Department of Statistics, Iowa State University, Ames, 50010, IA, USA.
Department of Veterinary Diagnostic and Production Animal Medicine, Iowa State University, Ames, 50011, IA, USA.
Syst Rev. 2024 May 9;13(1):128. doi: 10.1186/s13643-024-02537-w.
Binary outcomes are likely the most common in randomized controlled trials, but ordinal outcomes can also be of interest. For example, rather than simply collecting data on diseased versus healthy study subjects, investigators may collect information on the severity of disease, with no disease, mild, moderate, and severe disease as possible levels of the outcome. While some investigators may be interested in all levels of the ordinal variable, others may combine levels that are not of particular interest. Therefore, when research synthesizers subsequently conduct a network meta-analysis on a network of trials for which an ordinal outcome was measured, they may encounter a network in which outcome categorization varies across trials.
The standard method for network meta-analysis for an ordinal outcome based on a multinomial generalized linear model is not designed to accommodate the multiple outcome categorizations that might occur across trials. In this paper, we propose a network meta-analysis model for an ordinal outcome that allows for multiple categorizations. The proposed model incorporates the partial information provided by trials that combine levels through modification of the multinomial likelihoods of the affected arms, allowing for all available data to be considered in estimation of the comparative effect parameters. A Bayesian fixed effect model is used throughout, where the ordinality of the outcome is accounted for through the use of the adjacent-categories logit link.
We illustrate the method by analyzing a real network of trials on the use of antibiotics aimed at preventing liver abscesses in beef cattle and explore properties of the estimates of the comparative effect parameters through simulation. We find that even with the categorization of the levels varying across trials, the magnitudes of the biases are relatively small and that under a large sample size, the root mean square errors become small as well.
Our proposed method to conduct a network meta-analysis for an ordinal outcome when the categorization of the outcome varies across trials, which utilizes the adjacent-categories logit link, performs well in estimation. Because the method considers all available data in a single estimation, it will be particularly useful to research synthesizers when the network of interest has only a limited number of trials for each categorization of the outcome.
二项结果可能是随机对照试验中最常见的,但有序结果也可能是研究人员感兴趣的。例如,研究人员可能不仅仅收集患病和健康研究对象的数据,而是收集疾病严重程度的信息,可能的结果水平为无疾病、轻度、中度和重度疾病。虽然一些研究人员可能对有序变量的所有水平都感兴趣,但其他人可能会合并不感兴趣的水平。因此,当研究综合人员随后对一系列以有序结果为测量指标的试验进行网络荟萃分析时,他们可能会遇到一个结果分类在不同试验中存在差异的网络。
基于多项广义线性模型的有序结局网络荟萃分析的标准方法不适用于适应可能出现在不同试验中的多种结局分类。在本文中,我们提出了一种用于有序结局的网络荟萃分析模型,该模型允许进行多种分类。所提出的模型通过修改受影响手臂的多项可能性来纳入通过修改多项可能性来纳入试验中组合水平所提供的部分信息,允许在估计比较效果参数时考虑所有可用数据。在整个分析过程中使用贝叶斯固定效应模型,通过使用相邻类别对数几率链接来考虑结局的有序性。
我们通过分析一个关于在肉牛中使用抗生素预防肝脓肿的真实试验网络来说明该方法,并通过模拟探索了比较效果参数估计值的性质。我们发现,即使结局的分类在不同的试验中有所不同,偏倚的幅度相对较小,而且在大样本量下,均方根误差也会变小。
我们提出的用于在结局分类在不同试验中有所不同的情况下进行有序结局的网络荟萃分析的方法,利用相邻类别对数几率链接,在估计方面表现良好。由于该方法在单个估计中考虑了所有可用数据,因此当感兴趣的网络中每个结局分类只有有限数量的试验时,它对研究综合人员特别有用。