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Continuous Time Markov Models for Binary Longitudinal Data

机译:二进制纵向数据的连续时间马尔可夫模型

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摘要

Longitudinal data usually consist of a number of short time series. A group of subjects or groups of subjects are followed over time and observations are often taken at unequally spaced time points, and may be at different times for different subjects. When the errors and random effects are Gaussian, the likelihood of these unbalanced linear mixed models can be directly calculated, and nonlinear optimization used to obtain maximum likelihood estimates of the fixed regression coefficients and parameters in the variance components. For binary longitudinal data, a two state, non-homogeneous continuous time Markov process approach is used to model serial correlation within subjects. Formulating the model as a continuous time Markov process allows the observations to be equally or unequally spaced. Fixed and time varying covariates can be included in the model, and the continuous time model allows the estimation of the odds ratio for an exposure variable based on the steady state distribution. Exact likelihoods can be calculated. The initial probability distribution on the first observation on each subject is estimated using logistic regression that can involve covariates, and this estimation is embedded in the overall estimation. These models are applied to an intervention study designed to reduce children's sun exposure.
机译:纵向数据通常由许多短时间序列组成。随着时间的推移会跟踪一组主题或一组主题,并且观察通常是在不等间隔的时间点进行的,对于不同的主题可能会在不同的时间进行。当误差和随机效应是高斯分布时,可以直接计算这些不平衡线性混合模型的可能性,并使用非线性优化来获得方差分量中固定回归系数和参数的最大似然估计。对于二进制纵向数据,使用两种状态的非均匀连续时间马尔可夫过程方法对受试者内的序列相关性进行建模。将模型表示为连续时间的马尔可夫过程,可以使观察值相等或不相等。固定和随时间变化的协变量可以包括在模型中,而连续时间模型允许基于稳态分布来估计曝光变量的优势比。可以计算出确切的可能性。使用可能涉及协变量的逻辑回归来估计每个对象的第一次观察的初始概率分布,并且此估计将嵌入到整体估计中。这些模型应用于旨在减少儿童日晒的干预研究。

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