Risk prediction models are crucial for assessing the pretest probability of cancer and are applied to stratify patient management strategies. These models are frequently based on multivariate regression analysis, requiring that all risk factors be specified, and do not convey the confidence in their predictions. We present a framework for uncertainty analysis that accounts for variability in input values. Uncertain or missing values are replaced with a range of plausible values. These ranges are used to compute individualized risk confidence intervals. We demonstrate our approach using the Gail model to evaluate the impact of uncertainty on management decisions. Up to 13% of cases (uncertain) had a risk interval that falls within the decisi...
A model's purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
Uncertainty in situations involving risk is frequently modelled by assuming a plausible form of prob...
A model’s purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
With rising cancer incidence and cancer mortality rates, cancer preventive screening is the recommen...
The practice of uncertainty factors as applied to noncancer endpoints in the IRIS database harkens b...
International audienceThis paper discusses an approach for treating model uncertainties in relation ...
OBJECTIVE: To examine the effects of communicating uncertainty regarding individualized colorectal c...
This paper discusses the challenges involved in the representation and treatment of uncertainties in...
The probability distribution of a model prediction is presented as a proper basis for evaluating the...
Decision analytic models used for health technology assess-ment are subject to uncertainties. These ...
Thorough validation is pivotal for any prediction model before it can be advocated for use in medica...
UNLABELLED: Accounting for uncertainty is now a standard part of decision-analytic modeling and is r...
A model's purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
The ability to identify patients who are likely to have an adverse outcome is an essential component...
International audienceExplores methods for the representation and treatment of uncertainty in risk a...
A model's purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
Uncertainty in situations involving risk is frequently modelled by assuming a plausible form of prob...
A model’s purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
With rising cancer incidence and cancer mortality rates, cancer preventive screening is the recommen...
The practice of uncertainty factors as applied to noncancer endpoints in the IRIS database harkens b...
International audienceThis paper discusses an approach for treating model uncertainties in relation ...
OBJECTIVE: To examine the effects of communicating uncertainty regarding individualized colorectal c...
This paper discusses the challenges involved in the representation and treatment of uncertainties in...
The probability distribution of a model prediction is presented as a proper basis for evaluating the...
Decision analytic models used for health technology assess-ment are subject to uncertainties. These ...
Thorough validation is pivotal for any prediction model before it can be advocated for use in medica...
UNLABELLED: Accounting for uncertainty is now a standard part of decision-analytic modeling and is r...
A model's purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
The ability to identify patients who are likely to have an adverse outcome is an essential component...
International audienceExplores methods for the representation and treatment of uncertainty in risk a...
A model's purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
Uncertainty in situations involving risk is frequently modelled by assuming a plausible form of prob...
A model’s purpose is to inform medical decisions and health care resource allocation. Modelers emplo...