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Longitudinal measurement in health-related surveys. A Bayesian joint growth model for multivariate ordinal responses

机译:与健康有关的调查中的纵向测量。多元序数响应的贝叶斯联合增长模型

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Longitudinal surveys measuring physical or mental health status are a common method to evaluate treatments. Multiple items are administered repeatedly to assess changes in the underlying health status of the patient. Traditional models to analyze the resulting data assume that the characteristics of at least some items are identical over measurement occasions. When this assumption is not met, this can result in ambiguous latent health status estimates. Changes in item characteristics over occasions are allowed in the proposed measurement model, which includes truncated and correlated random effects and a growth model for item parameters. In a joint estimation procedure adopting MCMC methods, both item and latent health status parameters are modeled as longitudinal random effects. Simulation study results show accurate parameter recovery. Data from a randomized clinical trial concerning the treatment of depression by increasing psychological acceptance showed significant item parameter shifts. For some items, the probability of responding in the middle category versus the highest or lowest category increased significantly over time. The resulting latent depression scores decreased more over time for the experimental group than for the control group and the amount of decrease was related to the increase in acceptance level.
机译:测量身体或精神健康状况的纵向调查是评估治疗方法的常用方法。重复管理多个项目以评估患者基本健康状况的变化。用于分析结果数据的传统模型假定,至少某些项目的特征在测量场合是相同的。如果不满足此假设,则可能导致潜在健康状况估算值不明确。建议的测量模型允许项目特征随时间的变化,其中包括截断和相关的随机效应以及项目参数的增长模型。在采用MCMC方法的联合估算程序中,项目和潜在健康状况参数均被建模为纵向随机效应。仿真研究结果表明准确的参数恢复。来自通过增加心理接受度来治疗抑郁症的随机临床试验数据显示,项目参数发生了重大变化。对于某些项目,随着时间的推移,中间类别相对于最高类别或最低类别做出响应的概率显着增加。实验组产生的潜在抑郁评分随着时间的推移比对照组下降更多,下降的幅度与接受水平的提高有关。

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