In assessing the efficacy of a time-varying treatment Marginal Structural Models (MSMs) and Structural Nested Mean Models (SNMMs) are useful in dealing with confounding by variables affected by earlier treatments. MSMs model the joint effect of treatments on the marginal mean of the potential outcome, whereas SNMMs model the joint effect of treatments on the mean of the potential outcome conditional on the treatment and covariate history. These models often consider independent subjects with noninformative time of observation. The first two chapters extend the two classes of models to clustered observations with time-varying treatments in the presence of time-varying confounding. We formulate models with both cluster- and unit-level treatme...
In the presence of time-dependent confounding, there are several methods available to estimate treat...
This article considers the problem of assessing causal effect moderation in longitudinal settings in...
Marginal structural Cox models (MSCMs) have gained popularity in analyzing longitudinal data in the ...
In assessing the efficacy of a time-varying treatment Marginal Structural Models (MSMs) and Structur...
In assessing the efficacy of a time-varying treatment Marginal Structural Models (MSMs) and Structur...
In assessing the efficacy of a time-varying treatment Marginal Structural Models (MSMs) and Structur...
Causal Inference based on Marginal Structural Models (MSMs) is particularly attractive to subject-ma...
Conventional longitudinal data analysis methods typically assume that outcomes are independent of th...
Marginal Structural Models (MSM) have been introduced by Robins (1998a) as a powerful tool for causa...
Longitudinal studies, randomized or observational, can provide insight into the impact of treatment ...
Much of epidemiology and clinical medicine is focused on the estimation of treatments or interventio...
Longitudinal studies in which exposures, confounders, and outcomes are measured repeatedly over time...
Conventional longitudinal data analysis methods typically assume that outcomes are independent of th...
Longitudinal studies in which exposures, confounders, and outcomes are measured repeatedly over time...
In the presence of time-dependent confounding, there are several methods available to estimate treat...
In the presence of time-dependent confounding, there are several methods available to estimate treat...
This article considers the problem of assessing causal effect moderation in longitudinal settings in...
Marginal structural Cox models (MSCMs) have gained popularity in analyzing longitudinal data in the ...
In assessing the efficacy of a time-varying treatment Marginal Structural Models (MSMs) and Structur...
In assessing the efficacy of a time-varying treatment Marginal Structural Models (MSMs) and Structur...
In assessing the efficacy of a time-varying treatment Marginal Structural Models (MSMs) and Structur...
Causal Inference based on Marginal Structural Models (MSMs) is particularly attractive to subject-ma...
Conventional longitudinal data analysis methods typically assume that outcomes are independent of th...
Marginal Structural Models (MSM) have been introduced by Robins (1998a) as a powerful tool for causa...
Longitudinal studies, randomized or observational, can provide insight into the impact of treatment ...
Much of epidemiology and clinical medicine is focused on the estimation of treatments or interventio...
Longitudinal studies in which exposures, confounders, and outcomes are measured repeatedly over time...
Conventional longitudinal data analysis methods typically assume that outcomes are independent of th...
Longitudinal studies in which exposures, confounders, and outcomes are measured repeatedly over time...
In the presence of time-dependent confounding, there are several methods available to estimate treat...
In the presence of time-dependent confounding, there are several methods available to estimate treat...
This article considers the problem of assessing causal effect moderation in longitudinal settings in...
Marginal structural Cox models (MSCMs) have gained popularity in analyzing longitudinal data in the ...