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Multivariate Event Times (mets)

Implementation of various statistical models for multivariate event history data doi:10.1007/s10985-013-9244-x. Including multivariate cumulative incidence models doi:10.1002/sim.6016, and bivariate random effects probit models (Liability models) doi:10.1016/j.csda.2015.01.014. Modern methods for survival analysis, including regression modelling (Cox, Fine-Gray, Ghosh-Lin, Binomial regression) with fast computation of influence functions.

Installation

install.packages("mets")

The development version may be installed directly from github (requires Rtools on windows and development tools (+Xcode) for Mac OS X):

remotes::install_github("kkholst/mets", dependencies="Suggests")

or to get development version

remotes::install_github("kkholst/mets",ref="develop")

Citation

To cite the mets package please use one of the following references

Thomas H. Scheike and Klaus K. Holst and Jacob B. Hjelmborg (2013). Estimating heritability for cause specific mortality based on twin studies. Lifetime Data Analysis. http://dx.doi.org/10.1007/s10985-013-9244-x

Klaus K. Holst and Thomas H. Scheike Jacob B. Hjelmborg (2015). The Liability Threshold Model for Censored Twin Data. Computational Statistics and Data Analysis. http://dx.doi.org/10.1016/j.csda.2015.01.014

BibTeX:

@Article{,
  title={Estimating heritability for cause specific mortality based on twin studies},
  author={Scheike, Thomas H. and Holst, Klaus K. and Hjelmborg, Jacob B.},
  year={2013},
  issn={1380-7870},
  journal={Lifetime Data Analysis},
  doi={10.1007/s10985-013-9244-x},
  url={http://dx.doi.org/10.1007/s10985-013-9244-x},
  publisher={Springer US},
  keywords={Cause specific hazards; Competing risks; Delayed entry;
	    Left truncation; Heritability; Survival analysis},
  pages={1-24},
  language={English}
}

@Article{,
  title={The Liability Threshold Model for Censored Twin Data},
  author={Holst, Klaus K. and Scheike, Thomas H. and Hjelmborg, Jacob B.},
  year={2015},
  doi={10.1016/j.csda.2015.01.014},
  url={http://dx.doi.org/10.1016/j.csda.2015.01.014},
  journal={Computational Statistics and Data Analysis}
}

Examples

library("mets")

data(prt) ## Prostate data example (sim)

## Bivariate competing risk, concordance estimates
p33 <- bicomprisk(Event(time,status)~strata(zyg)+id(id),
                  data=prt, cause=c(2,2), return.data=1, prodlim=TRUE)
#> Strata 'DZ'
#> Strata 'MZ'

p33dz <- p33$model$"DZ"$comp.risk
p33mz <- p33$model$"MZ"$comp.risk

## Probability weights based on Aalen's additive model (same censoring within pair)
prtw <- ipw(Surv(time,status==0)~country+zyg, data=prt,
            obs.only=TRUE, same.cens=TRUE, 
            cluster="id", weight.name="w")

## Marginal model (wrongly ignoring censorings)
bpmz <- biprobit(cancer~1 + cluster(id), 
                 data=subset(prt,zyg=="MZ"), eqmarg=TRUE)

## Extended liability model
bpmzIPW <- biprobit(cancer~1 + cluster(id),
                    data=subset(prtw,zyg=="MZ"),
                    weights="w")
smz <- summary(bpmzIPW)

## Concordance
plot(p33mz,ylim=c(0,0.1),axes=FALSE, automar=FALSE,atrisk=FALSE,background=TRUE,background.fg="white")
axis(2); axis(1)

abline(h=smz$prob["Concordance",],lwd=c(2,1,1),col="darkblue")
## Wrong estimates:
abline(h=summary(bpmz)$prob["Concordance",],lwd=c(2,1,1),col="lightgray", lty=2)

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Version

Install

install.packages('mets')

Monthly Downloads

8,941

Version

1.3.4

License

GPL (>= 2)

