Objectives: We aimed to compare the performance of different regression modeling approaches for the prediction of heterogeneous treatment effects. Study Design and Setting: We simulated trial samples (n = 3,600; 80% power for a treatment odds ratio of 0.8) from a superpopulation (N = 1,000,000) with 12 binary risk predictors, both without and with six true treatment interactions. We assessed predictions of treatment benefit for four regression models: a “risk model” (with a constant effect of treatment assignment) and three “effect models” (including interactions of risk predictors with treatment assignment). Three novel performance measures were evaluated: calibration for benefit (i.e., observed vs. predicted risk difference in treated vs....
BackgroundRandomized controlled trials are often used to inform policy and practice for broad popula...
Decision-analytic measures to assess clinical utility of prediction models and diagnostic tests inco...
Although multicenter data are common, many prediction model studies ignore this during model develop...
Objectives: We aimed to compare the performance of different regression modeling approaches for the ...
Background: Recent evidence suggests that there is often substantial variation in the benefits and h...
Background: Recent evidence suggests that there is often substantial variation in the benefits and h...
Background: Risk of the outcome is a mathematical determinant of the absolute treatment benefit of a...
The treatment benefit prediction model is a type of clinical prediction model that quantifies the ma...
Treatment effects vary across different patients, and estimation of this variability is essential fo...
Randomized trials typically estimate average relative treatment effects, but decisions on the benefi...
A relevant problem in meta-analysis concerns the possible heterogeneity between trial results. If a ...
OBJECTIVE: Precision medicine requires reliable identification of variation in patient-level outcome...
Treatment effects vary across different patients, and estimation of this variability is essential fo...
Interventions with multivalued treatments are common in medical and health research, such as when co...
BackgroundRandomized controlled trials are often used to inform policy and practice for broad popula...
BackgroundRandomized controlled trials are often used to inform policy and practice for broad popula...
Decision-analytic measures to assess clinical utility of prediction models and diagnostic tests inco...
Although multicenter data are common, many prediction model studies ignore this during model develop...
Objectives: We aimed to compare the performance of different regression modeling approaches for the ...
Background: Recent evidence suggests that there is often substantial variation in the benefits and h...
Background: Recent evidence suggests that there is often substantial variation in the benefits and h...
Background: Risk of the outcome is a mathematical determinant of the absolute treatment benefit of a...
The treatment benefit prediction model is a type of clinical prediction model that quantifies the ma...
Treatment effects vary across different patients, and estimation of this variability is essential fo...
Randomized trials typically estimate average relative treatment effects, but decisions on the benefi...
A relevant problem in meta-analysis concerns the possible heterogeneity between trial results. If a ...
OBJECTIVE: Precision medicine requires reliable identification of variation in patient-level outcome...
Treatment effects vary across different patients, and estimation of this variability is essential fo...
Interventions with multivalued treatments are common in medical and health research, such as when co...
BackgroundRandomized controlled trials are often used to inform policy and practice for broad popula...
BackgroundRandomized controlled trials are often used to inform policy and practice for broad popula...
Decision-analytic measures to assess clinical utility of prediction models and diagnostic tests inco...
Although multicenter data are common, many prediction model studies ignore this during model develop...