Introduction. Patient-level simulation models facilitate extrapolation of clinical trial data while allowing for heterogeneity, prior history, and nonlinearity. However, combining different types of uncertainty around within-trial and extrapolated results remains challenging. Methods. We tested 4 methods to combine parameter uncertainty (around the regression coefficients used to predict future events) with sampling uncertainty (uncertainty around mean risk factors within the finite sample whose outcomes are being predicted and the effect of treatment on these risk factors). We compared these 4 methods using a simulation study based on an economic evaluation extrapolating the AFORRD randomized controlled trial using the UK Prospective Diabe...
Background: Metamodeling may substantially reduce the computational expense of individual-level stat...
Background: Prognostic models often show poor performance when applied to independent validation dat...
Abstract Background Prognostic models often show poor performance when applied to independent valida...
Background: Structural uncertainty can affect model-based economic simulation estimates and study co...
BACKGROUND:Structural uncertainty can affect model-based economic simulation estimates and study con...
Background Structural uncertainty can affect model-based economic simulation estimates and study ...
Background: Parametric distributions based on individual patient data can be used to represent both ...
Actual implementation of probabilistic sensitivity analysis may lead to misleading or improper concl...
__Background__. Evaluation of personalized treatment options requires health economic models that in...
Background: Structural uncertainty can affect model-based economic simulation estimates and study co...
In a Model-Based Drug Development strategy, the first objective is to design studies such that the m...
The analysis of both patient heterogeneity and parameter uncertainty in decision models is increasin...
Aims: The uncertainty around the EQ-5D-3L value set is commonly ignored in economic evaluation. This...
We present a practical guide and step-by-step flowchart for establishing uncertainty intervals for k...
Purpose To increase the precision of estimated item parameters of item response theory models for pa...
Background: Metamodeling may substantially reduce the computational expense of individual-level stat...
Background: Prognostic models often show poor performance when applied to independent validation dat...
Abstract Background Prognostic models often show poor performance when applied to independent valida...
Background: Structural uncertainty can affect model-based economic simulation estimates and study co...
BACKGROUND:Structural uncertainty can affect model-based economic simulation estimates and study con...
Background Structural uncertainty can affect model-based economic simulation estimates and study ...
Background: Parametric distributions based on individual patient data can be used to represent both ...
Actual implementation of probabilistic sensitivity analysis may lead to misleading or improper concl...
__Background__. Evaluation of personalized treatment options requires health economic models that in...
Background: Structural uncertainty can affect model-based economic simulation estimates and study co...
In a Model-Based Drug Development strategy, the first objective is to design studies such that the m...
The analysis of both patient heterogeneity and parameter uncertainty in decision models is increasin...
Aims: The uncertainty around the EQ-5D-3L value set is commonly ignored in economic evaluation. This...
We present a practical guide and step-by-step flowchart for establishing uncertainty intervals for k...
Purpose To increase the precision of estimated item parameters of item response theory models for pa...
Background: Metamodeling may substantially reduce the computational expense of individual-level stat...
Background: Prognostic models often show poor performance when applied to independent validation dat...
Abstract Background Prognostic models often show poor performance when applied to independent valida...