simulate_prclmm_data: Simulate data that can be used to fit the PRC-LMM model

View source: R/simulate_prclmm_data.R

simulate_prclmm_dataR Documentation

Simulate data that can be used to fit the PRC-LMM model

Description

This function allows to simulate a survival outcome from longitudinal predictors following the PRC LMM model presented in Signorelli et al. (2021). Specifically, the longitudinal predictors are simulated from linear mixed models (LMMs), and the survival outcome from a Weibull model where the time to event depends linearly on the baseline age and on the random effects from the LMMs.

Usage

simulate_prclmm_data(n = 100, p = 10, p.relev = 4, t.values = c(0, 0.5,
  1, 2), landmark = max(t.values), seed = 1, lambda = 0.2, nu = 2,
  cens.range = c(landmark, 10), base.age.range = c(3, 5), tau.age = 0.2)

Arguments

n

sample size

p

number of longitudinal outcomes

p.relev

number of longitudinal outcomes that are associated with the survival outcome (min: 1, max: p)

t.values

vector specifying the time points at which longitudinal measurements are collected (NB: for simplicity, this function assumes a balanced designed; however, pencal is designed to work both with balanced and with unbalanced designs!)

landmark

the landmark time up until which all individuals survived. Default is equal to max(t.values)

seed

random seed (defaults to 1)

lambda

Weibull location parameter, positive

nu

Weibull scale parameter, positive

cens.range

range for censoring times. By default, the minimum of this range is equal to the landmark time

base.age.range

range for age at baseline (set it equal to c(0, 0) if you want all subjects to enter the study at the same age)

tau.age

the coefficient that multiplies baseline age in the linear predictor (like in formula (6) from Signorelli et al. (2021))

Value

A list containing the following elements:

  • a dataframe long.data with data on the longitudinal predictors, comprehensive of a subject id (id), baseline age (base.age), time from baseline (t.from.base) and the longitudinal biomarkers;

  • a dataframe surv.data with the survival data: a subject id (id), baseline age (baseline.age), the time to event outcome (time) and a binary vector (event) that is 1 if the event is observed, and 0 in case of right-censoring;

  • perc.cens the proportion of censored individuals in the simulated dataset;

  • theta.true a list containing the true parameter values used to simulate data from the mixed model (beta0 and beta1) and from the Weibull model (tau.age, gamma, delta)

Author(s)

Mirko Signorelli

References

Signorelli, M. (2024). pencal: an R Package for the Dynamic Prediction of Survival with Many Longitudinal Predictors. To appear in: The R Journal. Preprint: arXiv:2309.15600

Signorelli, M., Spitali, P., Al-Khalili Szigyarto, C, The MARK-MD Consortium, Tsonaka, R. (2021). Penalized regression calibration: a method for the prediction of survival outcomes using complex longitudinal and high-dimensional data. Statistics in Medicine, 40 (27), 6178-6196. DOI: 10.1002/sim.9178

Examples

# generate example data
simdata = simulate_prclmm_data(n = 20, p = 10, p.relev = 4,
               t.values = c(0, 0.5, 1, 2), landmark = 2, 
               seed = 19931101)
# view the longitudinal markers:
if(requireNamespace("ptmixed")) {
  ptmixed::make.spaghetti(x = age, y = marker1, 
                 id = id, group = id,
                 data = simdata$long.data, 
                 legend.inset = - 1)
 }
# proportion of censored subjects
simdata$censoring.prop
# visualize KM estimate of survival
library(survival)
surv.obj = Surv(time = simdata$surv.data$time, 
                event = simdata$surv.data$event)
kaplan <- survfit(surv.obj ~ 1,  
                  type="kaplan-meier")
plot(kaplan)

pencal documentation built on April 3, 2025, 10:32 p.m.