Cook Robert L, Kelso Natalie E, Brumback Babette A, Chen Xinguang
Department of Epidemiology, College of Public Health and Health Professions and College of Medicine, University of Florida, Gainesville, FL, USA.
Curr HIV Res. 2016;14(2):85-92. doi: 10.2174/1570162x13666151029101919.
As persons with HIV are living longer, there is a growing need to investigate factors associated with chronic disease, rate of disease progression and survivorship. Many risk factors for this high-risk population change over time, such as participation in treatment, alcohol consumption and drug abuse. Longitudinal datasets are increasingly available, particularly clinical data that contain multiple observations of health exposures and outcomes over time. Several analytic options are available for assessment of longitudinal data; however, it can be challenging to choose the appropriate analytic method for specific combinations of research questions and types of data. The purpose of this review is to help researchers choose the appropriate methods to analyze longitudinal data, using alcohol consumption as an example of a time-varying exposure variable. When selecting the optimal analytic method, one must consider aspects of exposure (e.g. timing, pattern, and amount) and outcome (fixed or time-varying), while also addressing minimizing bias. In this article, we will describe several analytic approaches for longitudinal data, including developmental trajectory analysis, generalized estimating equations, and mixed effect models. For each analytic strategy, we describe appropriate situations to use the method and provide an example that demonstrates the use of the method. Clinical data related to alcohol consumption and HIV are used to illustrate these methods.
随着艾滋病病毒感染者的寿命延长,对与慢性病、疾病进展速度和生存相关的因素进行调查的需求日益增加。这一高危人群的许多风险因素会随时间变化,例如参与治疗情况、饮酒和药物滥用。纵向数据集越来越多,尤其是包含随着时间推移对健康暴露和结果进行多次观察的临床数据。有几种分析方法可用于评估纵向数据;然而,为特定的研究问题和数据类型组合选择合适的分析方法可能具有挑战性。本综述的目的是帮助研究人员选择合适的方法来分析纵向数据,以饮酒作为随时间变化的暴露变量的示例。选择最佳分析方法时,必须考虑暴露的各个方面(例如时间、模式和数量)以及结果(固定的或随时间变化的),同时还要尽量减少偏差。在本文中,我们将描述几种用于纵向数据的分析方法,包括发育轨迹分析、广义估计方程和混合效应模型。对于每种分析策略,我们描述使用该方法的合适情况,并提供一个演示该方法使用的示例。使用与饮酒和艾滋病相关的临床数据来说明这些方法。