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首页> 外文期刊>BMC Medical Research Methodology >Pattern-mixture model in network meta-analysis of binary missing outcome data: one-stage or two-stage approach?
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Pattern-mixture model in network meta-analysis of binary missing outcome data: one-stage or two-stage approach?

机译:模式 - 混合模型在网络中分析二元缺失结果数据的分析:单阶段或两阶段方法?

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Trials with binary outcomes can be synthesised using within-trial exact likelihood or approximate normal likelihood in one-stage or two-stage approaches, respectively. The performance of the one-stage and the two-stage approaches has been documented extensively in the literature. However, little is known about how these approaches behave in the presence of missing outcome data (MOD), which are ubiquitous in clinical trials. In this work, we compare the one-stage versus two-stage approach via a pattern-mixture model in the network meta-analysis using Bayesian methods to handle MOD appropriately. We used 29 published networks to empirically compare the two approaches concerning the relative treatment effects of several competing interventions and the between-trial variance (τ2), while considering the extent and level of balance of MOD in the included trials. We additionally conducted a simulation study to compare the competing approaches regarding the bias and width of the 95% credible interval of the (summary) log odds ratios (OR) and τ2 in the presence of moderate and large MOD. The empirical study did not reveal any systematic bias between the compared approaches regarding the log OR, but showed systematically larger uncertainty around the log OR under the one-stage approach for networks with at least one small trial or low event risk and moderate MOD. For these networks, the simulation study revealed that the bias in log OR for comparisons with the reference intervention in the network was relatively higher in the two-stage approach. Contrariwise, the bias in log OR for the remaining comparisons was relatively higher in the one-stage approach. Overall, bias increased for large MOD. For these networks, the empirical results revealed slightly higher τ2 estimates under the one-stage approach irrespective of the extent of MOD. The one-stage approach also led to less precise log OR and τ2 when compared with the two-stage approach for large MOD. Due to considerable bias in the log ORs overall, especially for large MOD, none of the competing approaches was superior. Until a more competent model is developed, the researchers may prefer the one-stage approach to handle MOD, while acknowledging its limitations.
机译:具有二进制结果的试验可以在试验内,分别在一期或两级方法中近似正常可能性来合成。一阶段和两级方法的表现已经在文献中广泛记录。然而,关于这些方法在存在缺失的结果数据(MOD)的存在时,众所周知,这几乎是众所周知的,这在临床试验中普遍存在。在这项工作中,我们通过使用贝叶斯方法的网络元分析中的模式 - 混合模型进行了一阶段与两级方法,使用贝叶斯方法进行适当处理MOD。我们使用了29个公布的网络来凭经验比较了几种竞争干预措施的相对治疗效果的方法和试验方差(τ2),同时考虑到包括在内的试验中MOD的平衡程度和水平。我们还进行了一种模拟研究,以比较竞争方法的偏见和宽度的偏差和宽度(概述)日志差距(或)和τ2在中等和大模式存在下的偏差。实证研究没有揭示关于日志的比较方法之间的任何系统偏见,而是在日志周围显示出系统更大的不确定性,或者在具有至少一个小型试验或低事件风险和中等模式的网络的一步方法下。对于这些网络,模拟研究表明,在两阶段方法中,日志中的偏差或与网络的参考干预相对较高。相比之下,在一级方法中,日志或剩余比较中的偏差相对较高。总的来说,偏差增加了大型mod。对于这些网络,经验结果在单阶段方法下略有稍高的τ2估计,而不管Mod的程度如何。与大型MOD的两级方法相比,一级方法也导致更精确的日志或τ2。由于LOG或S总体上的相当大,特别是对于大型MOD,竞争方法都不是优越的。在开发更有能力的模式之前,研究人员可能更喜欢单阶段方法来处理MOD,同时承认其限制。

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