Abstract
Rationale, Aims, and Objectives: Confidence (or belief) that a therapy is effective is
essential to practicing clinical medicine. GRADE, a popular framework for developing
clinical recommendations, provides a means for assigning how much confidence one
should have in a therapy's effect estimate. One's level of confidence (or “degree of
belief”) can also be modelled using Bayes theorem. In this paper, we look through
both a GRADE and Bayesian lens to examine how one determines confidence in
the effect estimate.
Methods: Philosophical examination.
Results: The GRADE framework uses a criteria‐based method to assign a quality of
evidence level. The criteria pertain mostly to considerations of methodological rigour,
derived from a modified evidence‐based medicine evidence hierarchy. The four levels
of quality relate to the level of confidence one should have in the effect estimate. The
Bayesian framework is not bound by a predetermined set of criteria. Bayes theorem
shows how a rational agent adjusts confidence (ie, degree of belief) in the effect estimate
on the basis of the available evidence. Such adjustments relate to the principles
of incremental confirmation and evidence proportionism. Use of the Bayesian framework
reveals some potential pitfalls in GRADE's criteria‐based thinking on confidence
that are out of step with our intuitions on evidence.
Conclusions: A rational thinker uses all available evidence to formulate beliefs. The
GRADE criteria seem to suggest that we discard some of that information when other,
more favoured information (eg, derived from clinical trials) is available. The GRADE
framework should strive to ensure that the whole evidence base is considered when
determining confidence in the effect estimate. The incremental value of such evidence
on determining confidence in the effect estimate should be assigned in a manner
that is theoretically or empirically justified, such that confidence is proportional to
the evidence, both for and against it.