An Adaptive Bayesian Sequential Design for Determining the Subject-Specific Optimal Treatment Length

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  While Bayesian adaptive designs have been widely used to find the optimal dose to be used in patients,and to select the most effective treatment from several candidates,they are rarely used to determine the optimal duration of a treatment,for which the principle of selection is not much different from dose-finding or treatment-picking problems.
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