View source: R/semi.markov.3states.rsadd.R
semi.markov.3states.rsadd | R Documentation |
The 3-state SMRS model includes an initial state (X=1), a transient state (X=2), and the death (X=3). The possible transitions are: 1->2, 1->3 and 2->3. Assuming additive risks, the observed mortality hazard is the sum of two components: the expected population mortality (X=P) and the excess mortality related to the disease under study (X=E). The expected population mortality hazard (X=P) can be obtained from the death rates provided by life tables of statistical national institutes. These tables indicate the proportion of people dead in a calendar year stratified by birthdate and gender.
semi.markov.3states.rsadd(times1, times2, sequences, weights=NULL, dist,
cuts.12=NULL, cuts.13=NULL, cuts.23=NULL,
ini.dist.12=NULL, ini.dist.13=NULL, ini.dist.23=NULL,
cov.12=NULL, init.cov.12=NULL, names.12=NULL,
cov.13=NULL, init.cov.13=NULL, names.13=NULL,
cov.23=NULL, init.cov.23=NULL, names.23=NULL,
p.age, p.sex, p.year, p.rate.table,
conf.int=TRUE, silent=TRUE, precision=10^(-6))
times1 |
A numeric vector with the observed times in days from baseline to the first transition (X=2 or X=3) or to the right-censoring (in X=1 at the last follow-up). |
times2 |
A numeric vector with the observed times in days from baseline to the second transition or to the right censoring (in X=2 at the last follow-up). |
sequences |
A numeric vector with the sequences of observed states. Four possible values are allowed: 1 (individual right-censored in X=1), 12 (individual right-censored in X=2), 13 (individual who directly transited from X=1 to X=3), 123 (individual who transited from X=1 to X=3 through X=2). |
weights |
A numeric vector with the weights for correcting the contribution of each individual. Default is |
dist |
A character vector with three arguments describing respectively the distributions of duration time for transitions 1->2, 1->3 and 2->3. Arguments allowed are |
cuts.12 |
A numeric vector indicating the timepoints in days for the piecewise exponential distribution related to the time from X=1 to X=2. Only internal timepoints are allowed: timepoints cannot be |
cuts.13 |
A numeric vector indicating the timepoints in days for the piecewise exponential distribution related to the time from X=1 to X=3. Only internal timepoints are allowed: timepoints cannot be |
cuts.23 |
A numeric vector indicating the timepoints in days for the piecewise exponential distribution related to the time from X=2 to X=3. Only internal timepoints are allowed: timepoints cannot be |
ini.dist.12 |
A numeric vector of initial values for the distribution from X=1 to X=2. The logarithm of the parameters have to be declared. Default value is 1. |
ini.dist.13 |
A numeric vector of initial values for the distribution from X=1 to X=3. The logarithm of the parameters have to be declared. Default value is 1. |
ini.dist.23 |
A numeric vector of initial values for the distribution from X=2 to X=3. The logarithm of the parameters have to be declared. Default value is 1. |
cov.12 |
A matrix (or data frame) with the explicative time-fixed variable(s) related to the time from X=1 to X=2. |
init.cov.12 |
A numeric vector of initial values for regression coefficients (logarithm of the cause-specific hazards ratios) associated to |
names.12 |
An optional character vector with name of explicative variables associated to |
cov.13 |
A numeric matrix (or data frame) with the explicative time-fixed variable(s) related to the time from X=1 to X=3. |
init.cov.13 |
A numeric vector of initial values for regression coefficients (logarithm of the cause-specific hazards ratios) associated to |
names.13 |
An optional character vector with name of explicative variables associated to |
cov.23 |
A numeric matrix (or data frame) with the explicative time-fixed variable(s) related to the time from X=2 to X=3. |
init.cov.23 |
A numeric vector of initial values for regression coefficients (logarithm of the cause-specific hazards ratios) associated to |
names.23 |
An optional character vector with name of explicative variables associated to |
p.age |
A numeric vector with the patient ages in days at baseline (X=1). |
p.sex |
A character vector with the genders: |
p.year |
A numeric vector with the entry dates in the study respecting the date format, i.e. in number of days since 01.01.1960. |
p.rate.table |
A list contaning the information related to the expected rates of mortality. This list is organized as a |
conf.int |
A logical value specifying if the pointwise confidence intervals for parameters and the variance-covariance matrix should be returned. Default is |
silent |
A logical value specifying if the log-likelihood value should be returned at each iteration. Default is |
precision |
A numeric positive value indicating the required precision for the log-likelihood maximization between each iteration. Default is |
Hazard functions available are:
Exponential distribution | \lambda(t)=1/\sigma |
Weibull distribution | \lambda(t)=\nu(\frac{1}{\sigma})^{\nu}t^{\nu-1} |
Generalized Weibull distribution | \lambda(t)=\frac{1}{\theta}\left(1+\left(\frac{t}{\sigma}\right)^{\nu}\right)^{\frac{1}{\theta}-1} \nu\left(\frac{1}{\sigma}\right)^{\nu} t^{\nu-1}
|
with \sigma
, \nu
,and \theta>0
. The parameter \sigma
varies for each interval when the distribution is piecewise Exponential. We advise to initialize the logarithm of these parameters in ini.dist.12
, ini.dist.13
and ini.dist.23
.
