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Multistate Markov chain transition models for clustered longitudinal categorical data: Application to a knee pain severity study.

机译:聚类纵向分类数据的多状态马尔可夫链转移模型:在膝痛严重度研究中的应用。

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摘要

In longitudinal biomedical research, outcome data are often collected on a categorical scale from multiple locations of the same individual over time. For example, an important feature of knee osteoarthritis (OA) is that severity of knee pain often fluctuates over time. Identifying risk factors that contribute to the fluctuation of knee pain severity can help elucidating the pathology of the disease hence is of great clinical and epidemiological value. Measurements of knee pain are usually knee-specific. This challenges data analysis since an approach needs to model the longitudinal transitions of the outcome and to account for correlation between a person's two knees at the same time. Here I propose a multistate Markov chain transition model with extensions that account for longitudinal and within-cluster correlations. The model assumes discrete time and allows transitions over time between any two states of pain severity. The model is based on a generalized linear regression framework assuming a multinomial distribution for the outcome. First, marginal model based approaches were proposed. These approaches take advantage of the robust sandwich variance estimator and within-cluster resampling techniques to account for correlation within each cluster. Then, Bayesian random effect model based approaches were employed. Correlations among observations within each cluster are accounted for by including random effects into the model. Both the marginal model based approaches and the random effect models based approaches were evaluated by simulation studies. The models were then used to assess the effect of depression on transitions of knee pain severity in the Osteoarthritis Initiative study. A proportional odds model was further developed to deal with situations where the outcomes are ordinal. The models proposed in this dissertation extend the existing literatures in handling multilevel correlation when estimating effects of risk factors on longitudinal transitions of a categorical outcome. They can be especially helpful for investigation of disease progression or for prognostic purpose.
机译:在纵向生物医学研究中,随着时间的流逝,往往会从同一个人的多个位置以分类规模收集结果数据。例如,膝盖骨关节炎(OA)的一个重要特征是膝盖疼痛的严重程度通常会随时间波动。识别导致膝盖疼痛严重程度波动的危险因素可以帮助阐明疾病的病理,因此具有重要的临床和流行病学价值。膝盖疼痛的测量通常是针对膝盖的。这给数据分析带来了挑战,因为一种方法需要对结果的纵向过渡进行建模并同时考虑一个人的两个膝盖之间的相关性。在这里,我提出了一个多状态马尔可夫链转移模型,该模型具有用于解释纵向和集群内相关性的扩展。该模型假设时间是离散的,并且允许在疼痛严重程度的任何两个状态之间随时间推移进行转换。该模型基于通用线性回归框架,假设结果的多项式分布。首先,提出了基于边际模型的方法。这些方法利用鲁棒的三明治方差估计器和集群内重采样技术来考虑每个集群内的相关性。然后,采用基于贝叶斯随机效应模型的方法。通过在模型中包括随机效应,可以解释每个聚类中观察值之间的相关性。通过仿真研究评估了基于边际模型的方法和基于随机效应模型的方法。然后,在“骨关节炎倡议”研究中,将这些模型用于评估抑郁症对膝关节疼痛严重性转变的影响。进一步开发了比例赔率模型来处理结果为序数的情况。本文提出的模型在估计风险因素对分类结果的纵向转变的影响时扩展了处理多级相关性的现有文献。它们对于研究疾病进展或预后特别有用。

著录项

  • 作者

    Wang, Ke.;

  • 作者单位

    Boston University.;

  • 授予单位 Boston University.;
  • 学科 Biology Biostatistics.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 115 p.
  • 总页数 115
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:41:02

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