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How weight change is modelled in population studies can affect research findings: empirical results from a large-scale cohort study

机译:在人口研究中如何模拟体重变化会影响研究结果:大规模队列研究的经验结果

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Objectives To investigate how results of the association between education and weight change vary when weight change is defined and modelled in different ways. Design Longitudinal cohort study. Participants 60?404 men and women participating in the Social, Environmental and Economic Factors (SEEF) subcomponent of the 45 and Up Study—a population-based cohort study of people aged 45?years or older, residing in New South Wales, Australia. Outcome measures The main exposure was self-reported education, categorised into four groups. The outcome was annual weight change, based on change in self-reported weight between the 45 and Up Study baseline questionnaire and SEEF questionnaire (completed an average of 3.3?years later). Weight change was modelled in four different ways: absolute change (kg) modelled as (1) a continuous variable and (2) a categorical variable (loss, maintenance and gain), and relative (%) change modelled as (3) a continuous variable and (4) a categorical variable. Different cut-points for defining weight-change categories were also tested. Results When weight change was measured categorically, people with higher levels of education (compared with no school certificate) were less likely to lose or to gain weight. When weight change was measured as the average of a continuous measure, a null relationship between education and annual weight change was observed. No material differences in the education and weight-change relationship were found when comparing weight change defined as an absolute (kg) versus a relative (%) measure. Results of the logistic regression were sensitive to different cut-points for defining weight-change categories. Conclusions Using average weight change can obscure important directional relationship information and, where possible, categorical outcome measurements should be included in analyses.
机译:目的研究以不同方式定义和建模体重变化时,教育与体重变化之间的关联结果如何变化。设计纵向队列研究。参加“ 45岁及以上”研究的社会,环境和经济因素(SEEF)子部分的60至404名男女,该研究是居住在澳大利亚新南威尔士州的一项基于人群的队列研究,年龄在45岁以上。成果措施主要暴露于自我报告的教育,分为四组。结果是年度体重变化,这是根据45岁及以上研究的基线问卷和SEEF问卷(平均在3.3年后完成)之间自我报告的体重变化而得出的。体重变化以四种不同的方式建模:绝对变化(kg)建模为(1)连续变量,(2)类别变量(损失,维持和增重),相对(%)建模为(3)连续变量变量和(4)类别变量。还测试了用于定义体重变化类别的不同切入点。结果当对体重变化进行分类测量时,受过较高教育程度(没有学历的人)的体重减轻或增加的可能性较小。当将体重变化作为连续测量的平均值进行测量时,观察到教育与年度体重变化之间的无效关系。比较绝对值(kg)和相对值(%)的体重变化时,在教育和体重变化关系上没有发现实质性差异。逻辑回归的结果对定义体重变化类别的不同切点敏感。结论使用平均体重变化可以掩盖重要的方向关系信息,并且在可能的情况下,应在分析中包括分类结果测量。

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