In clinical decision making, it is common to ask whether, and how much, a diagnostic procedure is contributing to subsequent treatment decisions. Statistically, quantification of the value of the information provided by a diagnostic procedure can be carried out using decision trees with multiple decision points, representing both the diagnostic test and the subsequent treatments that may depend on the test\u27s results. This article investigates probabilistic sensitivity analysis approaches for exploring and communicating parameter uncertainty in such decision trees. Complexities arise because uncertainty about a model\u27s inputs determines uncertainty about optimal decisions at all decision nodes of a tree. We present the expected utility...
Background and aim: Patient decision aids for oncological treatment options, provide information on ...
Uncertainty in medical decision making techniques occurs in the specification of both decision tree ...
BACKGROUND: Treatment decision making is often guided by evidence-based probabilities, which may be ...
AbstractEffective handling of uncertainty is one of the central problems in medical decision making....
Probabilistic sensitivity analysis has previously been described for the special case of dichotomous...
In this paper, we consider genetic risk assessment and genetic counseling for breast cancer from the...
In structuring decision models of medical interventions, it is commonly recommended that only 2 bran...
The authors describe methods for modeling uncertainty in the specification of decision tree probabil...
Parameter uncertainty, patient heterogeneity, and stochastic uncertainty of outcomes are increasingl...
When using a computer model to inform a decision, it is important to investigate any uncertainty in ...
Purpose: Analyzing and communicating uncertainty is essential in medical decision making. To judge w...
<div><p>Often, for medical decisions based on test scores, a single decision threshold is determined...
Often, for medical decisions based on test scores, a single decision threshold is determined and the...
Decision-analytic models are frequently used to evaluate the relative costs and benefits of alternat...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
Background and aim: Patient decision aids for oncological treatment options, provide information on ...
Uncertainty in medical decision making techniques occurs in the specification of both decision tree ...
BACKGROUND: Treatment decision making is often guided by evidence-based probabilities, which may be ...
AbstractEffective handling of uncertainty is one of the central problems in medical decision making....
Probabilistic sensitivity analysis has previously been described for the special case of dichotomous...
In this paper, we consider genetic risk assessment and genetic counseling for breast cancer from the...
In structuring decision models of medical interventions, it is commonly recommended that only 2 bran...
The authors describe methods for modeling uncertainty in the specification of decision tree probabil...
Parameter uncertainty, patient heterogeneity, and stochastic uncertainty of outcomes are increasingl...
When using a computer model to inform a decision, it is important to investigate any uncertainty in ...
Purpose: Analyzing and communicating uncertainty is essential in medical decision making. To judge w...
<div><p>Often, for medical decisions based on test scores, a single decision threshold is determined...
Often, for medical decisions based on test scores, a single decision threshold is determined and the...
Decision-analytic models are frequently used to evaluate the relative costs and benefits of alternat...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
Background and aim: Patient decision aids for oncological treatment options, provide information on ...
Uncertainty in medical decision making techniques occurs in the specification of both decision tree ...
BACKGROUND: Treatment decision making is often guided by evidence-based probabilities, which may be ...