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Stochastic Approximation with Virtual Observations for Dose-finding on Discrete Levels

  • 2010-07-05 (Mon.), 10:30 AM
  • 中研院-蔡元培館 2F 208 演講廳
  • 茶 會:上午10:10統計所蔡元培館二樓
  • Prof. Ying Kuen Cheung
  • Dept. of Biostatistics, Columbia University, USA

Abstract

Phase I clinical studies are experiments in which a new drug is administered to humans to determine the maximum dose that causes toxicity with a target probability.? As such, phase I dose-finding is often formulated as a quantile estimation problem.? For studies with a biologic endpoint, it is common to define toxicity by dichotomising the continuous biomarker expression.? In this talk, we propose a novel variant of the Robbins—Monro stochastic approximation that utilises the continuous measurements for quantile estimation.? The Robbins—Monro method has seldom seen clinical applications, because it does not perform well for quantile estimation with binary data and it works with a continuum of doses, which are generally not available in practice.? To address these two practical issues, we formulate the dose-finding problem as root-finding for the mean of a continuous variable, for which the stochastic approximation procedure is efficient.? To accommodate the use of discrete doses, we introduce the idea of virtual observation that is defined on a continuous dosage range.? Our proposed method inherits the convergence properties of the stochastic approximation, and its computational simplicity.? Simulations based on real trial data show that our proposed method improves accuracy compared to the continual reassessment method and produces robust results under model misspecification. Joint work with MITCHELL S. V. ELKIND

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