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 ...

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cause-specific hazard in R

I'd like to find a cause-specific hazard function in R as define in the 2nd page of this document: http://data.princeton.edu/pop509/CompetingRisks.pdf R package 'comrsk' only provides cumulative ...
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1answer
40 views

Obtain the smoothed hazard estimates

How can I obtain a data set or table with the smoothed hazard estimates and the 95% confidence intervals with time which are displayed when I run for example ods graphics on; proc lifetest ...
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15 views

Get SurvReg Scale parameter from rpy

I am using rpy2 to invoke R from python. I am using survreg from the Survival Package. survival = importr('survival') stats = importr('stats') reg = survival.survreg stats = importr('stats') ...
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1answer
23 views

life expectancy survival package R

I would like to calculate the life-years lost due to a disease in a way that I correct for other variables in the model (corrected group prognosis method). My dataset is a cohort of individuals for ...
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167 views

Confidence intervals of the muhaz package hazard function

The muhaz package estimates the hazard function from right censored data using kernel smoothing methods. My question is, is there any way to obtain confidence intervals for the hazard function that ...
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1answer
49 views

Flexible survival models in R

Is it possible to fit flexible hazard models in R with prespecifying a hazard function? For example I have a data generating process I know it results in a U-shaped hazard function. How can I fit a ...
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1answer
45 views

How to predict survival time in Cox's Regression Model in R?

I have a modeled a problem using Cox's regression and now want to predict the estimated survival time for an individual. The model has a list of covariates on which the survival time depends. This ...
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0answers
12 views

bootstrap kaplan-meier estimates or survival analysis

Is it possible to do bootstrap in survival analysis, says Kaplan-meier estimates? If so, how should I do it? I have read some articles, but they are too complicated. There's a function called BootKM ...
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29 views

“Wrong number of args for this type of survival data” when coding a survival object in R

I'm experiencing the above error message when trying to run a survival analysis with Weibull distribution, in R. My data is a bit tricky in that it contains both left and right censored ...
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30 views

Compute probabilities after coxph

I'm trying to figure out how to calculate some probabilities after running survival analysis using coxph from the survival package. I've read a bunch of posts but I can't seem to find one that answers ...
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1answer
37 views

Calculate number of survivors in a KM plot in certain time intervals

I am doing Kaplan Meier Analyses with the survival package and need to display the concrete number of survivors for certain time periods in a Kaplan Meier plot. For better traceability let's use the ...
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1answer
37 views

Creating time variables for conditional risk set model (Cox regression)

I'm preparing a dataset to a fit a conditional risk set model by using stratified Cox regression. And I was wondering whether there is any way to create the variables I need without running ...
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1answer
35 views

R time at risk for each group

I have been preparing survival analysis and cox regression in R. However, my line manager is a Stata user and wants the output displayed in a similar way as Stata would display it, e.g. # Stata code ...
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55 views

survival mixture model of gamma distribution via EM algorithm

I generated survival data for a three component survival mixture of gamma distribution with random right censored observations in R with the code: rm(list=ls()) set.seed(0056) lifetimes1<- ...
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1answer
73 views

How to predict survival probabilities in R?

I have data called veteran stored in R. I created a survival model and now wish to predict survival probability predictions. For example, what is the probability that a patient with 80 karno value, ...
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1answer
58 views

Concordance index (c-index) for censored survival data returned NA

I am using R package 'survcomp' to calculate the c-index of predicted survival vs. known test set survival. But it returned NA as result. Data are as following: Test set known survival: OS.Time ...
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3answers
37 views

How to use string variable in survival analysis in R?

I wish to apply parametric survival analysis in R. My data is Veteran's lung cancer study data. Here is the first 20 column of the data: I guess I need to convert celltype in to categorical dummy ...
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0answers
52 views

Mice pool() function and coxph(): in mice.df (…) : large sample assumend?

