Generalizing the information content for stepped wedge designs: A marginal modeling approach.

Pub Date : 2023-09-01 Epub Date: 2022-09-23 DOI:10.1111/sjos.12615
Fan Li, Jessica Kasza, Elizabeth L Turner, Paul J Rathouz, Andrew B Forbes, John S Preisser
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Abstract

Stepped wedge trials are increasingly adopted because practical constraints necessitate staggered roll-out. While a complete design requires clusters to collect data in all periods, resource and patient-centered considerations may call for an incomplete stepped wedge design to minimize data collection burden. To study incomplete designs, we expand the metric of information content to discrete outcomes. We operate under a marginal model with general link and variance functions, and derive information content expressions when data elements (cells, sequences, periods) are omitted. We show that the centrosymmetric patterns of information content can hold for discrete outcomes with the variance-stabilizing link function. We perform numerical studies under the canonical link function, and find that while the patterns of information content for cells are approximately centrosymmetric for all examined underlying secular trends, the patterns of information content for sequences or periods are more sensitive to the secular trend, and may be far from centrosymmetric.

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推广阶梯楔形设计的信息含量:边际建模法
阶梯楔形试验之所以被越来越多地采用,是因为实际条件的限制需要交错推出。虽然完整的设计要求分组收集所有时期的数据,但出于资源和以患者为中心的考虑,可能需要采用不完整的阶梯楔形设计,以尽量减轻数据收集负担。为了研究不完全设计,我们将信息内容的度量标准扩展到离散结果。我们在具有一般联系和方差函数的边际模型下进行操作,并推导出数据元素(单元、序列、时段)被省略时的信息含量表达式。我们表明,信息含量的中心对称模式可以在具有方差稳定链接函数的离散结果中成立。我们在典型链接函数下进行了数值研究,发现对于所有考察过的基本世俗趋势,单元的信息含量模式近似于中心对称,而序列或周期的信息含量模式对世俗趋势更为敏感,可能远非中心对称。
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