Michiels S, Baujat B, Mahé C, Sargent D J, Pignon J P
Department of Biostatistics and Epidemiology, Institut Gustave-Roussy, 39, rue Camille Desmoulins. 94805 Villejuif Cedex, France.
J Clin Epidemiol. 2005 Mar;58(3):238-45. doi: 10.1016/j.jclinepi.2004.08.013.
Individual patient data meta-analysis consists in combining data from all available trials dealing with a therapeutic problem in order to increase the power of statistical analyses. A key issue when analyzing these pooled data sets is intertrial heterogeneity. In survival data, heterogeneity manifests itself either by differing treatment effects between the included trials or by a baseline hazard that differs between studies. One way to investigate and accommodate this heterogeneity is to use models that include random effects.
We apply this class of models to the Meta-Analysis of Chemotherapy in Head and Neck Cancers, in which strong heterogeneity is exhibited. This meta-analysis pooled 63 trials involving 10,741 patients.
We show that such modeling permits a better understanding of heterogeneity in the MACH-NC data, both from a frequentist and from a Bayesian point of view. In particular, the modeling suggests the presence of two outlying sets of trials whose baseline risk could explain the apparent efficacy or inefficacy of some treatment protocols.
We conclude that this family of random-effects models is a useful tool for exploring heterogeneity in meta-analyses of time-to-event data, and that its features can be applied to a very wide range of studies.
个体患者数据荟萃分析在于合并所有处理某一治疗问题的现有试验的数据,以增强统计分析的效能。分析这些汇总数据集时的一个关键问题是试验间异质性。在生存数据中,异质性表现为纳入试验间不同的治疗效果,或不同研究间不同的基线风险。研究和处理这种异质性的一种方法是使用包含随机效应的模型。
我们将这类模型应用于头颈部癌化疗的荟萃分析,该荟萃分析呈现出很强的异质性。这项荟萃分析汇总了63项试验,涉及10741例患者。
我们表明,从频率学派和贝叶斯学派的角度来看,这种建模有助于更好地理解MACH-NC数据中的异质性。特别是,该建模表明存在两组异常试验,其基线风险可以解释某些治疗方案明显的疗效或无效性。
我们得出结论,这类随机效应模型是探索事件发生时间数据荟萃分析中异质性的有用工具,其特性可应用于非常广泛的研究。