Even in a carefully designed randomized trial, outcomes for some study participants can be missing, or more precisely, ill-defined, because participants had died prior to date of outcome collection. This problem, known as truncation by death, means that the treated and untreated are no longer balanced with respect to covariates determining survival. Therefore, researchers often utilize principal stratification and focus on the Survivor Average Causal Effect (SACE). The SACE is the average causal effect among the subpopulation that will survive regardless of treatment status. In this paper, we present matching-based methods for SACE identification and estimation. We provide an identification result for the SACE that motivates the use of matc...
Background: Attrition due to death and non-attendance are common sources of bias in studies of age-r...
Diverse analysis approaches have been proposed to distinguish data missing due to death from nonres...
We discuss identifiability and estimation of causal effects of a treatment in subgroups defined by a...
In longitudinal studies, outcomes ascertained at follow-up are typically undefined for individuals w...
In medical studies, there are many situations where the final outcomes are truncated by death, in wh...
In many medical studies, the outcome measure (such as quality of life, QOL) for some study participa...
In longitudinal studies, outcomes ascertained at follow-up are typically unde\u85ned for individuals...
We consider studies of cohorts of individuals after a critical event, such as an injury, with the fo...
Diverse analysis approaches have been proposed to distinguish data missing due to death from nonresp...
In examining the results of an experiment where quality of life (QOL) is to be measured, a complicat...
This thesis considers three problems in causal inference. First, for the censoring by death problem,...
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 thesis considers three problems in causal inference. First, for the censoring by death problem,...
BACKGROUND: Attrition due to death and non-attendance are common sources of bias in studies of age-r...
Background: Attrition due to death and non-attendance are common sources of bias in studies of age-r...
Diverse analysis approaches have been proposed to distinguish data missing due to death from nonres...
We discuss identifiability and estimation of causal effects of a treatment in subgroups defined by a...
In longitudinal studies, outcomes ascertained at follow-up are typically undefined for individuals w...
In medical studies, there are many situations where the final outcomes are truncated by death, in wh...
In many medical studies, the outcome measure (such as quality of life, QOL) for some study participa...
In longitudinal studies, outcomes ascertained at follow-up are typically unde\u85ned for individuals...
We consider studies of cohorts of individuals after a critical event, such as an injury, with the fo...
Diverse analysis approaches have been proposed to distinguish data missing due to death from nonresp...
In examining the results of an experiment where quality of life (QOL) is to be measured, a complicat...
This thesis considers three problems in causal inference. First, for the censoring by death problem,...
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 thesis considers three problems in causal inference. First, for the censoring by death problem,...
BACKGROUND: Attrition due to death and non-attendance are common sources of bias in studies of age-r...
Background: Attrition due to death and non-attendance are common sources of bias in studies of age-r...
Diverse analysis approaches have been proposed to distinguish data missing due to death from nonres...
We discuss identifiability and estimation of causal effects of a treatment in subgroups defined by a...