Decision Policies for Early Stage Clinical Trials with Multiple Endpoints
Abstract
Before a drug can be prescribed to patients, it must be shown to be safe and effective
for a certain indication in a controlled clinical trial (known as Phase III).
Such studies are costly to run and expose patients to potential risks. Therefore,
after initial studies in human subjects show the drug’s safety (Phase I),
studies with a small number of patients are run to assess the prospects of
the drug (Phase II). If the number of patients in a Phase II study is not be
sufficient to detect differences in the variable of interest (e.g. number of hospitalizations
due to heart failure); a surrogate variable which is predictive of the
variable of interest is used instead. A decision framework originally proposed
by Lalonde (2007) is used in industry to determine, based on a single surrogate
endpoint, whether to “Go” ahead with a Phase III study, or to “Stop” development
of the drug. In some therapeutic areas, a single endpoint is not sufficient
to predict the Phase III variable of interest; several related endpoints are used
instead. Endpoints which are considered clinically related may be grouped
into domains. How to best combine several disease markers across different
domains to achieve the desired probabilities of correct/incorrect decisions is
an open question.
This report presents an extension to multiple endpoints of the decision
framework proposed by Lalonde. In this extension, decision policies are formulated
in two levels. First, a Go or Stop decision is made for each domain, for
example by individually comparing each of the relevant endpoints to certain
thresholds. Performing multiple comparisons heightens the risk of an incorrect
Go decision. This risk can be controlled effectively by using the Simes
procedure (1986), which is a special case of the Benjamini-Hochberg (1995)
method. Domain-level decisions are then combined into policies fulfilling a
monotonicity property. This property enables the calculation of upper bounds
for the probability of an incorrect decision, and lower bounds for the probability
of a correct decision. These calculations are performed both for purely
synthetic endpoints and for a case study involving endpoints related to heart
failure. The resulting bounds are analogues to the statistical notions of Type I
error and power, respectively. Heuristics are derived to help practitioners decide
which endpoints to include, depending on the statistical power of these
endpoints and on which combinations of true effects are of clinical interest.
Overall, the framework proposed in this report can represent many of the
policies used by practitioners when designing Phase II studies with multiple
endpoints. The outcome of the simulations presented in this theses can guide
the selection of endpoints in order to achieve the desired bounds on the probabilities
of correct and incorrect decisions.
Degree
Student essay
Collections
Date
2022-11-11Author
López Juan, Víctor
Keywords
clinical trials, early stage, multivariate, Lalonde
Language
eng