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Shared parameter model for competing risks and different data summaries in meta-ana lysis: Implications for common and rare outcomes

机译:Meta分析中竞争风险和不同数据摘要的共享参数模型:对常见和罕见结果的影响

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This paper considers the problem in aggregate data meta-analysis of studies reporting multiple competing binary outcomes and of studies using different summary formats for those outcomes. For example, some may report numbers of patients with at least one of each outcome while others may report the total number of such outcomes. We develop a shared parameter model on hazard ratio scale accounting for different data summaries and competing risks. We adapt theoretical arguments from the literature to demonstrate that the models are equivalent if events are rare. We use constructed data examples and a simulation study to find an event rate threshold of approximately 0.2 above which competing risks and different data summaries may bias results if no adjustments are made. Below this threshold, simpler models may be sufficient. We recommend analysts to consider the absolute event rates and only use a simple model ignoring data types and competing risks if all of underlying events are rare (below our threshold of approximately 0.2). If one or more of the absolute event rates approaches or exceeds our informal threshold, it may be necessary to account for data types and competing risks through a shared parameter model in order to avoid biased estimates.
机译:本文考虑了报告多个竞争性二元结果的研究以及对这些结果使用不同摘要格式的研究的汇总数据元分析中的问题。例如,一些人可能报告具有每种结果中至少一项的患者人数,而另一些人可能报告此类结果的总数。针对不同的数据摘要和竞争风险,我们开发了一个基于风险比率量表的共享参数模型。我们根据文献中的理论论证来证明,如果事件很少发生,那么这些模型是等效的。我们使用构建的数据示例和模拟研究来找到约0.2的事件发生率阈值,如果不进行任何调整,则高于该事件发生率阈值时,竞争风险和不同的数据摘要可能会对结果产生偏差。低于此阈值,简单的模型可能就足够了。我们建议分析人员考虑绝对事件发生率,如果所有基本事件都很少发生(低于我们的大约0.2的阈值),则仅使用简单模型忽略数据类型和竞争风险。如果绝对事件发生率中的一个或多个接近或超过我们的非正式阈值,则可能有必要通过共享参数模型考虑数据类型和竞争风险,以避免估计偏差。

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