Maintainer

Last Published

February 16th, 2024

Functions in mets (1.3.4)

base1cumhaz

rate of CRBSI for HPN patients of Copenhagen
basehazplot.phreg

Plotting the baslines of stratified Cox
aalenMets

Fast additive hazards model with robust standard errors
bicomprisk

Estimation of concordance in bivariate competing risks data
aalenfrailty

Aalen frailty model
base44cumhaz

rate of Occlusion/Thrombosis complication for catheter of HPN patients of Copenhagen
back2timereg

Convert to timereg object
base4cumhaz

rate of Mechanical (hole/defect) complication for catheter of HPN patients of Copenhagen
TRACE

The TRACE study group of myocardial infarction
binomial.twostage

Fits Clayton-Oakes or bivariate Plackett (OR) models for binary data using marginals that are on logistic form. If clusters contain more than two times, the algoritm uses a compososite likelihood based on all pairwise bivariate models.
casewise

Estimates the casewise concordance based on Concordance and marginal estimate using prodlim but no testing
blocksample

Block sampling
binreg

Binomial Regression for censored competing risks data
biprobit

Bivariate Probit model
binregG

G-estimator for binomial regression model (Standardized estimates)
binregATE

Average Treatment effect for censored competing risks data using Binomial Regression
bptwin

Liability model for twin data
binregTSR

2 Stage Randomization for Survival Data or competing Risks Data
binregCasewise

Estimates the casewise concordance based on Concordance and marginal estimate using binreg
bmt

The Bone Marrow Transplant Data
cifreg

CIF regression
count.history

Counts the number of previous events of two types for recurrent events processes
covarianceRecurrent

Estimation of covariance for bivariate recurrent events with terminal event
dcut

Cutting, sorting, rm (removing), rename for data frames
dcor

summary, tables, and correlations for data frames
doubleFGR

Double CIF Fine-Gray model with two causes
cluster.index

Finds subjects related to same cluster
concordanceCor

Concordance Computes concordance and casewise concordance
dprint

list, head, print, tail
dermalridges

Dermal ridges data (families)
dermalridgesMZ

Dermal ridges data (monozygotic twins)
cor.cif

Cross-odds-ratio, OR or RR risk regression for competing risks
daggregate

aggregating for for data frames
casewise.test

Estimates the casewise concordance based on Concordance and marginal estimate using timereg and performs test for independence
cif

Cumulative incidence with robust standard errors
dreg

Regression for data frames with dutility call
drcumhaz

Rate for leaving HPN program for patients of Copenhagen
dtable

tables for data frames
dspline

Simple linear spline
glm_IPTW

IPTW GLM, Inverse Probaibilty of Treatment Weighted GLM
dtransform

Transform that allows condition
ghaplos

ghaplos haplo-types for subjects of haploX data
dby

Calculate summary statistics grouped by
fast.pattern

Fast pattern
easy.binomial.twostage

Fits two-stage binomial for describing depdendence in binomial data using marginals that are on logistic form using the binomial.twostage funcion, but call is different and easier and the data manipulation is build into the function. Useful in particular for family design data.
fast.reshape

Fast reshape
hapfreqs

hapfreqs data set
haplo.surv.discrete

Discrete time to event haplo type analysis
eventpois

Extract survival estimates from lifetable analysis
familycluster.index

Finds all pairs within a cluster (family)
lifetable.matrix

Life table
lifecourse

Life-course plot
dlag

Lag operator
diabetes

The Diabetic Retinopathy Data
divide.conquer.timereg

Split a data set and run function from timereg and aggregate
divide.conquer

Split a data set and run function
mets-package

Analysis of Multivariate Events
medweight

Computes mediation weights
print.casewise

prints Concordance test
mena

Menarche data set
melanoma

The Melanoma Survival Data
phreg_rct

Lu-Tsiatis More Efficient Log-Rank for Randomized studies with baseline covariates
gofM.phreg

GOF for Cox covariates in PH regression
prob.exceed.recurrent

Estimation of probability of more that k events for recurrent events process
km

Kaplan-Meier with robust standard errors
gofZ.phreg

GOF for Cox covariates in PH regression
familyclusterWithProbands.index

Finds all pairs within a cluster (famly) with the proband (case/control)
fast.approx

