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Estimation of Survival Probabilities for Use in Cost-effectiveness Analyses: A Comparison of a Multi-state Modeling Survival Analysis Approach with Partitioned Survival and Markov Decision-Analytic Modeling

机译:用于成本效益分析的生存概率估计:多状态建模的生存分析方法与分区生存和马尔可夫决策分析模型的比较

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摘要

Modeling of clinical-effectiveness in a cost-effectiveness analysis typically involves some form of partitioned survival or Markov decision-analytic modeling. The health states progression-free, progression and death and the transitions between them are frequently of interest. With partitioned survival, progression is not modeled directly as a state; instead, time in that state is derived from the difference in area between the overall survival and the progression-free survival curves. With Markov decision-analytic modeling, a priori assumptions are often made with regard to the transitions rather than using the individual patient data directly to model them. This article compares a multi-state modeling survival regression approach to these two common methods. As a case study, we use a trial comparing rituximab in combination with fludarabine and cyclophosphamide v. fludarabine and cyclophosphamide alone for the first-line treatment of chronic lymphocytic leukemia. We calculated mean Life Years and QALYs that involved extrapolation of survival outcomes in the trial. We adapted an existing multi-state modeling approach to incorporate parametric distributions for transition hazards, to allow extrapolation. The comparison showed that, due to the different assumptions used in the different approaches, a discrepancy in results was evident. The partitioned survival and Markov decision-analytic modeling deemed the treatment cost-effective with ICERs of just over £16,000 and £13,000, respectively. However, the results with the multi-state modeling were less conclusive, with an ICER of just over £29,000. This work has illustrated that it is imperative to check whether assumptions are realistic, as different model choices can influence clinical and cost-effectiveness results.
机译:成本效益分析中的临床效益建模通常涉及某种形式的分区生存或马尔可夫决策分析建模。健康状况表明无进展,进展和死亡,并且它们之间的过渡经常引起人们的关注。对于分区生存,进展不会直接建模为状态。取而代之的是,处于该状态的时间是根据总体生存时间与无进展生存曲线之间的面积差异得出的。使用马尔可夫决策分析模型时,通常会针对转换做出先验假设,而不是直接使用单个患者数据对其进行建模。本文将多状态建模生存回归方法与这两种常用方法进行了比较。作为案例研究,我们使用一项比较利妥昔单抗联合氟达拉滨和环磷酰胺诉氟达拉滨与环磷酰胺单独治疗慢性淋巴细胞白血病的一线试验。我们计算了平均寿命年和QALYs,这些均涉及试验中生存结果的推断。我们对现有的多状态建模方法进行了调整,以纳入过渡危险的参数分布,以进行推断。比较表明,由于在不同方法中使用了不同的假设,因此结果差异明显。分区生存率分析和马尔可夫决策分析模型认为,采用ICER的治疗具有成本效益,分别超过16,000英镑和13,000英镑。但是,采用多状态建模的结果尚无定论,ICER仅为29,000英镑。这项工作表明,必须检查假设是否切合实际,因为不同的模型选择会影响临床和成本效益结果。

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