Estimation of time-specific intervention effects on continuously distributed time-to-event outcomes by targeted maximum likelihood estimation

Research output: Working paperPreprintResearch

Standard

Estimation of time-specific intervention effects on continuously distributed time-to-event outcomes by targeted maximum likelihood estimation. / Rytgaard, Helene Charlotte Wiese; Eriksson, Frank; Laan, Mark van der.

2022.

Research output: Working paperPreprintResearch

Harvard

Rytgaard, HCW, Eriksson, F & Laan, MVD 2022 'Estimation of time-specific intervention effects on continuously distributed time-to-event outcomes by targeted maximum likelihood estimation'.

APA

Rytgaard, H. C. W., Eriksson, F., & Laan, M. V. D. (2022). Estimation of time-specific intervention effects on continuously distributed time-to-event outcomes by targeted maximum likelihood estimation. arXiv

Vancouver

Rytgaard HCW, Eriksson F, Laan MVD. Estimation of time-specific intervention effects on continuously distributed time-to-event outcomes by targeted maximum likelihood estimation. 2022.

Author

Rytgaard, Helene Charlotte Wiese ; Eriksson, Frank ; Laan, Mark van der. / Estimation of time-specific intervention effects on continuously distributed time-to-event outcomes by targeted maximum likelihood estimation. 2022. (arXiv).

Bibtex

@techreport{c56e0c53e7d44475bf3f7b540135f751,
title = "Estimation of time-specific intervention effects on continuously distributed time-to-event outcomes by targeted maximum likelihood estimation",
abstract = " Targeted maximum likelihood estimation is a general methodology combining flexible ensemble learning and semiparametric efficiency theory in a two-step procedure for estimation of causal parameters. Proposed targeted maximum likelihood procedures for survival and competing risks analysis have so far focused on events taken values in discrete time. We here present a targeted maximum likelihood estimation procedure for event times that take values in R+. We focuson the estimation of intervention-specific mean outcomes with stochastic interventions on a time-fixed treatment. For data-adaptive estimation of nuisance parameters, we propose a new flexible highly adaptive lasso estimation method for continuous-time intensities that can be implemented with L1-penalized Poisson regression. In a simulation study the targeted maximum likelihood estimator based on the highly adaptive lasso estimator proves to be unbiased and achieve proper coverage in agreement with the asymptotic theory and further displays efficiency improvements relative to a Kaplan-Meier approach. ",
keywords = "stat.ME",
author = "Rytgaard, {Helene Charlotte Wiese} and Frank Eriksson and Laan, {Mark van der}",
year = "2022",
language = "English",
series = "arXiv",
type = "WorkingPaper",

}

RIS

TY - UNPB

T1 - Estimation of time-specific intervention effects on continuously distributed time-to-event outcomes by targeted maximum likelihood estimation

AU - Rytgaard, Helene Charlotte Wiese

AU - Eriksson, Frank

AU - Laan, Mark van der

PY - 2022

Y1 - 2022

N2 - Targeted maximum likelihood estimation is a general methodology combining flexible ensemble learning and semiparametric efficiency theory in a two-step procedure for estimation of causal parameters. Proposed targeted maximum likelihood procedures for survival and competing risks analysis have so far focused on events taken values in discrete time. We here present a targeted maximum likelihood estimation procedure for event times that take values in R+. We focuson the estimation of intervention-specific mean outcomes with stochastic interventions on a time-fixed treatment. For data-adaptive estimation of nuisance parameters, we propose a new flexible highly adaptive lasso estimation method for continuous-time intensities that can be implemented with L1-penalized Poisson regression. In a simulation study the targeted maximum likelihood estimator based on the highly adaptive lasso estimator proves to be unbiased and achieve proper coverage in agreement with the asymptotic theory and further displays efficiency improvements relative to a Kaplan-Meier approach.

AB - Targeted maximum likelihood estimation is a general methodology combining flexible ensemble learning and semiparametric efficiency theory in a two-step procedure for estimation of causal parameters. Proposed targeted maximum likelihood procedures for survival and competing risks analysis have so far focused on events taken values in discrete time. We here present a targeted maximum likelihood estimation procedure for event times that take values in R+. We focuson the estimation of intervention-specific mean outcomes with stochastic interventions on a time-fixed treatment. For data-adaptive estimation of nuisance parameters, we propose a new flexible highly adaptive lasso estimation method for continuous-time intensities that can be implemented with L1-penalized Poisson regression. In a simulation study the targeted maximum likelihood estimator based on the highly adaptive lasso estimator proves to be unbiased and achieve proper coverage in agreement with the asymptotic theory and further displays efficiency improvements relative to a Kaplan-Meier approach.

KW - stat.ME

M3 - Preprint

T3 - arXiv

BT - Estimation of time-specific intervention effects on continuously distributed time-to-event outcomes by targeted maximum likelihood estimation

ER -

ID: 306104552