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A joint analysis of quality of life and survival using a random effect selection model.

机译:使用随机效应选择模型对生活质量和生存质量进行联合分析。

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In studies of patients with advanced disease, longitudinal quality of life data may be truncated as a result of early death. Since survival and quality of life are likely to be related, modelling of the quality of life response needs to account for these different survival patterns. Here we discuss the application of a random effect selection model, in the form of a trivariate Normal model for the joint analysis of quality of life response (intercept and slope) and log survival time. Under certain assumptions this can give an unbiased description of the quality of life responses and valid inferences comparing treatment strategies in a clinical trial. It also indicates how quality of life and survival are related, by estimating the expected quality of life responses conditional on different survival times. Model parameters can be estimated using a restricted iterative generalized least-squares (RIGLS) procedure within standard software, extended to handle censoring of survival outcome using an EM algorithm. The model is applied to a physical quality of life score and survival data from a trial of treatment for patients with colorectal hepatic metastases. Survival differed between the treatment groups, and quality of life repsonse tended to be worse, both in initial level and change over time, for those patients who died earlier. The parameter estimates obtained agreed well with those from analysing the extended trial data set with complete survival information. Residual diagnostics used to check the necessary underlying assumptions of the model are exemplified. We conclude that such models can give an informative description of longitudinal responses when these are truncated by differential survival patterns.
机译:在对晚期疾病患者的研究中,由于早期死亡,纵向生活质量数据可能会被截断。由于生存与生活质量可能相关,因此对生活质量反应的建模需要考虑这些不同的生存模式。在这里,我们以三变量正态模型的形式讨论随机效应选择模型的应用,以共同分析生活质量(截距和斜率)和对数生存时间。在某些假设下,这可以对生活质量做出公正的描述,并在临床试验中比较治疗策略的有效推论。通过估计以不同生存时间为条件的预期生活质量响应,它还指示了生活质量与生存之间的关系。可以使用标准软件中的受限迭代广义最小二乘(RIGLS)程序来估计模型参数,该程序可以扩展为使用EM算法处理生存结果的审查。该模型适用于大肠肝转移患者治疗试验的物理生活质量评分和生存数据。治疗组之间的生存率不同,对于那些较早死亡的患者,无论是在初始水平还是随着时间的推移,其生活质量趋于恶化。获得的参数估计值与通过分析具有完整生存信息的扩展试验数据集获得的参数估计值非常吻合。举例说明了用于检查模型必要的基本假设的残留诊断。我们得出的结论是,当这些模型被不同的生存模式所截断时,它们可以对纵向响应提供有益的描述。

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