Fast approximation
ipw2

Inverse Probability of Censoring Weights
resmeanIPCW

Restricted IPCW mean for censored survival data
npc

For internal use
haploX

haploX covariates and response for haplo survival discrete survival
logitSurv

Proportional odds survival model
rpch

Piecewise constant hazard distribution
plack.cif

plack Computes concordance for or.cif based model, that is Plackett random effects model
simMultistate

Simulation of illness-death model
recreg

Recurrent events regression with terminal event
tetrachoric

Estimate parameters from odds-ratio
summaryGLM

Reporting OR (exp(coef)) from glm with binomial link and glm predictions
phreg_IPTW

IPTW Cox, Inverse Probaibilty of Treatment Weighted Cox regression
rcrisk

Simulation of Piecewise constant hazard models with two causes (Cox).
mediatorSurv

Mediation analysis in survival context
phreg

Fast Cox PH regression
simRecurrentII

Simulation of recurrent events data based on cumulative hazards II
drelevel

relev levels for data frames
simClaytonOakes

Simulate from the Clayton-Oakes frailty model
phregR

Fast Cox PH regression and calculations done in R to make play and adjustments easy
recurrentMarginal

Fast recurrent marginal mean when death is possible
rchazC

Piecewise constant hazard distribution
migr

Migraine data
np

np data set
mets.options

Set global options for mets
survival.twostage

Twostage survival model for multivariate survival data
simClaytonOakesWei

Simulate from the Clayton-Oakes frailty model
dsort

Sort data frame
sim.cif

Simulation of output from Cumulative incidence regression model
reexports

Objects exported from other packages
rchaz

Simulation of Piecewise constant hazard model (Cox).
twin.clustertrunc

Estimation of twostage model with cluster truncation in bivariate situation
twinbmi

BMI data set
sim.cause.cox

Simulation of cause specific from Cox models.
ttpd

ttpd discrete survival data on interval form
gofG.phreg

Stratified baseline graphical GOF test for Cox covariates in PH regression
interval.logitsurv.discrete

Discrete time to event interval censored data
gof.phreg

GOF for Cox PH regression
ipw

Inverse Probability of Censoring Weights
resmean.phreg

Restricted mean for stratified Kaplan-Meier or Cox model with martingale standard errors
predict.phreg

Predictions from proportional hazards model
mlogit

Multinomial regression based on phreg regression
simAalenFrailty

Simulate from the Aalen Frailty model
pmvn

Multivariate normal distribution function
resmeanATE

Average Treatment effect for Restricted Mean for censored competing risks data using IPCW
simRecurrentTS

Simulation of recurrent events data based on cumulative hazards: Two-stage model
multcif

Multivariate Cumulative Incidence Function example data set
prt

Prostate data set
sim.cox

Simulation of output from Cox model.
random.cif

Random effects model for competing risks data
survivalG

G-estimator for Cox and Fine-Gray model
test.conc

Concordance test Compares two concordance estimates
twinlm

Classic twin model for quantitative traits
summary.cor

Summary for dependence models for competing risks
twostageMLE

Twostage survival model fitted by pseudo MLE
twinstut

Stutter data set
twinsim

Simulate twin data
BinAugmentCifstrata

Augmentation for Binomial regression based on stratified NPMLE Cif (Aalen-Johansen)
LinSpline

Simple linear spline
ClaytonOakes

Clayton-Oakes model with piece-wise constant hazards
Bootphreg

Wild bootstrap for Cox PH regression
Effbinreg

Efficient IPCW for binary data
EVaddGam

Relative risk for additive gamma model
Dbvn

Derivatives of the bivariate normal cumulative distribution function
Grandom.cif

Additive Random effects model for competing risks data for polygenetic modelling
FG_AugmentCifstrata

Augmentation for Fine-Gray model based on stratified NPMLE Cif (Aalen-Johansen)
EventSplit

Event split with two time-scales, time and gaptime