论文标题
混合生存曲线:一种新的外推方法,用于卫生技术评估临床试验的事件结果
Blended Survival Curves: A New Approach to Extrapolation for Time-to-Event Outcomes from Clinical Trial in Health Technology Assessment
论文作者
论文摘要
由于随机对照试验(RCT)的持续时间限制,背景生存外推对于量化与新干预相关的寿命生存益处至关重要。当前的外推方法通常假定试验中观察到的治疗效果可能无限期地继续,这是不现实的,可能对资源分配的决策产生巨大影响。目的,我们引入了一种新的方法,作为减轻临床试验中大量审查数据进行生存外推的问题的可能解决方案。方法的主要思想是将灵活模型(例如Cox半参数)混合,以便拟合观察到的数据和一个参数模型编码对基本长期生存的预期行为的假设。两者将“混合”成单个生存曲线,该曲线与观察到的时间范围内与Cox模型相同,并根据权重函数在外推期间逐渐接近参数模型。重量函数调节了两条生存曲线混合的方式,从而确定了内部和外部来源如何促进估计的生存时间。结果,利妥昔单抗的4年随访RCT与氟达拉滨和环磷酰胺诉氟达拉滨和环磷酰胺相结合,用于一线治疗慢性淋巴细胞性白血病的一线治疗。结论从未出现的试验数据长期推断可能会导致具有各种建模假设的估计明显不同。混合方法提供了足够的灵活性,可以考虑各种合理的方案以及包含真正的外部信息,例如关于硬数据或专家意见。可以仔细检查内部和外部有效性。
Background Survival extrapolation is essential in the cost-effectiveness analysis to quantify the lifetime survival benefit associated with a new intervention, due to the restricted duration of randomized controlled trials (RCTs). Current approaches of extrapolation often assume that the treatment effect observed in the trial can continue indefinitely, which is unrealistic and may have a huge impact on decisions for resource allocation. Objective We introduce a novel methodology as a possible solution to alleviate the problem of performing survival extrapolation with heavily censored data from clinical trials. Method The main idea is to mix a flexible model (e.g., Cox semi-parametric) to fit as well as possible the observed data and a parametric model encoding assumptions on the expected behaviour of underlying long-term survival. The two are "blended" into a single survival curve that is identical with the Cox model over the range of observed times and gradually approaching the parametric model over the extrapolation period based on a weight function. The weight function regulates the way two survival curves are blended, determining how the internal and external sources contribute to the estimated survival over time. Results A 4-year follow-up RCT of rituximab in combination with fludarabine and cyclophosphamide v. fludarabine and cyclophosphamide alone for the first-line treatment of chronic lymphocytic leukemia is used to illustrate the method. Conclusion Long-term extrapolation from immature trial data may lead to significantly different estimates with various modelling assumptions. The blending approach provides sufficient flexibility, allowing a wide range of plausible scenarios to be considered as well as the inclusion of genuine external information, based e.g. on hard data or expert opinion. Both internal and external validity can be carefully examined.