I used coxph() from the survival package in multiply imputed dataset and encountered a warning when trying to pool the results. The warning message states: "In mice.df(m, lambda, dfcom, method) : ...
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1answer
21 views

Phreg coefficients

Are the parameter estimates given in SAS already exponentiated? I know that the Phreg model takes the form h(t) = e^(Bx+Bx(1)). However, I wasn't sure if SAS is giving the parameter values as e^B. ...
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1answer
75 views

Graphing hazard using SAS when a time-dependent covariate is included

I have built a Cox proportional hazards model in SAS with a time-dependent covariate using proc Phreg and the coding process method. I am interested in graphing the estimated hazard rate, but ...
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1answer
549 views

Survival Analysis for Telecom Churn using R

I am working on Telecom Churn problem and here is my dataset. http://www.sgi.com/tech/mlc/db/churn.data Names - http://www.sgi.com/tech/mlc/db/churn.names I'm new to survival analysis.Given the ...
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1answer
62 views

Survival analysis using R [closed]

On running a survival model using the survival package I encountered a strange error message which I am unable to understand. The error message was Error in Surv(time, event) : Time and status are ...
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0answers
17 views

survival analysis with two levels of censoring

I'm trying to figure out this problem from Applied Survival Analysis by Hosmer, Lemeshow, and May, 2nd edition. Chapter 7, #3 In the GBCS data, does hormone use improve survival after cancer ...
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38 views

How to change the time origin in Survival Analysis using R

I am trying to use R to do survival analysis. In my case, each has a different staring point for the time to event dimension. In STATA there is an option called origin that takes care of this, but I ...
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120 views

R- Error “survfit” formula, survival package

I'm learning basics about survival package in R with this tutorial I followed the steps and got an error: The data is in the package: aml<-aml And in page 2 of the tutorial: ...
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1answer
126 views

Is there a way to get the partial likelihood of a Cox PH Model with new data and fixed coefficients?

I'm performing a cross validation on a competing risks proportional hazards model. With help from the mstate pacakge, I've prepared my data and am fitting it with survival::coxph. I get a fitted Cox ...
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1answer
86 views

How to resolve discrepancy in 95% confidence intervals in survival function in R

I'm in the process of writing some functions to extract information from the results of a survival analysis and I ran into a discrepancy between my extraction of the lower and upper survival time as ...
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1answer
134 views

Extract survival probabilities in Survfit by groups

I am new to survival analysis and survfit in R. I want to extract survival probabilities for 4 groups (diseases) at specified time periods (0,10,20,30 years since diagnosis) in a table. Here is the ...
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1answer
62 views

Format data for survival analysis using pandas

I'm trying to figure out the quickest way to get survival analysis data into a format that will allow for time varying covariates. Basically this would be a python implementation of stsplit in Stata. ...
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66 views

R survival package survfit function doesn't use conf.int if conf.int != 0.95 and type = 'interval' or 'interval2'

I can't get survfit to calculate anything other the 95% confidence limits when type='interval' or type='interval2'. I also can't seem to find any bug reports on this issue. Am I using the conf.int ...
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0answers
62 views

How to decrease computational time of extended Cox model for (start, stop) style survival data

I have set up an extended Cox model in R which contains one time-dependent covariate X1 (X2-X7 are time-independet) coxph(Surv(start, stop, status) ~ X1 + X2 + ... + X7, data = data). To include this ...
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0answers
71 views

Competing risk analysis of interval data in R

I study competitive risks and use R. I would like to use the model in Fine and Gray (1999), A proportional hazards model for the subdistribution of a competing risk, JASA, 94:496-509. I found the ...
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0answers
37 views

AFT models in R with time - varying indpendent variables and difference in Mc - Fadden's R - squared index

I am a newbie in survival analysis and I would like to pose some simple questions, after reading numerous posts regarding how to perform survival analysis in R. So, what I would like to know is: ...
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45 views

