Jones R H, Boadi-Boateng F
Department of Preventive Medicine and Biometrics, School of Medicine, University of Colorado Health Sciences Center, Denver 80262.
Biometrics. 1991 Mar;47(1):161-75.
This paper discusses longitudinal data analysis when each subject is observed at different unequally spaced time points. Observations within subjects are assumed to be either uncorrelated or to have a continuous-time first-order autoregressive structure, possibly with observation error. The random coefficients are assumed to have an arbitrary between-subject covariance matrix. Covariates can be included in the fixed effects part of the model. Exact maximum likelihood estimates of the unknown parameters are computed using the Kalman filter to evaluate the likelihood, which is then maximized with a nonlinear optimization program. An example is presented where a large number of subjects are each observed at a small number of observation times. Hypothesis tests for selecting the best model are carried out using Wald's test on contrasts or likelihood ratio tests based on fitting full and restricted models.
本文讨论了在每个受试者于不同的不等距时间点进行观测时的纵向数据分析。假设受试者内部的观测值要么不相关,要么具有连续时间一阶自回归结构,可能还存在观测误差。假设随机系数具有任意的受试者间协方差矩阵。协变量可包含在模型的固定效应部分。使用卡尔曼滤波器来评估似然性,进而计算未知参数的精确最大似然估计值,然后通过非线性优化程序将其最大化。给出了一个示例,其中大量受试者各自在少量观测时间点进行观测。通过基于拟合完整模型和受限模型的对比的Wald检验或似然比检验来进行选择最佳模型的假设检验。