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Evaluation of survival extrapolation in immuno-oncology using multiple pre-planned data cuts: learnings to aid in model selection

机译:使用多个预先预先预先预先计划的数据削减评估免疫肿瘤中的生存外推:有助于模型选择的学习

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Due to limited duration of follow up in clinical trials of cancer treatments, estimates of lifetime survival benefits are typically derived using statistical extrapolation methods. To justify the method used, a range of approaches have been proposed including statistical goodness-of-fit tests and comparing estimates against a previous data cut (i.e. interim data collected). In this study, we extend these approaches by presenting a range of extrapolations fitted to four pre-planned data cuts from the JAVELIN Merkel 200 (JM200) trial. By comparing different estimates of survival and goodness-of-fit as JM200 data mature, we undertook an iterative process of fitting and re-fitting survival models to retrospectively identify early indications of likely long-term survival. Standard and spline-based parametric models were fitted to overall survival data from each JM200 data cut. Goodness-of-fit was determined using an assessment of the estimated hazard function, information theory-based methods and objective comparisons of estimation accuracy. Best-fitting extrapolations were compared to establish which one provided the most accurate estimation, and how statistical goodness-of-fit differed. Spline-based models provided the closest fit to the final JM200 data cut, though all extrapolation methods based on the earliest data cut underestimated the ‘true’ long-term survival (difference in restricted mean survival time [RMST] at 36?months: ??1.1 to ??0.5?months). Goodness-of-fit scores illustrated that an increasingly flexible model was favored as data matured. Given an early data cut, a more flexible model better aligned with clinical expectations could be reasonably justified using a range of metrics, including RMST and goodness-of-fit scores (which were typically within a 2-point range of the statistically ‘best-fitting’ model). Survival estimates from the spline-based models are more aligned with clinical expectation and provided a better fit to the JM200 data, despite not exhibiting the definitively ‘best’ statistical goodness-of-fit. Longer-term data are required to further validate extrapolations, though this study illustrates the importance of clinical plausibility when selecting the most appropriate model. In addition, hazard-based plots and goodness-of-fit tests from multiple data cuts present useful approaches to identify when a more flexible model may be advantageous. JAVELIN Merkel 200 was registered with ClinicalTrials.gov as NCT02155647 on June 4, 2014.
机译:由于癌症治疗的临床试验中的有限持续后,通常使用统计外推方法来衍生寿命存活益处的估计。为了证明所使用的方法,已经提出了一系列方法,包括统计拟合良好测试,并将估计与先前的数据切割(即临时数据收集)进行比较。在这项研究中,我们通过呈现来自Javelin Merkel 200(JM200)试验的四个预先计划的数据切割的一系列推断来延长这些方法。通过将生存和良好良好的不同估计与JM200数据成熟进行比较,我们进行了迭代过程,拟合和重新拟合生存模型,以回顾最早的早期生存的早期迹象。基于标准和条形的参数模型从每个JM200数据切割到总生存数据。使用估计的危险函数,信息理论的方法和估计准确性的客观比较来确定健康的健康。比较最佳推销,以确定提供最准确的估计,以及如何统计纯净的拟合差异。基于样条的模型提供了最接近的最终JM200数据切割的模型,尽管所有的外推方法都基于最早的数据切割,但在最早的数据切割下低估了“真实”的长期存活(限制平均存活时间[RMST]差异为36个月:? ?1.1至?? 0.5?月份)。拟合良好分数说明了越来越灵活的模型是有利于成熟的数据。鉴于早期数据切割,使用一系列指标可以合理地对准临床预期的更灵活的模型,包括RMST和拟合良好分数(通常在统计上最佳的2点范围内 - 拟合'模型)。基于样条型模型的生存估计与临床期望更调整,并为JM200数据提供了更好的拟合,尽管没有表现出明确的“最佳”统计的适合性。虽然本研究说明了在选择最合适的模型时说明了临床合理性的重要性,所需的长期数据需要进一步验证外推。此外,从多个数据切割的危险的基于绘制的图谱和拟合的良好测试存在有用的方法,以确定更灵活的模型可能是有利的。 Javelin Merkel 200在2014年6月4日为NCT02155647注册了ClinciniticTrials.gov。

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