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Simulation-based sample-sizing and power calculations in logistic regression with partial prior information

机译:具有部分先验信息的逻辑回归中基于仿真的样本大小和功效计算

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There have been many approximations developed for sample sizing of a logistic regression model with a single normally-distributed stimulus. Despite this, it has been recognised that there is no consensus as to the best method. In pharmaceutical drug development, simulation provides a powerful tool to characterise the operating characteristics of complex adaptive designs and is an ideal method for determining the sample size for such a problem. In this paper, we address some issues associated with applying simulation to determine the sample size for a given power in the context of logistic regression. These include efficient methods for evaluating the convolution of a logistic function and a normal density and an efficient heuristic approach to searching for the appropriate sample size. We illustrate our approach with three case studies. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:对于具有单个正态分布刺激的逻辑回归模型的样本大小,已经开发了许多近似方法。尽管如此,人们已经认识到关于最佳方法尚无共识。在药物开发中,仿真提供了强大的工具来表征复杂的自适应设计的操作特性,并且是确定此类问题的样本量的理想方法。在本文中,我们解决了一些与逻辑仿真相关的问题,这些问题与应用模拟来确定给定功效的样本量有关。这些方法包括用于评估逻辑函数和法线密度卷积的有效方法,以及用于搜索适当样本量的有效启发式方法。我们通过三个案例研究来说明我们的方法。版权所有(c)2016 John Wiley&Sons,Ltd.

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