Longitudinal targeted maximum likelihood estimation (LTMLE) has hardly ever been used to estimate dynamic treatment effects in the context of time-dependent confounding affected by prior treatment when faced with long follow-up times, multiple time-varying confounders, and complex associational relationships simultaneously. Reasons for this include the potential computational burden, technical challenges, restricted modeling options for long follow-up times, and limited practical guidance in the literature. However, LTMLE has desirable asymptotic properties, i.e. it is doubly robust, and can yield valid inference when used in conjunction with machine learning. We use a topical and sophisticated question from HIV treatment research to show t...
This dissertation focuses on three important issues in causal inference. The three chapters focus on...
The primary analysis of clinical trials in diabetes therapeutic area often involves a mixed-model re...
Standard marginal structural models (MSMs) are commonly applied to estimate causal effects in the pr...
Longitudinal targeted maximum likelihood estimation (LTMLE) has very rarely been used to estimate dy...
This paper describes a targeted maximum likelihood estimator (TMLE) for the parameters of longitudin...
In many randomized controlled trials the outcome of interest is a time to event, and one measures on...
This paper describes a targeted maximum likelihood estimator (TMLE) for the parameters of longitudin...
Targeted Maximum Likelihood Learning (TMLL) has been proposed as a general estimation methodology th...
Sequential Randomized Controlled Trials (SRCTs) are rapidly becoming essential tools in the search f...
Sequential Randomized Controlled Trials (SRCTs) are rapidly becoming essential tools in the search f...
Longitudinal data sources offer new opportunities for the evaluation of sequential interventions. To...
Longitudinal data sources offer new opportunities for the evaluation of sequential interventions. To...
A number of sophisticated estimators of longitudinal effects have been proposed for estimating the i...
This dissertation discusses the application and comparative performance of double robust estimators ...
Semiparametric efficient methods in causal inference have been developed to robustly and efficiently...
This dissertation focuses on three important issues in causal inference. The three chapters focus on...
The primary analysis of clinical trials in diabetes therapeutic area often involves a mixed-model re...
Standard marginal structural models (MSMs) are commonly applied to estimate causal effects in the pr...
Longitudinal targeted maximum likelihood estimation (LTMLE) has very rarely been used to estimate dy...
This paper describes a targeted maximum likelihood estimator (TMLE) for the parameters of longitudin...
In many randomized controlled trials the outcome of interest is a time to event, and one measures on...
This paper describes a targeted maximum likelihood estimator (TMLE) for the parameters of longitudin...
Targeted Maximum Likelihood Learning (TMLL) has been proposed as a general estimation methodology th...
Sequential Randomized Controlled Trials (SRCTs) are rapidly becoming essential tools in the search f...
Sequential Randomized Controlled Trials (SRCTs) are rapidly becoming essential tools in the search f...
Longitudinal data sources offer new opportunities for the evaluation of sequential interventions. To...
Longitudinal data sources offer new opportunities for the evaluation of sequential interventions. To...
A number of sophisticated estimators of longitudinal effects have been proposed for estimating the i...
This dissertation discusses the application and comparative performance of double robust estimators ...
Semiparametric efficient methods in causal inference have been developed to robustly and efficiently...
This dissertation focuses on three important issues in causal inference. The three chapters focus on...
The primary analysis of clinical trials in diabetes therapeutic area often involves a mixed-model re...
Standard marginal structural models (MSMs) are commonly applied to estimate causal effects in the pr...