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首页> 外文期刊>BMC Medical Research Methodology >Assessing the effect of a partly unobserved, exogenous, binary time-dependent covariate on survival probabilities using generalised pseudo-values
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Assessing the effect of a partly unobserved, exogenous, binary time-dependent covariate on survival probabilities using generalised pseudo-values

机译:使用广义伪值评估部分未观察到的,外生的,二进制时间相关协变量对生存概率的影响

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摘要

Investigating the impact of a time-dependent intervention on the probability of long-term survival is statistically challenging. A typical example is stem-cell transplantation performed after successful donor identification from registered donors. Here, a suggested simple analysis based on the exogenous donor availability status according to registered donors would allow the estimation and comparison of survival probabilities. As donor search is usually ceased after a patient’s event, donor availability status is incompletely observed, so that this simple comparison is not possible and the waiting time to donor identification needs to be addressed in the analysis to avoid bias. It is methodologically unclear, how to directly address cumulative long-term treatment effects without relying on proportional hazards while avoiding waiting time bias. The pseudo-value regression technique is able to handle the first two issues; a novel generalisation of this technique also avoids waiting time bias. Inverse-probability-of-censoring weighting is used to account for the partly unobserved exogenous covariate donor availability. Simulation studies demonstrate unbiasedness and satisfying coverage probabilities of the new method. A real data example demonstrates that study results based on generalised pseudo-values have a clear medical interpretation which supports the clinical decision making process. The proposed generalisation of the pseudo-value regression technique enables to compare survival probabilities between two independent groups where group membership becomes known over time and remains partly unknown. Hence, cumulative long-term treatment effects are directly addressed without relying on proportional hazards while avoiding waiting time bias.
机译:调查时间依赖性干预对长期生存概率的影响在统计学上具有挑战性。一个典型的例子是从注册的供体成功鉴定出供体后进行的干细胞移植。在这里,根据已注册的捐赠者,根据外生捐赠者可利用状态进行的建议简单分析,将可以估计和比较生存概率。由于通常在患者发生事件后停止进行捐献者​​搜索,因此无法完全观察到捐献者的可用状态,因此无法进行这种简单的比较,并且在分析中需要解决等待捐献者识别的时间,以免产生偏差。在方法上尚不清楚,如何直接解决累积的长期治疗效果而不依赖比例风险,同时避免等待时间偏差。伪值回归技术能够处理前两个问题。该技术的新颖概括也避免了等待时间偏差。审查的逆概率加权用于说明部分未观察到的外源协变量供体的可用性。仿真研究证明了该新方法的无偏性和令人满意的覆盖概率。一个真实的数据示例表明,基于广义伪值的研究结果具有清晰的医学解释,可支持临床决策过程。拟定的伪值回归技术的一般化使得可以比较两个独立组之间的生存概率,其中随着时间的推移,组成员身份变得已知,而部分未知。因此,可以直接解决累积的长期治疗效果,而无需依赖比例风险,同时避免等待时间偏差。

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