Müller Hans-Georg, Zhang Ying
Department of Statistics, University of California, Davis, 95616, USA.
Biometrics. 2005 Dec;61(4):1064-75. doi: 10.1111/j.1541-0420.2005.00378.x.
A recurring objective in longitudinal studies on aging and longevity has been the investigation of the relationship between age-at-death and current values of a longitudinal covariate trajectory that quantifies reproductive or other behavioral activity. We propose a novel technique for predicting age-at-death distributions for situations where an entire covariate history is included in the predictor. The predictor trajectories up to current time are represented by time-varying functional principal component scores, which are continuously updated as time progresses and are considered to be time-varying predictor variables that are entered into a class of time-varying functional regression models that we propose. We demonstrate for biodemographic data how these methods can be applied to obtain predictions for age-at-death and estimates of remaining lifetime distributions, including estimates of quantiles and of prediction intervals for remaining lifetime. Estimates and predictions are obtained for individual subjects, based on their observed behavioral trajectories, and include a dimension-reduction step that is implemented by projecting on a single index. The proposed techniques are illustrated with data on longitudinal daily egg-laying for female medflies, predicting remaining lifetime and age-at-death distributions from individual event histories observed up to current time.
在关于衰老和长寿的纵向研究中,一个反复出现的目标是研究死亡年龄与纵向协变量轨迹当前值之间的关系,该轨迹量化了生殖或其他行为活动。我们提出了一种新技术,用于预测在预测变量中包含整个协变量历史的情况下的死亡年龄分布。直到当前时间的预测变量轨迹由随时间变化的函数主成分得分表示,随着时间的推移,这些得分会不断更新,并被视为进入我们提出的一类随时间变化的函数回归模型的随时间变化的预测变量。我们针对生物人口统计学数据展示了如何应用这些方法来获得死亡年龄的预测以及剩余寿命分布的估计,包括分位数估计和剩余寿命的预测区间估计。基于个体观察到的行为轨迹,为个体受试者获得估计和预测,并且包括通过投影到单个指标上实现的降维步骤。我们用雌性地中海实蝇纵向每日产卵的数据说明了所提出的技术,从截至当前时间观察到的个体事件历史预测剩余寿命和死亡年龄分布。