Department of Biostatistics, Johns Hopkins Bloomberg School of Public Health, Baltimore, MD 21205, USA.
Stat Med. 2012 Apr 30;31(9):855-70. doi: 10.1002/sim.4457. Epub 2012 Jan 13.
Bayesian Poisson log-linear multilevel models scalable to epidemiological studies are proposed to investigate population variability in sleep state transition rates. Hierarchical random effects are used to account for pairings of subjects and repeated measures within those subjects, as comparing diseased with non-diseased subjects while minimizing bias is of importance. Essentially, non-parametric piecewise constant hazards are estimated and smoothed, allowing for time-varying covariates and segment of the night comparisons. The Bayesian Poisson regression is justified through a re-derivation of a classical algebraic likelihood equivalence of Poisson regression with a log(time) offset and survival regression assuming exponentially distributed survival times. Such re-derivation allows synthesis of two methods currently used to analyze sleep transition phenomena: stratified multi-state proportional hazards models and log-linear generalized estimating equations (GEE) models for transition counts. An example data set from the Sleep Heart Health Study is analyzed. Supplementary material includes the analyzed data set as well as the code for a reproducible analysis.
针对睡眠状态转移率的群体变异性,提出了一种可扩展到流行病学研究的贝叶斯泊松对数线性多层模型。分层随机效应用于解释对象配对和这些对象内的重复测量,因为比较患病和非患病对象的同时最小化偏差很重要。本质上,非参数分段常数危害被估计和平滑,允许时变协变量和夜间分段比较。通过对泊松回归的经典代数似然等价性的重新推导,将泊松回归与对数(时间)偏移和生存回归联系起来,假设生存时间呈指数分布,从而证明了贝叶斯泊松回归的合理性。这种重新推导允许综合两种目前用于分析睡眠转移现象的方法:分层多状态比例风险模型和用于转移计数的对数线性广义估计方程(GEE)模型。分析了来自睡眠心脏健康研究的一个示例数据集。补充材料包括分析数据集以及可重复分析的代码。