1,479 research outputs found
Identifiability of Subgroup Causal Effects in Randomized Experiments with Nonignorable Missing Covariates
Although randomized experiments are widely regarded as the gold standard for
estimating causal effects, missing data of the pretreatment covariates makes it
challenging to estimate the subgroup causal effects. When the missing data
mechanism of the covariates is nonignorable, the parameters of interest are
generally not pointly identifiable, and we can only get bounds for the
parameters of interest, which may be too wide for practical use. In some real
cases, we have prior knowledge that some restrictions may be plausible. We show
the identifiability of the causal effects and joint distributions for four
interpretable missing data mechanisms, and evaluate the performance of the
statistical inference via simulation studies. One application of our methods to
a real data set from a randomized clinical trial shows that one of the
nonignorable missing data mechanisms fits better than the ignorable missing
data mechanism, and the results conform to the study's original expert
opinions. We also illustrate the potential applications of our methods to
observational studies using a data set from a job-training program.Comment: Statistics in Medicine (2014
Identifiability of Normal and Normal Mixture Models With Nonignorable Missing Data
Missing data problems arise in many applied research studies. They may
jeopardize statistical inference of the model of interest, if the missing
mechanism is nonignorable, that is, the missing mechanism depends on the
missing values themselves even conditional on the observed data. With a
nonignorable missing mechanism, the model of interest is often not identifiable
without imposing further assumptions. We find that even if the missing
mechanism has a known parametric form, the model is not identifiable without
specifying a parametric outcome distribution. Although it is fundamental for
valid statistical inference, identifiability under nonignorable missing
mechanisms is not established for many commonly-used models. In this paper, we
first demonstrate identifiability of the normal distribution under monotone
missing mechanisms. We then extend it to the normal mixture and mixture
models with non-monotone missing mechanisms. We discover that models under the
Logistic missing mechanism are less identifiable than those under the Probit
missing mechanism. We give necessary and sufficient conditions for
identifiability of models under the Logistic missing mechanism, which sometimes
can be checked in real data analysis. We illustrate our methods using a series
of simulations, and apply them to a real-life dataset
Qualitative Evaluation of Associations by the Transitivity of the Association Signs
We say that the signs of association measures among three variables {X, Y, Z}
are transitive if a positive association measure between the variable X and the
intermediate variable Y and further a positive association measure between Y
and the endpoint variable Z imply a positive association measure between X and
Z. We introduce four association measures with different stringencies, and
discuss conditions for the transitivity of the signs of these association
measures. When the variables follow exponential family distributions, the
conditions become simpler and more interpretable. Applying our results to two
data sets from an observational study and a randomized experiment, we
demonstrate that the results can help us to draw conclusions about the signs of
the association measures between X and Z based only on two separate studies
about {X, Y} and {Y, Z}.Comment: Statistica Sinica 201
Principal causal effect identification and surrogate endpoint evaluation by multiple trials
Principal stratification is a causal framework to analyze randomized
experiments with a post-treatment variable between the treatment and endpoint
variables. Because the principal strata defined by the potential outcomes of
the post-treatment variable are not observable, we generally cannot identify
the causal effects within principal strata. Motivated by a real data set of
phase III adjuvant colon clinical trials, we propose approaches to identifying
and estimating the principal causal effects via multiple trials. For the
identifiability, we remove the commonly-used exclusion restriction assumption
by stipulating that the principal causal effects are homogeneous across these
trials. To remove another commonly-used monotonicity assumption, we give a
necessary condition for the local identifiability, which requires at least
three trials. Applying our approaches to the data from adjuvant colon clinical
trials, we find that the commonly-used monotonicity assumption is untenable,
and disease-free survival with three-year follow-up is a valid surrogate
endpoint for overall survival with five-year follow-up, which satisfies both
the causal necessity and the causal sufficiency. We also propose a sensitivity
analysis approach based on Bayesian hierarchical models to investigate the
impact of the deviation from the homogeneity assumption
Resolving and Preventing Medical Disputes in China
Medical disputes have been a major issue for the Chinese government. Though Chinese government implemented regulations on handling medical accidents in 2002, annual incidents of medical disputes have dramatically increased from 6,324 cases in 2003 to 115,000 cases in 2014. Several factors led to the medical disputes from the perspectives of patient satisfaction, physician performance and the healthcare system. This paper explores the reasons underlying the complex issue and tangible solutions to address the medical disputes in the future. 医疗纠纷已成为困扰中国的一件大事。尽管中国政府于2002年推行了《医疗事故处理条例(草案)》, 医疗纠纷事件从2003年的6324起急剧上升到2014年的11,5000起。从病人满意度,医生行为和医疗体系等方面看,医疗纠纷并非单一因素造成的。此文剖析了医疗纠纷的成因,并提供了未来解决医疗纠纷的可行方法。
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