To estimate the marginal effect of a binary exposure, the weights
may be equal to 1/p
, where p
is the estimated probability that the individual belongs to his or her own observed group of exposure. The probabilities p
are often estimated by a logistic regression in which the dependent binary variable is the exposure. The possible confounding factors are the explanatory variables of this logistic model.
object |
The character string indicating the estimated model: "semi.markov.3states.rsadd (3-state relative survival semi-Markov model with additive risks)". |
dist |
A character vector with two arguments describing respectively the distributions of duration time for transitions 1->2, 1->3 and 2->3. |
cuts.12 |
A numeric vector indicating the timepoints in days for the piecewise exponential distribution related to the time from X=1 to X=2. |
cuts.13 |
A numeric vector indicating the timepoints in days for the piecewise exponential distribution related to the time from X=1 to X=3. |
cuts.23 |
A numeric vector indicating the timepoints in days for the piecewise exponential distribution related to the time from X=2 to X=3. |
covariates |
A numeric vector indicating the numbers of covariates respectively related to the transition 1->2, 1->3 and 2->3. |
table |
A data frame containing the estimated parameters of the model ( |
cov.matrix |
A data frame corresponding to variance-covariance matrix of the parameters. |
LogLik |
A numeric value corresponding to the log-likelihood of the estimated model. |
AIC |
A numeric value corresponding to the Akaike Information Criterion of the estimated model. |
Yohann Foucher <Yohann.Foucher@univ-poitiers.fr>
Florence Gillaizeau <Florence.Gillaizeau@univ-nantes.fr>
Gillaizeau et al. Inverse Probability Weighting to control confounding in an illness-death model for interval-censored data. Stat Med. 37(8):1245-1258, 2018. <doi: 10.1002/sim.7550>.
Gillaizeau et al. A multistate additive relative survival semi-Markov model. Statistical methods in medical research. 26(4):1700-1711, 2017. <doi: 10.1177/ 0962280215586456>.
# import the observed data
# (X=1 corresponds to initial state with a functioning graft, X=2 to acute rejection episode,
# X=3 to return to dialysis, X=4 to death with a functioning graft)
data(dataDIVAT1)
# A subgroup analysis to reduce the time needed for this example
dataDIVAT1$id<-c(1:nrow(dataDIVAT1))
set.seed(2)
d3<-dataDIVAT1[dataDIVAT1$id %in% sample(dataDIVAT1$id, 150, replace = FALSE),]
# To use a 3-state model, individuals with trajectory 13 and 123 are censored at the time
# of transition into state X=3
d3$trajectory[d3$trajectory==13]<-1
d3$trajectory[d3$trajectory==123]<-12
d3$trajectory[d3$trajectory==14]<-13
d3$trajectory[d3$trajectory==124]<-123
# import the expected mortality rates
data(fr.ratetable)
# 3-state parametric additive relative survival semi-Markov model including one
# explicative variable (z is the delayed graft function) on all transitions. We only reduced
# the precision and the number of iteration to save time in this example,
# prefer the default values.
# Note: a semi-Markovian process with sojourn times exponentially distributed
# is a time-homogeneous Markov process
semi.markov.3states.rsadd(times1=d3$time1, times2=d3$time2, sequences=d3$trajectory,
dist=c("E","E","E"),
ini.dist.12=c(10.70), ini.dist.13=c(11.10), ini.dist.23=c(0.04),
cov.12=d3$z, init.cov.12=c(0.04), names.12=c("beta12_z"),
cov.13=d3$z, init.cov.13=c(1.04), names.13=c("beta1E_z"),
cov.23=d3$z, init.cov.23=c(0.29), names.23=c("beta2E_z"),
p.age=d3$ageR*365.24, p.sex=d3$sexR,
p.year=as.date(paste("01","01",d3$year.tx),order = "mdy"),
p.rate.table=fr.ratetable,
conf.int=TRUE, silent=FALSE, precision=0.005)
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