首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Bayesian variable selection for multistate Markov models with interval‐censored data in an ecological momentary assessment study of smoking cessation
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Bayesian variable selection for multistate Markov models with interval‐censored data in an ecological momentary assessment study of smoking cessation

机译:贝叶斯瓦族市场的多态马尔可夫模型,采用环境暂时评估戒烟的生态瞬间评估研究

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摘要

Summary The application of sophisticated analytical methods to intensive longitudinal data, collected with ecological momentary assessments (EMA), has helped researchers better understand smoking behaviors after a quit attempt. Unfortunately, the wealth of information captured with EMAs is typically underutilized in practice. Thus, novel methods are needed to extract this information in exploratory research studies. One of the main objectives of intensive longitudinal data analysis is identifying relations between risk factors and outcomes of interest. Our goal is to develop and apply expectation maximization variable selection for Bayesian multistate Markov models with interval‐censored data to generate new insights into the relation between potential risk factors and transitions between smoking states. Through simulation, we demonstrate the effectiveness of our method in identifying associated risk factors and its ability to outperform the LASSO in a special case. Additionally, we use the expectation conditional‐maximization algorithm to simplify estimation, a deterministic annealing variant to reduce the algorithm's dependence on starting values, and Louis's method to estimate unknown parameter uncertainty. We then apply our method to intensive longitudinal data collected with EMA to identify risk factors associated with transitions between smoking states after a quit attempt in a cohort of socioeconomically disadvantaged smokers who were interested in quitting.
机译:发明内容复杂的分析方法在生态瞬间评估(EMA)收集的密集纵向数据中,帮助研究人员在退出尝试后更好地了解吸烟行为。不幸的是,用EMAS捕获的信息通常在实践中未化。因此,需要新的方法来提取探索性研究研究中的这些信息。密集型纵向数据分析的主要目标之一是识别风险因素与兴趣结果之间的关系。我们的目标是为贝叶斯多语土马尔可夫模型进行期望和应用间隔数据的最大化变量选择,以产生新的洞察潜在风险因素与吸烟状态之间的转变之间的关系。通过仿真,我们展示了我们在识别相关危险因素时识别相关危险因素的有效性及其在特殊情况下优于套索的能力。此外,我们使用预期条件最大化算法简化估计,确定算法对启动值的依赖性来减少算法,以及Louis的估计未知参数不确定性的方法。然后,我们将我们的方法应用于与EMA收集的密集纵向数据,以确定与吸烟州之间的过渡有关的风险因素,在戒烟队伍队的群体群体的戒烟者队伍队伍中有兴趣的戒烟者的群体之后。

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