Causal directed acyclic graphs (cDAGs) have become popular tools for researchers to better examine biases related to causal questions. DAGs comprise a series of arrows connecting nodes that represent variables and in doing so can demonstrate the causal relation between different variables. cDAGs can provide researchers with a blueprint of the exposure and outcome relation and the other variables that play a role in that causal question. cDAGs can be helpful in the design and interpretation of observational studies in pulmonary, critical care, sleep, and cardiovascular medicine. They can also help clinicians and researchers to better identify the structure of different biases that can affect the validity of observational studies. Most of the...
Large repositories of medical data, such as Electronic Medical Record (EMR) data, are recognized as ...
Directed acyclic graphs (DAGs) are nonparametric graphical tools used to depict causal relations in ...
Compartmental model diagrams have been used for nearly a century to depict causal relationships in i...
doi:10.1111/j.1365-2753.2008.01031.x Background Epidemiologists and clinical researchers usually cla...
Many epidemiological studies seek to assess the effect of one or several exposures on one or more ou...
Directed acyclic graphs (DAGs) are an intuitive yet rigorous tool to communicate about causal questi...
Graphical models are useful tools in causal inference, and causal directed acyclic graphs (DAGs) are...
In respiratory health research, interest often lies in estimating the effect of an exposure on a hea...
In respiratory health research, interest often lies in estimating the effect of an exposure on a hea...
Observational studies often seek to estimate the causal relevance of an “exposure” to an “outcome” o...
The goal of most epidemiological studies is to determine an unbiased estimate of the effect of being...
Abstract Background The objective of most biomedical research is to determine an unbiased estimate o...
Epidemiologists typically seek to answer causal questions using statistical data:we observe a statis...
Since confounding obscures the real effect of the exposure, it is important to adequately address co...
The issue of confounding, and the bias it can induce, is a key concern in epidemiology, and yet ther...
Large repositories of medical data, such as Electronic Medical Record (EMR) data, are recognized as ...
Directed acyclic graphs (DAGs) are nonparametric graphical tools used to depict causal relations in ...
Compartmental model diagrams have been used for nearly a century to depict causal relationships in i...
doi:10.1111/j.1365-2753.2008.01031.x Background Epidemiologists and clinical researchers usually cla...
Many epidemiological studies seek to assess the effect of one or several exposures on one or more ou...
Directed acyclic graphs (DAGs) are an intuitive yet rigorous tool to communicate about causal questi...
Graphical models are useful tools in causal inference, and causal directed acyclic graphs (DAGs) are...
In respiratory health research, interest often lies in estimating the effect of an exposure on a hea...
In respiratory health research, interest often lies in estimating the effect of an exposure on a hea...
Observational studies often seek to estimate the causal relevance of an “exposure” to an “outcome” o...
The goal of most epidemiological studies is to determine an unbiased estimate of the effect of being...
Abstract Background The objective of most biomedical research is to determine an unbiased estimate o...
Epidemiologists typically seek to answer causal questions using statistical data:we observe a statis...
Since confounding obscures the real effect of the exposure, it is important to adequately address co...
The issue of confounding, and the bias it can induce, is a key concern in epidemiology, and yet ther...
Large repositories of medical data, such as Electronic Medical Record (EMR) data, are recognized as ...
Directed acyclic graphs (DAGs) are nonparametric graphical tools used to depict causal relations in ...
Compartmental model diagrams have been used for nearly a century to depict causal relationships in i...