TY - JOUR
T1 - Heterogeneous uncertainties in cholesterol management
AU - Ben-Haim, Yakov
AU - Dacso, Clifford C.
AU - Carrasco, Jonathon
AU - Rajan, Nithin
N1 - Funding Information:
This paper illustrates a methodology for quantifying severe non-probabilistic uncertainties, for combining uncertainties of different types, and for then using these results to support a medical decision. We make no claim for the optimality of this methodology, which is based on info-gap decision theory [5]. Indeed it is a formidable task to define and evaluate the optimality of a decision strategy, which is not a goal of this paper. However, the development of concepts and criteria of optimality is supported by the study of diverse methodologies. We contribute to this task by offering a methodology—info-gap theory—which is different from the many existing measure-theoretic techniques.
PY - 2009/7
Y1 - 2009/7
N2 - Physicians use clinical guidelines to inform judgment about therapy. Clinical guidelines do not address three important uncertainties: (1) uncertain relevance of tested populations to the individual patient, (2) the patient's uncertain preferences among possible outcomes, and (3) uncertain subjective and financial costs of intervention. Unreliable probabilistic information is available for some of these uncertainties; no probabilities are available for others. The uncertainties are in the values of parameters and in the shapes of functions. We explore the usefulness of info-gap decision theory in patient-physician decision making in managing cholesterol level using clinical guidelines. Info-gap models of uncertainty provide versatile tools for quantifying diverse uncertainties. Info-gap theory provides two decision functions for evaluating alternative therapies. The robustness function assesses the confidence-in light of uncertainties-in attaining acceptable outcomes. The opportuneness function assesses the potential for better-than-anticipated outcomes. Both functions assist in forming preferences among alternatives. Hypothetical case studies demonstrate that decisions using the guidelines and based on best estimates of the expected utility are sometimes, but not always, consistent with robustness and opportuneness analyses. The info-gap analysis provides guidance when judgment suggests that a deviation from the guidelines would be productive. Finally, analysis of uncertainty can help resolve ambiguous situations.
AB - Physicians use clinical guidelines to inform judgment about therapy. Clinical guidelines do not address three important uncertainties: (1) uncertain relevance of tested populations to the individual patient, (2) the patient's uncertain preferences among possible outcomes, and (3) uncertain subjective and financial costs of intervention. Unreliable probabilistic information is available for some of these uncertainties; no probabilities are available for others. The uncertainties are in the values of parameters and in the shapes of functions. We explore the usefulness of info-gap decision theory in patient-physician decision making in managing cholesterol level using clinical guidelines. Info-gap models of uncertainty provide versatile tools for quantifying diverse uncertainties. Info-gap theory provides two decision functions for evaluating alternative therapies. The robustness function assesses the confidence-in light of uncertainties-in attaining acceptable outcomes. The opportuneness function assesses the potential for better-than-anticipated outcomes. Both functions assist in forming preferences among alternatives. Hypothetical case studies demonstrate that decisions using the guidelines and based on best estimates of the expected utility are sometimes, but not always, consistent with robustness and opportuneness analyses. The info-gap analysis provides guidance when judgment suggests that a deviation from the guidelines would be productive. Finally, analysis of uncertainty can help resolve ambiguous situations.
KW - Cholesterol management
KW - Clinical guidelines
KW - Info-gap decision theory
KW - Judgment under uncertainty
KW - Patient satisfaction
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U2 - 10.1016/j.ijar.2009.04.002
DO - 10.1016/j.ijar.2009.04.002
M3 - Article
AN - SCOPUS:67549127093
SN - 0888-613X
VL - 50
SP - 1046
EP - 1065
JO - International Journal of Approximate Reasoning
JF - International Journal of Approximate Reasoning
IS - 7
ER -