Planning Sample Size Using MMRM in Confirmatory Trials

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  When planning sample size in confirmatory trials,the sample size is estimated from hypothesized effect size of the underlying study treatment.In order to account for potential dropout during the study,it is not uncommon to ignore the data for subjects who drop out of the study before the primary endpoint is reached.
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