a Wickenstones Ltd , Didcot , UK.
b Augmentium Pharma Consulting Inc. , Toronto , Canada.
J Med Econ. 2019 Jun;22(6):531-544. doi: 10.1080/13696998.2019.1569446. Epub 2019 Jan 30.
Model structure, despite being a key source of uncertainty in economic evaluations, is often not treated as a priority for model development. In oncology, partitioned survival models (PSMs) and Markov models, both types of cohort model, are commonly used, but patient responses to newer immuno-oncology (I-O) agents suggest that more innovative model frameworks should be explored. A discussion of the theoretical pros and cons of cohort level vs patient level simulation (PLS) models provides the background for an illustrative comparison of I-O therapies, namely nivolumab/ipilimumab combination and ipilimumab alone using patient level data from the CheckMate 067 trial in metastatic melanoma. PSM, Markov, and PLS models were compared on the basis of coherence with short-term clinical trial endpoints and long-term cost per QALY outcomes reported. The PSM was based on Kaplan-Meier curves from CheckMate 067 with 3-year data on progression free survival (PFS) and overall survival (OS). The Markov model used time independent transition probabilities based on the average trajectory of PFS and OS over the trial period. The PLS model was developed based on baseline characteristics hypothesized to be associated with disease as well as significant mortality and disease progression risk factors identified through a proportional hazards model. The short-term Markov model outputs matched the 1-3 year clinical trial results approximately as well as the PSMs for OS but not PFS. The fixed (average) cohort PLS results corresponded as well as the PSMs for OS in the combination therapy arm and PFS in the monotherapy arm. Over the lifetime horizon, the PLS produced an additional 5.95 quality adjusted life years (QALYs) associated with combination therapy relative to ipilimumab alone, resulting in an incremental cost-effectiveness ratio (ICER) of £6,474 per QALY, compared with £14,194 for the PSMs which gave an incremental benefit of between 2.2 and 2.4 QALYs. The Markov model was an outlier (∼ £49,000 per QALY in the base case). The 4- and 5-state versions of the PSM cohort model estimated in this study deviate from the standard 3-state approach to better capture I-O response patterns. Markov and PLS approaches, by modeling state transitions explicitly, could be more informative in understanding I-O immune response, the PLS particularly so by reflecting heterogeneity in treatment response. However, both require a number of assumptions to capture the immune response effectively. Better I-O representation with surrogate endpoints in future clinical trials could yield greater model validity across all models.
模型结构尽管是经济评估中的一个关键不确定性来源,但通常未被视为模型开发的优先事项。在肿瘤学中,分区生存模型(PSM)和马尔可夫模型都是常用的队列模型,但新型免疫肿瘤学(I-O)药物的患者反应表明,应探索更具创新性的模型框架。对队列水平与患者水平模拟(PLS)模型的理论优缺点进行讨论,为使用转移性黑色素瘤 CheckMate 067 试验中的患者水平数据对 I-O 疗法(纳武单抗/伊匹单抗联合治疗和伊匹单抗单药治疗)进行说明性比较提供了背景。基于与短期临床试验终点的一致性以及报告的长期每质量调整生命年(QALY)成本,对 PSM、马尔可夫和 PLS 模型进行了比较。PSM 基于 CheckMate 067 的 Kaplan-Meier 曲线,具有 3 年无进展生存期(PFS)和总生存期(OS)数据。马尔可夫模型使用基于试验期间 PFS 和 OS 平均轨迹的时间独立转移概率。PLS 模型是根据假设与疾病相关以及通过比例风险模型确定的显著死亡率和疾病进展风险因素的基线特征开发的。短期马尔可夫模型输出与 PSM 对 OS 的结果匹配程度大致相同,但对 PFS 则不同。固定(平均)队列 PLS 结果与联合治疗臂的 PSM 以及单药治疗臂的 PFS 相匹配。在整个生命周期内,与伊匹单抗单药治疗相比,联合治疗产生了 5.95 个额外的质量调整生命年(QALYs),导致增量成本效益比(ICER)为每 QALY 6474 英镑,而 PSM 则为每 QALY 14194 英镑,增加了 2.2 到 2.4 个 QALYs。马尔可夫模型是一个异常值(基础情况下每 QALY 约为 49000 英镑)。本研究中估计的 PSM 队列模型的 4 状态和 5 状态版本偏离了标准的 3 状态方法,以更好地捕获 I-O 反应模式。马尔可夫和 PLS 方法通过明确建模状态转换,可以更深入地了解 I-O 免疫反应,PLS 尤其如此,因为它反映了治疗反应的异质性。然而,两者都需要进行一些假设以有效地捕捉免疫反应。未来临床试验中使用替代终点可提高所有模型的模型有效性。