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Fitting bivariate multilevel models to assess long-term changes in body mass index and cigarette smoking

机译:拟合双变量多水平模型以评估体重指数和吸烟的长期变化

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摘要

Using data from the National Health interview Survey from 1997 to 2006, we present a multilevel analysis of change in body mass index (BMI) and number of cigarettes smoked per day in the USA. Smoking and obesity are the leading causes of preventable mortality and morbidity in the USA and most parts of the developed world. A two-stage bivariate model of changes in obesity and number of cigarette smoked per day is proposed. At the within subject stage, an individual's BMI status and the number of cigarette smoked per day are jointly modeled as a function of an individual growth trajectory plus a random error. At the between-subject stage, the parameters of the individual growth trajectories are allowed to vary as a function of differences between subjects with respect to demographic and behavioral characteristics and with respect to the four regions of the USA (Northeast, West, South and North central). Our two-stage modeling techniques are more informative than standard regression because they characterize both group-level (nomothetic) and individual-level (idiographic) effects, yielding a more complete understanding of the phenomena under study.%Department of Biostatistics, Graduate School of Public Health, University of Pittsburgh, Pittsburgh, PA 15261, USA;Department of Behavioral/Community Health Science, Graduate School of Public Health,University of Pittsburgh, Pittsburgh, PA 15262, USA;Department of Biostatistics, Graduate School of Public Health, University of Pittsburgh, Pittsburgh, PA 15261, USA;
机译:使用1997年至2006年美国国家卫生调查的数据,我们对美国的体重指数(BMI)和每天吸烟量进行了多级分析。在美国和大多数发达世界中,吸烟和肥胖是可预防的死亡率和发病率的主要原因。提出了肥胖和每天吸烟量变化的两阶段双变量模型。在受试者内部阶段,将个人的BMI状况和每天抽烟的数量联合建模为个人成长轨迹和随机误差的函数。在受试者间阶段,个体成长轨迹的参数可以根据受试者之间的人口统计学和行为特征以及美国四个地区(东北,西部,南部和北部)的差异而变化中央)。我们的两阶段建模技术比标准回归提供更多信息,因为它们可以同时描述群体水平(行为)和个人水平(个性)的影响,从而对正在研究的现象有更全面的了解。宾夕法尼亚州匹兹堡大学公共卫生学院,宾夕法尼亚州15261;匹兹堡大学公共卫生研究生院行为/社区卫生科学系,宾夕法尼亚州宾夕法尼亚州15262;美国公共卫生研究生院生物统计学系美国宾夕法尼亚州匹兹堡,匹兹堡,美国15261;

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