Measures of decision sensitivity that have been applied to medical dec
ision problems were examined. Traditional threshold proximity methods
have recently been supplemented by probabilistic sensitivity analysis,
and by entropy-based measures of sensitivity. The authors propose a f
ourth measure based upon the expected value of perfect information (EV
PI), which they believe superior both methodologically and pragmatical
ly. Both the traditional and the newly suggested sensitivity measures
focus entirely on the likelihood of decision change without attention
to corresponding changes in payoff, which are often small. Consequentl
y, these measures can dramatically overstate problem sensitivity. EVPI
, on the other hand, incorporates both the probability of a decision c
hange and the marginal benefit of such a change into a single measure,
and therefore provides a superior picture of problem sensitivity. To
lend support to this contention, the authors revisit three problems fr
om the literature and compare the results of sensitivity analyses usin
g probabilistic, entropy-based, and EVPI-based measures.