In medical studies, there are many situations where the final outcomes are truncated by death, in which patients die before outcomes of interest are measured. In this article we consider identifiability and estimation of causal effects by principal stratification when some outcomes are truncated by death. Previous studies mostly focused on large sample bounds, Bayesian analysis, sensitivity analysis. In this article, we propose a new method for identifying the causal parameter of interest under a nonparametric and semiparametric model. We show that the causal parameter of interest is identifiable under some regularity assumptions and the assumption that there exists a pretreatment covariate whose conditional distributions among two principa...
In many medical studies, the outcome measure (such as quality of life, QOL) for some study participa...
The analysis of cause of death is increasingly becoming a topic in oncology. It is usually distingui...
International audienceRecently, there has been a lot of development in relative survival field. In t...
Summary. In longitudinal clinical trials, when outcome variables at later time points are only defin...
We discuss identifiability and estimation of causal effects of a treatment in subgroups defined by a...
We consider studies of cohorts of individuals after a critical event, such as an injury, with the fo...
Even in a carefully designed randomized trial, outcomes for some study participants can be missing, ...
This thesis considers three problems in causal inference. First, for the censoring by death problem,...
This thesis considers three problems in causal inference. First, for the censoring by death problem,...
Principal stratification is a causal framework to analyse randomized experiments with a post-treatme...
Thesis (Ph.D.)--University of Washington, 2016-03Most complex observational and randomized studies a...
A common problem when conducting an experiment or observational study for the purpose of causal infe...
This dissertation focuses on modern causal inference under uncertainty and data restrictions, with a...
The stochastic system approach to causality is applied to situations where the risk of death is not ...
In examining the results of an experiment where quality of life (QOL) is to be measured, a complicat...
In many medical studies, the outcome measure (such as quality of life, QOL) for some study participa...
The analysis of cause of death is increasingly becoming a topic in oncology. It is usually distingui...
International audienceRecently, there has been a lot of development in relative survival field. In t...
Summary. In longitudinal clinical trials, when outcome variables at later time points are only defin...
We discuss identifiability and estimation of causal effects of a treatment in subgroups defined by a...
We consider studies of cohorts of individuals after a critical event, such as an injury, with the fo...
Even in a carefully designed randomized trial, outcomes for some study participants can be missing, ...
This thesis considers three problems in causal inference. First, for the censoring by death problem,...
This thesis considers three problems in causal inference. First, for the censoring by death problem,...
Principal stratification is a causal framework to analyse randomized experiments with a post-treatme...
Thesis (Ph.D.)--University of Washington, 2016-03Most complex observational and randomized studies a...
A common problem when conducting an experiment or observational study for the purpose of causal infe...
This dissertation focuses on modern causal inference under uncertainty and data restrictions, with a...
The stochastic system approach to causality is applied to situations where the risk of death is not ...
In examining the results of an experiment where quality of life (QOL) is to be measured, a complicat...
In many medical studies, the outcome measure (such as quality of life, QOL) for some study participa...
The analysis of cause of death is increasingly becoming a topic in oncology. It is usually distingui...
International audienceRecently, there has been a lot of development in relative survival field. In t...