)

I am trying to conduct a competing risk analysis. I have a rather small dataset p, which can found below. I have a function to convert the cumulative incidence-function from etmCIF (from library(etm)...
0
votes
1answer
19 views

use labels in cox regression results

Trying to add labels to variable name to make it more coherent when displaying results The following library(survival) data(lung) Hmisc::label(lung$sex) <- "Gender" res.cox <- coxph(Surv(time, ...
0
votes
1answer
31 views

p.value filtration from an lapply-function applied for the function coxph

I'm running the survival analysis for each of expression levels of 566 genes. I did this by combining the function coxph() with the function lapply, and it worked well. Right now, due to the large ...
0
votes
0answers
20 views

discrete time survival analysis in R

I would like to analyse my data with a discrete time model using the traditional logit link to the binomial distribution. I looked into the survival analysis examples and packages in R, and I could ...
-1
votes
0answers
22 views

How to plot survival curves using jointModel in R?

I am trying to build a joint model using R package JM. Let's assume I'm following the default example in the manual as follows: fitLME <- lme(sqrt(CD4) ~ obstime + obstime:drug, ...
0
votes
0answers
18 views

P-value in ggsurvplot for time-varying Kaplan Meier

I would like to know how to display the p-value for Kaplan Meier curve when using time-varying cox model (adjusted Kaplan Meier). I have a reproducible example using the pbc dataset from the survival ...
0
votes
0answers
17 views

Survival analysis with gaussian distribution in R [migrated]

I have a rather basic question about survival analysis with a gaussian distribution of the response variable. I have interval censored data, that look something like this (just an example): ...
0
votes
1answer
16 views

Age as a time dependant covariate in Cox regression

I have a question regarding time-dependant variables in survival analysis. Do you usually count age as a time varying variable? I am looking at a population of cancer patients who received certain ...
0
votes
0answers
13 views

tmerge() in R for categorical variables

(This is an edited version of a previously closed question) I have a data.frame (condensed to testdata) of several demographic variables in addition to one variable with three levels for three ...
1
vote
1answer
36 views

Implausibly wide confidence intervals produced by survfit() for interval censored data

I have data which is generated by intermittent interviews in which an individual is asked whether they are experiencing a certain symptom. The last time each individual was known to not have this ...
0
votes
0answers
12 views

How to use predictSurvProb with different times for each observation in R?

I would like to use the predictSurvProb function from pec package in order to predict the survival probabilities for each observation of my data frame. I fitted a Cox model to my data, and I am ...
0
votes
0answers
20 views

How to modify the baseline hazard in Weibull regression according in r?

How can I specify baseline hazard function in r for Weibull regression* according to my preference, i.e in my research problem my time scale is age and the follow-up starts from age 30 and ends at the ...
0
votes
0answers
16 views

simsurv R function: is there a way to define different censor rates?

I'm trying to generate a few simulated survival datasets. I've chosen the simsurv function as it allows me to generate time varying coefficients (and hence non-proportional hazards). However, how do I ...
3
votes
1answer
40 views

Removing percent sign in ggsurvplot R

I have the following code where I am building a survival curve with percentages instead of proportions. I am also breaking the survival time by tens. I would like to remove the percent symbols from ...
0
votes
0answers
12 views

Cox models in survival package. id not found

I have replicated the competing risk model in Terry's book pg 53-4 and obtain the error message: object id not found. How can I solve this problem? Here is a replication code library(survival) crdata ...
0
votes
1answer
18 views

Determine Median Residual Lifetime of Lognormal Distribution

Stefan Gelissen provides and excellent overview on how to determine median residual lifetime of a lognormal distribution in his blog here However, when running his code, I stumbled upon this line (...
0
votes
0answers
15 views

Weibull model survival curve incorrectly influenced by factor (categorical) covariate in R

I made a series of survival curves in R and ran into a finding that doesn't make sense to me: Analysis 1: for the entire sample, I created curves with 2 covariates (gender = M/F (binary), and job ...
0
votes
0answers
6 views

How to compare independent variables that turned out to predict the event of interest using the survival analysis

I have tested in R using the survival package the predictive ability of some independent variables (IV). Among them, 5 turned out to predict my dependent variable (worsening in a cognitive test). So ...
0
votes
1answer
53 views

Interactions in Cox proportional hazard model : issue between contrasts and two categorical factors

I need help in order to understand how the coxph() function in R works, thus how to interprete CORRECTLY the output. I try to run a cox proportional hazard model on a 'survival analysis' data set ...
0
votes
1answer
13 views

Get a 'survfit' object which will be the same size than the original data in case of ties? (survival, R)

I want the survival probability estimated by Kaplan-Meier estimator for each individual of my dataframe. The survfit(Surv(.)) function calculates the survival probability for each unique time ordered ...
0
votes
0answers
14 views

R: housing cycles with house price data

Hi I am trying to do some analysis on house price data on the durations of the 3 stages of a housing cycle: boom, bust and normal time. I am thinking of defining the 3 stages by rate of change of ...
1
vote
0answers
57 views

flexsurv package: code for plotting predictions on Kaplan-Meier curves for two study groups

Code I used for data entry: library(tidyverse) library(survminer) library(flexsurv) library(survival) library(finalfit) data = read_delim("data.csv", ",", escape_double = FALSE, trim_ws = TRUE) ...
3
votes
1answer
38 views

Specifying custom time points for survival plot

I'm working on creating a survival/cumulative event plot using the ggsurvplot function from the survminer package. I want to specify custom time points for my plot, but I cannot figure out how to do ...
2
votes
1answer
34 views

How to add vertical lines and annotation to survival plot with risk table (R)

I want to have a survival plot with a risk table with a vertical line at 12 months and 36 months. Initially I was able to go this figure1$plot + geom_vline(xintercept = 12) + geom_vline(intercept = ...
0
votes
0answers
43 views

Time-varying covariates: formatting for one categorical variable with 3 levels

(This is an edited version of a previously closed question) I have a data.frame (condensed to testdata) of several demographic variables in addition to one variable with three levels for three ...
0
votes
0answers
7 views

Does the quoted line mean that the 6 cars would have gained more miles? If not, what does it mean?

