Observational studies almost always have bias because prognostic factors are unequally distributed between patients exposed or not exposed to an intervention. The standard approach to dealing with this problem is adjusted or stratified analysis. Its principle is to use measurement of risk factors to create prognostically homogeneous groups and to combine effect estimates across groups.The purpose of this Users' Guide is to introduce readers to fundamental concepts underlying adjustment as a way of dealing with prognostic imbalance and to the basic principles and relative trustworthiness of various adjustment strategies.One alternative to the standard approach is propensity analysis, in which groups are matched according to the likelihood of...
Covariate adjustment is integral to the validity of observational studies assessing causal effects. ...
Background Epidemiologists are generally interested in the effect of an exposure on an outcome. This...
Background Epidemiologists are generally interested in the effect of an exposure on an outcome. This...
The assessment of treatment effects from observational studies may be biased with patients not rando...
National audienceINTRODUCTION: In observational studies, a significant difference in the outcomes be...
The principal aim of analysis of any sample of data is to draw causal inferences about the effects o...
Inferences about intended effects of treatments are ideally investigated using randomized control tr...
The assessment of treatment effects from observational studies may be biased with patients not rando...
In the evaluation of the effect of different treatments well-conducted randomized controlled trials ...
Many studies in biostatistics are concerned with comparing two groups of patients, a treatment and a...
Many studies in biostatistics are concerned with comparing two groups of patients, a treatment and a...
Propensity-score methods are increasingly being used to reduce the impact of treatment-selection bia...
Background/Aims: Treatment effects from observational studies may be biased since the patients were ...
Randomization of treatment assignment in experiments generates treatment groups with approximately b...
Confounding can cause substantial bias in nonexperimental studies that aim to estimate causal effect...
Covariate adjustment is integral to the validity of observational studies assessing causal effects. ...
Background Epidemiologists are generally interested in the effect of an exposure on an outcome. This...
Background Epidemiologists are generally interested in the effect of an exposure on an outcome. This...
The assessment of treatment effects from observational studies may be biased with patients not rando...
National audienceINTRODUCTION: In observational studies, a significant difference in the outcomes be...
The principal aim of analysis of any sample of data is to draw causal inferences about the effects o...
Inferences about intended effects of treatments are ideally investigated using randomized control tr...
The assessment of treatment effects from observational studies may be biased with patients not rando...
In the evaluation of the effect of different treatments well-conducted randomized controlled trials ...
Many studies in biostatistics are concerned with comparing two groups of patients, a treatment and a...
Many studies in biostatistics are concerned with comparing two groups of patients, a treatment and a...
Propensity-score methods are increasingly being used to reduce the impact of treatment-selection bia...
Background/Aims: Treatment effects from observational studies may be biased since the patients were ...
Randomization of treatment assignment in experiments generates treatment groups with approximately b...
Confounding can cause substantial bias in nonexperimental studies that aim to estimate causal effect...
Covariate adjustment is integral to the validity of observational studies assessing causal effects. ...
Background Epidemiologists are generally interested in the effect of an exposure on an outcome. This...
Background Epidemiologists are generally interested in the effect of an exposure on an outcome. This...