The analysis of both patient heterogeneity and parameter uncertainty in decision models is increasingly recommended. In addition, the complexity of current medical decision models commonly requires simulating individual subjects, which introduces stochastic uncertainty. The combined analysis of uncertainty and heterogeneity often involves complex nested Monte Carlo simulations to obtain the model outcomes of interest. In this article, the authors distinguish eight model types, each dealing with a different combination of patient heterogeneity, parameter uncertainty, and stochastic uncertainty. The analyses that are required to obtain the model outcomes are expressed in equations, explained in stepwise algorithms, and demonstrated in example...
We present a practical guide and step-by-step flowchart for establishing uncertainty intervals for k...
A Monte Carlo uncertainty analysis with correlations between parameters is applied to a Markov-chain...
Scholz S. Dealing with uncertainty in health economic decision modeling. Applying statistical and da...
The analysis of both patient heterogeneity and parameter uncertainty in decision models is increasin...
Parameter uncertainty, patient heterogeneity, and stochastic uncertainty of outcomes are increasingl...
A model’s purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
A model's purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
AbstractA model's purpose is to inform medical decisions and health care resource allocation. Modele...
A model's purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
Background Parametric distributions based on individual patient data can be used to represent both s...
Actual implementation of probabilistic sensitivity analysis may lead to misleading or improper concl...
AbstractEffective handling of uncertainty is one of the central problems in medical decision making....
__Background__. Evaluation of personalized treatment options requires health economic models that in...
Introduction. Patient-level simulation models facilitate extrapolation of clinical trial data while ...
Intra-tumor and inter-patient heterogeneity are two challenges in developing mathematical models for...
We present a practical guide and step-by-step flowchart for establishing uncertainty intervals for k...
A Monte Carlo uncertainty analysis with correlations between parameters is applied to a Markov-chain...
Scholz S. Dealing with uncertainty in health economic decision modeling. Applying statistical and da...
The analysis of both patient heterogeneity and parameter uncertainty in decision models is increasin...
Parameter uncertainty, patient heterogeneity, and stochastic uncertainty of outcomes are increasingl...
A model’s purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
A model's purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
AbstractA model's purpose is to inform medical decisions and health care resource allocation. Modele...
A model's purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
Background Parametric distributions based on individual patient data can be used to represent both s...
Actual implementation of probabilistic sensitivity analysis may lead to misleading or improper concl...
AbstractEffective handling of uncertainty is one of the central problems in medical decision making....
__Background__. Evaluation of personalized treatment options requires health economic models that in...
Introduction. Patient-level simulation models facilitate extrapolation of clinical trial data while ...
Intra-tumor and inter-patient heterogeneity are two challenges in developing mathematical models for...
We present a practical guide and step-by-step flowchart for establishing uncertainty intervals for k...
A Monte Carlo uncertainty analysis with correlations between parameters is applied to a Markov-chain...
Scholz S. Dealing with uncertainty in health economic decision modeling. Applying statistical and da...