Estimands for Early Phase Dose Optimization Trials in Oncology
Ayon Mukherjee, Jonathan L. Moscovici, Zheng Liu

TL;DR
This paper discusses applying the Estimand framework to early phase oncology trials for dose optimization, integrating efficacy and toxicity data to better identify the optimal biological dose (OBD) and improve trial clarity.
Contribution
It introduces a detailed Estimand-based approach for dose optimization in oncology, incorporating PK, toxicity, and efficacy data with utility functions, and provides practical recommendations for implementation.
Findings
Framework enhances clarity in dose optimization objectives.
Utility functions help identify the optimal biological dose.
Guidelines for handling intercurrent events in trials.
Abstract
Phase I dose escalation trials in oncology generally aim to find the maximum tolerated dose (MTD). However, with the advent of molecular targeted therapies and antibody drug conjugates, dose limiting toxicities are less frequently observed, giving rise to the concept of optimal biological dose (OBD), which considers both efficacy and toxicity. The Estimand framework presented in the addendum of the ICH E9(R1) guidelines strengthens the dialogue between different stakeholders by bringing in greater clarity in the clinical trial objectives and by providing alignment between the targeted estimand under consideration and the statistical analysis methods. However, there lacks clarity in implementing this framework in early phase dose optimization studies. This manuscript aims at discussing the Estimand framework for dose optimization trials in oncology considering efficacy and toxicity…
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Taxonomy
TopicsStatistical Methods in Clinical Trials · Advanced Radiotherapy Techniques
