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使用贝叶斯方法整合直接和间接证据:卵巢癌的应用案例研究

Incorporating direct and indirect evidence using bayesian methods: an applied case study in ovarian cancer.

作者信息

Griffin Susan, Bojke Laura, Main Caroline, Palmer Stephen

机构信息

Centre for Health Economics, University of York, York, UK.

出版信息

Value Health. 2006 Mar-Apr;9(2):123-31. doi: 10.1111/j.1524-4733.2006.00090.x.

Abstract

OBJECTIVE

To demonstrate the application of a Bayesian mixed treatment comparison (MTC) model to synthesize data from clinical trials to inform decisions based on all relevant evidence.

METHODS

The value of an MTC model is demonstrated using a probabilistic decision-analytic model developed to assess the cost-effectiveness of second-line chemotherapy in ovarian cancer. Three clinical trials were found that each made a different pair-wise comparison of three treatments of interest in the overall patient population. As no common comparator existed between the three trials, an MTC model was used to assess the combined weight of evidence on survival from all three trials simultaneously. This analysis was compared to an alternative approach that combined two of the trials to make the same comparison of all three treatments using a common comparator, and an informal approach that did not synthesize the available evidence.

RESULTS

By including all three trials using an MTC model, the credible intervals around estimated overall survival were reduced compared with making the same comparison using only two trials and a common comparator. Nevertheless, the survival estimates from the MTC model result in greater uncertainty around the optimal treatment strategy at a cost-effectiveness threshold of 30,000 pounds per quality-adjusted life-year.

CONCLUSIONS

MTC models can be used to combine more data than would typically be included in a traditional meta-analysis that relies on a common comparator. They can formally quantify the combined uncertainty from all available evidence, and can be conducted using the same analytical approaches as standard meta-analyses.

摘要

目的

展示贝叶斯混合治疗比较(MTC)模型在综合临床试验数据以基于所有相关证据做出决策方面的应用。

方法

通过一个用于评估卵巢癌二线化疗成本效益的概率性决策分析模型来展示MTC模型的价值。发现了三项临床试验,每项试验在总体患者人群中对三种感兴趣的治疗方法进行了不同的两两比较。由于三项试验之间不存在共同对照,因此使用MTC模型同时评估来自所有三项试验的生存证据的综合权重。将该分析与另一种方法进行比较,即结合其中两项试验,使用共同对照对所有三种治疗方法进行相同比较,以及一种未综合现有证据的非正式方法。

结果

通过使用MTC模型纳入所有三项试验,与仅使用两项试验和共同对照进行相同比较相比,估计总生存周围的可信区间缩小了。然而,在每质量调整生命年30,000英镑的成本效益阈值下,MTC模型的生存估计导致围绕最佳治疗策略的不确定性更大。

结论

与依赖共同对照的传统荟萃分析相比,MTC模型可用于综合更多数据。它们可以正式量化所有可用证据的综合不确定性,并且可以使用与标准荟萃分析相同的分析方法进行。

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