Log-rank test with time-dependent variable

I am doing survival analysis in R and I want to perform a log-rank test to detect differences between survival curves with a time-dependent covariate. I use: fit_seasons<- survfit(Surv(time1, ...
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1answer
49 views

Split dataset by event times

I have a dataset similar to the following in R. Each subject has one row: > ( fake = data.frame(id=c(1,2,3), x=c(42,61,50), event=c(0,0,1), followup=c(6,2,12)) ) id x event followup 1 1 42 ...
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1answer
34 views

Survival analysis: extensions of coxph

I am currently trying to implement the Prentice, Williams and Peterson extension of the Cox model in R on survival data but I want a parametric model and can not get it done. Is there maybe a package ...
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2answers
51 views

In Survival Analysis with R, what is the purpose of the `surv`function in the Cox Proportional Hazards Model?

I am currently looking at a document that states to use the Cox Proportional Hazards model, your response variable for the formula portion of coxph(formula, data=, weights, subset, na.action, ...
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1answer
82 views

R survival analysis coxph call multiple column

I am trying to use coxph function under survival package. Normally it will be called as: coxph(Surv(time,event) ~ age+gender+salary, data=THEDATA). However, I have multiple columns in THEDATA. ...
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1answer
211 views

R Survival Curve Plot Legend

I have a table that looks like this: ID Survival Event Allele 2 5 1 WildType 2 0 1 WildType 3 3 1 WildType 4 38 0 Variant I want to do a kaplan meier plot, and tell me if ...
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1answer
168 views

Log transforming predictor variables in survival analysis

I am running shared gamma frailty models (i.e., Coxph survival analysis models with a random effect) and want to know if it is "acceptable" to log transform one of your continuous predictor variables. ...
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62 views

in R, plotting an individual survival curve for parametric models

Suppose I have a survreg object object<-survreg(Surv_object ~., data = data_all[cov.names], dist="loglogistic) we can predict the survival according the loglogistic regression ...
2
votes
1answer
85 views

How SAS computes Ridge values in PROC PHREG

The itprint option in the class statement of SAS proc phreg causes the display of the iteration history. This includes a Ridge value, along with the beta values and log likelihoods for each iteration. ...
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1answer
157 views

plot of individual survival curves in R

In R, I arranged my database to be a counting process to apply a extended Cox model (with time varying covariates): The end points are the times to event or time to censorship and the cut points are ...
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136 views

How to generate survival data with time dependent covariates using R

i want to generate survival time from a Cox proportional hazards model that contains time dependent covariate. The model is h(t|Xi) =h_0(t) exp(gamma*Xi + alpha*mi(t)) where Xi is generated from ...
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0answers
202 views

How to use newdata argument in survfit for a coxph recurrent event?

I'm using the survival package for fit a cox model with recurrent event. I would like to join a reproducible example but i don't konw how to join my dataframe (tell me how to do). And i apologize for ...
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0answers
172 views

R - differences between cindex function from pec package and coxph

I'm comparing the cindex function from the pec package with the resulting concordance index from coxph (survival package). 1) First the results between these two functions are different ...
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0answers
83 views

Scoring Wizard Cox regression survival model

I have estimated a Cox regression model. This model will predict the duration of a certain car ownership and is depending on income household size and age. I would like to run the model on a ...
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1answer
83 views

Legend on survival plot

Hi I am totally new to R. This is my first attempt at it. I am producing a survival plot broken down by age. I can't figure out how to specify colours for each age line and put it in a legend. Can ...
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1answer
41 views

Outlier test in discrete survival analysis

I am trying to figure out how to do a proper test of outliers in a discrete survival analysis (I use a logistic regression). I find a several suggestions for the continuos survival analysis but ...
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2answers
109 views

survplot - table with subjects of risk doesn't show up entirely

this is a follow up to a previously asked, related question: data and code are here error message when ploting subjects at risk with survplot When trying to plot the subjects at risk below the ...