Likelihood ratio interpretation of the relative risk
Abstract
Interpreting diagnostic test results in
medicine
The likelihood ratio (LR) is today commonly used
in medicine for diagnostic inference. Historically,
it was preceded by introduction, in 1966, of the
predictive value of a diagnostic test in Medicine1
and within a decade of the latter, it was realised that
the true-positive to false-positive ratio2 3 also then
called the likelihood value4
was the main driver
of the change from prior probabilities to posterior
predictive values. The latter were also called posttest likelihoods and this ratio became known as the
LR in Medicine. The change from prior probabilities to posterior predictive values was formulated
using Bayes’ theorem5
and represented a more
versatile approach to predictive values. The reason
this is considered more versatile is that Bayes’
theorem allows a physician to compute the predictive value (probability) of a diagnosis conditional
on a specific test result. For example, if we denote
test status as +ve (positive) and –ve (negative) and
the gold standard (eg, underlying diagnosis) as D
(diagnosed) and nD (not diagnosed), respectively,
then from Bayes’ theorem,5
the posterior (after the
test result) probability (expressed in odds form) of
the diagnosis can be derived from test sensitivity
and specificity as follows
Collections
- Medicine Research [1508 items ]