Construction of the Design Matrix for Generalized Linear Mixed-Effects Models in the Context of Clinical Trials of Treatment Sequences.

Q3 Mathematics
Francisco J Diaz
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Abstract

The estimation of carry-over effects is a difficult problem in the design and analysis of clinical trials of treatment sequences including cross-over trials. Except for simple designs, carry-over effects are usually unidentifiable and therefore nonestimable. Solutions such as imposing parameter constraints are often unjustified and produce differing carry-over estimates depending on the constraint imposed. Generalized inverses or treatment-balancing often allow estimating main treatment effects, but the problem of estimating the carry-over contribution of a treatment sequence remains open in these approaches. Moreover, washout periods are not always feasible or ethical. A common feature of designs with unidentifiable parameters is that they do not have design matrices of full rank. Thus, we propose approaches to the construction of design matrices of full rank, without imposing artificial constraints on the carry-over effects. Our approaches are applicable within the framework of generalized linear mixed-effects models. We present a new model for the design and analysis of clinical trials of treatment sequences, called Antichronic System, and introduce some special sequences called Skip Sequences. We show that carry-over effects are identifiable only if appropriate Skip Sequences are used in the design and/or data analysis of the clinical trial. We explain how Skip Sequences can be implemented in practice, and present a method of computing the appropriate Skip Sequences. We show applications to the design of a cross-over study with 3 treatments and 3 periods, and to the data analysis of the STAR*D study of sequences of treatments for depression.

Abstract Image

Abstract Image

在治疗序列临床试验中构建广义线性混合效应模型的设计矩阵。
在包括交叉试验在内的治疗序列临床试验的设计和分析中,如何估计带入效应是一个难题。除了简单的设计外,带入效应通常无法识别,因此也无法估计。强加参数约束等解决方法往往是不合理的,而且会根据强加的约束产生不同的带入效应估计值。广义倒数或治疗平衡通常可以估算出主要治疗效果,但在这些方法中,估算治疗序列的结转贡献仍然是个难题。此外,冲洗期并不总是可行或符合道德规范的。参数无法识别的设计的一个共同特点是没有全秩设计矩阵。因此,我们提出了构建全等级设计矩阵的方法,而不对携带效应施加人为限制。我们的方法适用于广义线性混合效应模型框架。我们提出了一个用于设计和分析治疗序列临床试验的新模型,称为反序列系统,并引入了一些特殊序列,称为跳过序列。我们表明,只有在临床试验的设计和/或数据分析中使用了适当的跳过序列,才能识别带入效应。我们解释了如何在实践中实施跳过序列,并介绍了计算适当跳过序列的方法。我们展示了在设计 3 种治疗方法和 3 个疗程的交叉研究以及抑郁症治疗序列 STAR*D 研究的数据分析中的应用。
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来源期刊
Revista Colombiana De Estadistica
Revista Colombiana De Estadistica STATISTICS & PROBABILITY-
CiteScore
1.20
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: The Colombian Journal of Statistics publishes original articles of theoretical, methodological and educational kind in any branch of Statistics. Purely theoretical papers should include illustration of the techniques presented with real data or at least simulation experiments in order to verify the usefulness of the contents presented. Informative articles of high quality methodologies or statistical techniques applied in different fields of knowledge are also considered. Only articles in English language are considered for publication. The Editorial Committee assumes that the works submitted for evaluation have not been previously published and are not being given simultaneously for publication elsewhere, and will not be without prior consent of the Committee, unless, as a result of the assessment, decides not publish in the journal. It is further assumed that when the authors deliver a document for publication in the Colombian Journal of Statistics, they know the above conditions and agree with them.
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