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Causal inference for long-term survival in randomised trials with treatment switching: Should re-censoring be applied when estimating counterfactual survival times?

机译:随机试验中长期存活的因果推断与治疗切换:应在估算反事实存活时间时重新审查吗?

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Treatment switching often has a crucial impact on estimates of effectiveness and cost-effectiveness of new oncology treatments. Rank preserving structural failure time models (RPSFTM) and two-stage estimation (TSE) methods estimate 'counterfactual' (i.e. had there been no switching) survival times and incorporate re-censoring to guard against informative censoring in the counterfactual dataset. However, re-censoring causes a loss of longer term survival information which is problematic when estimates of long-term survival effects are required, as is often the case for health technology assessment decision making. We present a simulation study designed to investigate applications of the RPSFTM and TSE with and without re-censoring, to determine whether re-censoring should always be recommended within adjustment analyses. We investigate a context where switching is from the control group onto the experimental treatment in scenarios with varying switch proportions, treatment effect sizes, treatment effect changes over time, survival function shapes, disease severity and switcher prognosis. Methods were assessed according to their estimation of control group restricted mean survival that would be observed in the absence of switching, up to the end of trial follow-up. We found that analyses which re-censored usually produced negative bias (i.e. underestimating control group restricted mean survival and overestimating the treatment effect), whereas analyses that did not re-censor consistently produced positive bias which was often smaller in magnitude than the bias associated with re-censored analyses, particularly when the treatment effect was high and the switching proportion was low. The RPSFTM with re-censoring generally resulted in increased bias compared to the other methods. We believe that analyses should be conducted with and without re-censoring, as this may provide decision-makers with useful information on where the true treatment effect is likely to lie. Inco
机译:治疗切换通常对新肿瘤治疗的有效性和成本效益的估计产生至关重要的影响。排名保存结构故障时间模型(RPSFTM)和两级估计(TSE)方法估计“反事实”(即没有切换)生存时间,并入重新审查以防反事实数据集中的信息审查。然而,重新审查会导致损失长期存活信息,当需要长期存活效应的估计时,这是有问题的,因为卫生技术评估决策的案例通常是案例。我们展示了一个模拟研究,旨在调查RPSFTM和TSE的应用,无需重新审查,以确定是否应在调整分析中始终建议重新审查。我们研究了从对照组切换到具有不同开关比例的情况下的实验处理的上下文,治疗效果大小,治疗效果随时间变化,生存功能形状,疾病严重程度和切换预后。根据其对对照组的估计进行评估方法,限制平均存活,在没有切换的情况下,达到试验后期的结束。我们发现,重新审查的分析通常产生负偏差(即低估对照组受限制的平均存活和高估治疗效果),而未重新审查的分析始终产生的正偏压通常比与相关的偏差更小的正偏压重新审查分析,特别是当治疗效果高并且切换比例低。与其他方法相比,重新审查的RPSFTM通常导致偏差增加。我们认为,应在没有重新审查的情况下进行分析,因为这可以为决策者提供有关真正治疗效果可能撒谎的有用信息的决策者。 inco.

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