Literature DB >> 27158186

Multi-armed Bandit Models for the Optimal Design of Clinical Trials: Benefits and Challenges.

Sofía S Villar1, Jack Bowden2, James Wason3.   

Abstract

Multi-armed bandit problems (MABPs) are a special type of optimal control problem well suited to model resource allocation under uncertainty in a wide variety of contexts. Since the first publication of the optimal solution of the classic MABP by a dynamic index rule, the bandit literature quickly diversified and emerged as an active research topic. Across this literature, the use of bandit models to optimally design clinical trials became a typical motivating application, yet little of the resulting theory has ever been used in the actual design and analysis of clinical trials. To this end, we review two MABP decision-theoretic approaches to the optimal allocation of treatments in a clinical trial: the infinite-horizon Bayesian Bernoulli MABP and the finite-horizon variant. These models possess distinct theoretical properties and lead to separate allocation rules in a clinical trial design context. We evaluate their performance compared to other allocation rules, including fixed randomization. Our results indicate that bandit approaches offer significant advantages, in terms of assigning more patients to better treatments, and severe limitations, in terms of their resulting statistical power. We propose a novel bandit-based patient allocation rule that overcomes the issue of low power, thus removing a potential barrier for their use in practice.

Entities:  

Keywords:  Gittins index; Multi-armed bandit; Whittle index; patient allocation; response adaptive procedures

Year:  2015        PMID: 27158186      PMCID: PMC4856206          DOI: 10.1214/14-STS504

Source DB:  PubMed          Journal:  Stat Sci        ISSN: 0883-4237            Impact factor:   2.901


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4.  Optimal design of multi-arm multi-stage trials.

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Authors:  Hui Tang; Nathan R Foster; Axel Grothey; Stephen M Ansell; Richard M Goldberg; Daniel J Sargent
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Review 6.  Practical Bayesian adaptive randomisation in clinical trials.

Authors:  Peter F Thall; J Kyle Wathen
Journal:  Eur J Cancer       Date:  2007-02-16       Impact factor: 9.162

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  8 in total
  28 in total

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Authors:  Kelly W Zhang; Lucas Janson; Susan A Murphy
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10.  Response-adaptive randomization for multi-arm clinical trials using the forward looking Gittins index rule.

Authors:  Sofía S Villar; James Wason; Jack Bowden
Journal:  Biometrics       Date:  2015-06-22       Impact factor: 2.571

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