一种基于族的图解方法用于检验层次有序的假设族

Z. Qiu, Li Yu, Wenge Guo
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引用次数: 0

摘要

在临床试验的应用中,被测试的假设通常被分组为多个等级有序的家庭。为了检验这种结构化的假设,文献中发展了各种守门策略,如系列守门、并行守门、树状守门策略等。然而,在处理假设家族之间日益复杂的逻辑关系时,这些把关策略通常不是直观的,就是不太灵活。为了克服这个问题,在本文中,我们开发了一种新的基于家庭的图形化方法,可以很容易地推导和可视化不同的把关策略。在该方法中,使用有向加权图来表示生成的把关策略,其中每个节点对应一个假设族,并使用两个简单的更新规则来更新每个族的临界值和任意两个族之间的过渡系数。从理论上讲,我们证明了所提出的图形方法在预先指定的水平上强有力地控制了总体家庭误差率。通过一些案例研究和一个真实的临床例子,我们证明了所提出的方法的简单性和灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Family-based Graphical Approach for Testing Hierarchically Ordered Families of Hypotheses
In applications of clinical trials, tested hypotheses are often grouped as multiple hierarchically ordered families. To test such structured hypotheses, various gatekeeping strategies have been developed in the literature, such as series gatekeeping, parallel gatekeeping, tree-structured gatekeeping strategies, etc. However, these gatekeeping strategies are often either non-intuitive or less flexible when addressing increasingly complex logical relationships among families of hypotheses. In order to overcome the issue, in this paper, we develop a new family-based graphical approach, which can easily derive and visualize different gatekeeping strategies. In the proposed approach, a directed and weighted graph is used to represent the generated gatekeeping strategy where each node corresponds to a family of hypotheses and two simple updating rules are used for updating the critical value of each family and the transition coefficient between any two families. Theoretically, we show that the proposed graphical approach strongly controls the overall familywise error rate at a pre-specified level. Through some case studies and a real clinical example, we demonstrate simplicity and flexibility of the proposed approach.
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