论文标题
功能性主成分分析,内容丰富的观察时间
Functional principal component analysis with informative observation times
论文作者
论文摘要
功能主成分分析已被证明对于揭示纵向结果的变化模式是无价的,该模式是预测和模型构建的重要组成部分。数十年的研究具有用于功能主成分分析的高级方法,通常假设观察时间和纵向结果之间的独立性。然而,这种假设在现实环境中是脆弱的,在现实世界中,观察时间可能与结果相关的原因驱动。我们没有忽略信息性的观察时间过程,而是通过取决于时间变化的预后因素来明确对观察时间进行建模。识别平均值,协方差函数和功能性主成分,通过反向强度加权随身携带。我们建议使用加权惩罚花键进行估计,并为加权估计器建立一致性和收敛速率。仿真研究表明,在观察时间过程与纵向结果过程之间存在相关性的情况下,所提出的估计器比现有的估计量要准确得多。我们进一步研究了使用急性感染和早期疾病研究计划研究的拟议方法的有限样本性能。
Functional principal component analysis has been shown to be invaluable for revealing variation modes of longitudinal outcomes, which serves as important building blocks for forecasting and model building. Decades of research have advanced methods for functional principal component analysis often assuming independence between the observation times and longitudinal outcomes. Yet such assumptions are fragile in real-world settings where observation times may be driven by outcome-related reasons. Rather than ignoring the informative observation time process, we explicitly model the observational times by a counting process dependent on time-varying prognostic factors. Identification of the mean, covariance function, and functional principal components ensues via inverse intensity weighting. We propose using weighted penalized splines for estimation and establish consistency and convergence rates for the weighted estimators. Simulation studies demonstrate that the proposed estimators are substantially more accurate than the existing ones in the presence of a correlation between the observation time process and the longitudinal outcome process. We further examine the finite-sample performance of the proposed method using the Acute Infection and Early Disease Research Program study.