Detection of confounding and confounders is important for observational studies, and especially so for epidemiologic studies. Miettinen and Cook (1981) derived two criteria for detecting confounders. Using a model, Wickramaratne and Holford (1987) proved that the two criteria are necessary but not sufficient conditions for confounders. We take uniform nonconfounding to mean there is no confounding at a coarse-subpopulation-level obtained by pooling any number of subpopulations. We discuss the necessity and sufficiency of the two criteria for uniform nonconfounding. The concepts of homogeneity and collapsibility for causal effects are also defined, and the relation among confounding, homogeneity and collapsibility is discussed. We show that ...
As confounding obscures the ‘real’ effect of an exposure on outcome, investigators performing etiolo...
In observational studies on causal associations, comparison groups (e.g. groups of treated and untre...
BACKGROUND: It is common to use nonrepresentative samples in observational epidemiologic studies, bu...
Detection of confounding and confounders is important for observational studies, and especially so f...
This paper proposes an approach for detecting multiple confounders which combines the advantages of ...
AbstractConfounding is a major concern in epidemiology. Despite its significance, the different noti...
AbstractA statistically coherent view of confounding motivated by the over controversy over the prop...
The paper addresses a formal definition of a confounder based on the qualitative definition that is ...
In research addressing causal questions about relations between exposures and outcomes, confounding ...
Abstract The relationship between collapsibility and confounding has been subject to an extensive an...
The causal inference literature has provided a clear formal definition of confounding expressed in t...
In this paper, we discuss several concepts in causal inference in terms of causal diagrams proposed ...
In confounding, the effect of the exposure of interest is mixed with the effect of another variable....
In this thesis, we explore causal inference in observational studies with particular emphasis on the...
This paper deals both with the issues of confounding and of control, as the definition of a confound...
As confounding obscures the ‘real’ effect of an exposure on outcome, investigators performing etiolo...
In observational studies on causal associations, comparison groups (e.g. groups of treated and untre...
BACKGROUND: It is common to use nonrepresentative samples in observational epidemiologic studies, bu...
Detection of confounding and confounders is important for observational studies, and especially so f...
This paper proposes an approach for detecting multiple confounders which combines the advantages of ...
AbstractConfounding is a major concern in epidemiology. Despite its significance, the different noti...
AbstractA statistically coherent view of confounding motivated by the over controversy over the prop...
The paper addresses a formal definition of a confounder based on the qualitative definition that is ...
In research addressing causal questions about relations between exposures and outcomes, confounding ...
Abstract The relationship between collapsibility and confounding has been subject to an extensive an...
The causal inference literature has provided a clear formal definition of confounding expressed in t...
In this paper, we discuss several concepts in causal inference in terms of causal diagrams proposed ...
In confounding, the effect of the exposure of interest is mixed with the effect of another variable....
In this thesis, we explore causal inference in observational studies with particular emphasis on the...
This paper deals both with the issues of confounding and of control, as the definition of a confound...
As confounding obscures the ‘real’ effect of an exposure on outcome, investigators performing etiolo...
In observational studies on causal associations, comparison groups (e.g. groups of treated and untre...
BACKGROUND: It is common to use nonrepresentative samples in observational epidemiologic studies, bu...