Gorbach Tetiana, Carpenter James R, Frost Chris, Josefsson Maria, Nicholas Jennifer, Nyberg Lars
Department of Statistics, Umeå School of Business, Economics and Statistics, Umeå University, Umeå, Sweden.
London School of Hygiene and Tropical Medicine, London, UK.
Stat Med. 2025 Mar 15;44(6):e70040. doi: 10.1002/sim.70040.
Motivated by the Swedish Betula study, we consider the joint modeling of longitudinal memory assessments and the hazard of dementia. In the Betula data, the time-to-dementia onset or its absence is available for all participants, while some memory measurements are missing. In longitudinal studies of aging, one cannot rule out the possibility of dropout due to health issues resulting in missing not at random longitudinal measurements. We, therefore, propose a pattern-mixture sensitivity analysis for missing not-at-random data in the joint modeling framework. The sensitivity analysis is implemented via multiple imputation as follows: (i) multiply impute missing not at random longitudinal measurements under a set of plausible pattern-mixture imputation models that allow for acceleration of memory decline after dropout, (ii) fit the joint model to each imputed longitudinal memory and time-to-dementia dataset, and (iii) combine the results of step (ii). Our work illustrates that sensitivity analyses via multiple imputations are an accessible, pragmatic method to evaluate the consequences of missing not at-random data on inference and prediction. This flexible approach can accommodate a range of models for the longitudinal and event-time processes. In particular, the pattern-mixture modeling approach provides an accessible way to frame plausible missing not at random assumptions for different missing data patterns. Applying our approach to the Betula study shows that worse memory levels and steeper memory decline were associated with a higher risk of dementia for all considered scenarios.
受瑞典桦树研究的启发,我们考虑对纵向记忆评估和痴呆症风险进行联合建模。在桦树研究数据中,所有参与者都有痴呆症发病时间或未发病的信息,而一些记忆测量数据缺失。在衰老的纵向研究中,由于健康问题导致纵向测量数据非随机缺失而出现失访的可能性无法排除。因此,我们针对联合建模框架中的非随机缺失数据提出了一种模式混合敏感性分析方法。敏感性分析通过多重填补实现如下:(i) 在一组合理的模式混合填补模型下对非随机缺失的纵向测量数据进行多次填补,这些模型考虑了失访后记忆衰退加速的情况;(ii) 将联合模型应用于每个填补后的纵向记忆和痴呆症发病时间数据集;(iii) 合并步骤 (ii) 的结果。我们的工作表明,通过多重填补进行敏感性分析是一种易于理解且实用的方法,可用于评估非随机缺失数据对推断和预测的影响。这种灵活的方法可以适应一系列用于纵向和事件时间过程的模型。特别是,模式混合建模方法为针对不同缺失数据模式构建合理的非随机缺失假设提供了一种易于理解的方式。将我们的方法应用于桦树研究表明,在所有考虑的情况下,较差的记忆水平和更快的记忆衰退与更高的痴呆症风险相关。