Kang Minhee, Lagakos Stephen W
Department of Biostatistics, Harvard University School of Public Health, Boston, MA 02115, USA.
Biostatistics. 2007 Apr;8(2):252-64. doi: 10.1093/biostatistics/kxl006. Epub 2006 Jun 1.
Continuous-time, multistate processes can be used to represent a variety of biological processes in the public health sciences; yet the analysis of such processes is complex when they are observed only at a limited number of time points. Inference methods for such panel data have been developed for time homogeneous Markov models, but there has been little research done for other classes of processes. We develop likelihood-based methods for panel data from a semi-Markov process, where transition intensities depend on the duration of time in the current state. The proposed methods account for possible misclassification of states. To illustrate the methods, we investigate a three- and a four-state models in detail and apply the results to model the natural history of oncogenic genital human papillomavirus infections in women.
连续时间多状态过程可用于表示公共卫生科学中的各种生物过程;然而,当仅在有限数量的时间点观察这些过程时,对其进行分析是复杂的。针对时间齐次马尔可夫模型,已开发出此类面板数据的推断方法,但对于其他类别的过程,相关研究较少。我们为来自半马尔可夫过程的面板数据开发了基于似然的方法,其中转移强度取决于当前状态的持续时间。所提出的方法考虑了状态可能的错误分类。为了说明这些方法,我们详细研究了一个三状态和一个四状态模型,并将结果应用于模拟女性致癌性人乳头瘤病毒感染的自然史。