I am reading Jayant Deshpande's "Life Time Data: Statistical Models and Methods" book and while reading about Right Random Censoring, I read about this example. Example of Random (right) Censoring A ...
0
votes
0answers
9 views

How to deal with serially correlated features in Survival Regression?

I am trying to model a set of data related to an event completion. The data is right censored. I want to build a survival regression model. The first set of features are uncorrelated, example: brand ...
0
votes
0answers
11 views

smcure Error in while (convergence > eps & i < emmax) { : missing value where TRUE/FALSE needed

I get this error while using smcure. I don't have missing values in my data, no null data and enough observations in each variable to be able to fit the model. Moreover, all my data is numerical or ...
0
votes
0answers
60 views

Is Accelerated Failure Time (AFT) method acceptable for answering my study question (an example)?

I need to conduct an adjusted survival analysis, however, Cox PH assumption was not met and data stratification isn't a good solution as one of my study groups already has a small number of patients. ...
0
votes
0answers
24 views

lag effects in case crossover design using R clogit() function

I'm doing a time-stratified case-crossover analysis to look at the effects of air pollution (with different lags) on asthma hospital admissions at an individual level. I created this data table in R ...
0
votes
0answers
16 views

Cox Hazard Model: why multiple factor levels are reference?

When conducting a multivariate Coxph model with categorical predictors, and after releveling all predictor variables (function= relevel()), two of my predictor variables have multiple levels that are "...
2
votes
2answers
38 views

Keep all rows up to a specific value in R using dplyr

I've got survival analysis data, but unfortunately the event itself isn't death. (Well, fortunately for the people in the dataset). This means someone may remain in the dataset for longer than their ...
1
vote
1answer
32 views

How can I apply restrictions and limited accessibility to inputs based on values from other inputs in Shiny?

I am completely new to shiny, and I am trying to create a quite simple app as part of learning it. Questions: (1) how can I apply a restriction on the sliderInput("n.sygdom" ...)? The intention is ...
1
vote
0answers
20 views

Is there a way to bound the variances estimates in the `coxme` R package?

I use the variance estimates obtained in a coxmeoutput for a further procedure: model = coxme(Surv(time, status) ~ (0 + A | B ) + (1| B ) + strata(A) , data) NUM = sum(unlist(model$vcoef)) However, ...
0
votes
1answer
19 views

Generating Data for Survival Analysis in r

I have a dataframe that record if an individual assumed a certain drug each year: df_og <- data.frame( id=c(1,1,1,2,2,2,3,3,3,3), year=c(2001,2002,2003,2001,2002,2003,2000,2001,2002,2003), ...
0
votes
1answer
45 views

How to extract summary() to a data frame applicable for data visualization in ggplot()?

I am doing survival-analysis with the presence of competing risks. I use the prodlim-package, which I find quite useful. However, I do not like the build-in graphics, and would like to apply ggplot ...
0
votes
0answers
26 views

Is there a way in Python to select only certain variables (from the data set) for input features used in Deep Learning?

I am very new to implementing deep-learning for survival analysis using Pycox package. I am using The Molecular Taxonomy of Breast Cancer International Consortium (METABRIC), which contains ...
0
votes
0answers
8 views

Using a feature heavily correlated with time to event in cox-regression

I have a data set of customers with time to event and a churn event. I also have a variable that is the total purchases of the customer. Time and event are defined as: Time to event: First purchase ...
2
votes
1answer
43 views

Why does Survival curve sum up to 100% when less than 50% experience event?

This problem has confounded me for more hours than I care to admit. I have isolated the problem so I can replicate it. library(survival) library(survminer) set.seed(123) test <- data.frame(rnorm(...
0
votes
0answers
23 views

Cox regression univariate to multiple covariates at once

I know there were questions about it, but I couldn't solve it. I'm trying to write a function as presented here(http://www.sthda.com/english/wiki/cox-proportional-hazards-model) and here (Getting P-...
1
vote
1answer
45 views

R package smcure error Error in `[[<-.data.frame`(`*tmp*`, i, value = c(19L, 19L, 19L, 18L, 19L, : replacement has 2250 rows, data has 750

pd <- smcure(Surv(unemployment_time,censor)~Sex+Immigrant+Education_level, cureform=~Sex+Immigrant+Education_level, data=dmpold,na.action=na.omit,model="ph",Var=TRUE) ...
0
votes
0answers
29 views

Bayesian parametric survival analysis

Hello Stackoverflowers, I have been working on the equation found in the book: Bayesian survival analysis by Joseph Ibrahim 2001 (Chapter parametric models p40-42). I manage to get a model going ...
0
votes
0answers
20 views

How to get predictions for each new observation in Random Survival Forest in R?

I am using a RSF model in R with the package: randomForestSRC as following (with the data I have): model_RSF <- rfsrc(Surv(time,status) ~ ., data = data) And when I run this: pred <- predict(...
1
vote
0answers
38 views

<lifelines> Solving Cox Proportional Hazard after creating interaction variable with time

I am using lifelines package to do Cox Regression. After trying to fit the model, I checked the CPH assumptions for any possible violations and it returned some problematic variables, along with the ...

1
2 3 4 5
16