A multistate model for early decision making in oncology
Ulrich Beyer, David Dejardin, Matthias Meller, Kaspar Rufibach, Hans, Ulrich Burger

TL;DR
This paper proposes a multistate modeling approach for early oncology drug decision-making, utilizing limited early phase data to better predict overall survival and improve progression decisions.
Contribution
It introduces a multistate model that incorporates multiple tumor response metrics to predict overall survival from early phase trial data, enhancing decision accuracy.
Findings
Multistate model accurately predicts OS hazard ratio from limited data.
Method improves early decision-making in oncology drug development.
Feasibility demonstrated through case studies and simulations.
Abstract
The development of oncology drugs progresses through multiple phases, where after each phase a decision is made about whether to move a molecule forward. Early phase efficacy decisions are often made on the basis of single arm studies based on RECIST tumor response as endpoint. This decision rules are implicitly assuming some form of surrogacy between tumor response and long-term endpoints like progression-free survival (PFS) or overall survival (OS). The surrogacy is most often assessed as weak, but sufficient to allow a rapid decision making as early phase studies lack the survival follow up and number of patients to properly assess PFS or OS. With the emergence of therapies with new mechanisms of action, for which the link between RECIST tumor response and long-term endpoints is either not accessible yet because not enough data is available to perform a meta-regression, or the link…
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