Marginal structural models are causal models designed to adjust for time-dependent confounders in observational studies with dynamically adjusted treatments. They are robust tools to assess causality in complex longitudinal data. In this paper, a marginal structural model is proposed with an innovative dose-delay joint-exposure model for Inverse-Probability-of-Treatment Weighted estimation of the causal effect of alterations to the therapy intensity. The model is motivated by a precise clinical question concerning the possibility of reducing dosages in a regimen. It is applied to data from a randomised trial of chemotherapy in osteosarcoma, an aggressive primary bone-tumour. Chemotherapy data are complex because their longitudinal nature en...
Causal Inference based on Marginal Structural Models (MSMs) is particularly attractive to subject-ma...
An important class of models in causal inference are the so-called marginal structural models which ...
Marginal structural models (MSM) are an important class of models in causal inference. Given a longi...
Marginal structural models are causal models designed to adjust for time-dependent confounders in ob...
One of the main objectives in clinical epidemiology is to detect a relation between a factor, e.g. t...
Longitudinal studies in which exposures, confounders, and outcomes are measured repeatedly over time...
Introduction Randomised Controlled Trials (RCTs) are universally considered as the most reliable way...
Much of epidemiology and clinical medicine is focused on the estimation of treatments or interventio...
Analysis of new user cohort studies of adverse drug effects can be based on either intention-to-trea...
International audienceFor estimating the causal effect of treatment exposure on the occurrence of ad...
Much of epidemiology and clinical medicine is focused on estimating the effects of treatments or int...
Marginal structural models (MSM) provide a powerful tool for estimating the causal effect of a treat...
Marginal structural models (MSM) provide a powerful tool for estimating the causal effect of a treat...
Much of clinical medicine involves choosing a future treatment plan that is expected to optimize a p...
We consider estimation of a causal effect of a possibly continuous treatment when treatment assignme...
Causal Inference based on Marginal Structural Models (MSMs) is particularly attractive to subject-ma...
An important class of models in causal inference are the so-called marginal structural models which ...
Marginal structural models (MSM) are an important class of models in causal inference. Given a longi...
Marginal structural models are causal models designed to adjust for time-dependent confounders in ob...
One of the main objectives in clinical epidemiology is to detect a relation between a factor, e.g. t...
Longitudinal studies in which exposures, confounders, and outcomes are measured repeatedly over time...
Introduction Randomised Controlled Trials (RCTs) are universally considered as the most reliable way...
Much of epidemiology and clinical medicine is focused on the estimation of treatments or interventio...
Analysis of new user cohort studies of adverse drug effects can be based on either intention-to-trea...
International audienceFor estimating the causal effect of treatment exposure on the occurrence of ad...
Much of epidemiology and clinical medicine is focused on estimating the effects of treatments or int...
Marginal structural models (MSM) provide a powerful tool for estimating the causal effect of a treat...
Marginal structural models (MSM) provide a powerful tool for estimating the causal effect of a treat...
Much of clinical medicine involves choosing a future treatment plan that is expected to optimize a p...
We consider estimation of a causal effect of a possibly continuous treatment when treatment assignme...
Causal Inference based on Marginal Structural Models (MSMs) is particularly attractive to subject-ma...
An important class of models in causal inference are the so-called marginal structural models which ...
Marginal structural models (MSM) are an important class of models in causal inference. Given a longi...