Consumer Data Research Centre and School of Geography, University of Leeds, LEEDS, LS2 9JT, UK.
School of Geography and Consumer Data Research Centre, University of Leeds, LEEDS, LS2 9JT, UK.
BMC Public Health. 2022 Feb 18;22(1):349. doi: 10.1186/s12889-022-12650-x.
The number of people living with obesity or who are overweight presents a global challenge, and the development of effective interventions is hampered by a lack of research which takes a joined up, whole system, approach that considers multiple elements of the complex obesity system together. We need to better understand the collective characteristics and behaviours of those who are overweight or have obesity and how these differ from those who maintain a healthy weight.
Using the UK Biobank cohort we develop an obesity classification system using k-means clustering. Variable selection from the UK Biobank cohort is informed by the Foresight obesity system map across key domains (Societal Influences, Individual Psychology, Individual Physiology, Individual Physical Activity, Physical Activity Environment).
Our classification identifies eight groups of people, similar in respect to their exposure to known drivers of obesity: 'Younger, urban hard-pressed', 'Comfortable, fit families', 'Healthy, active and retirees', 'Content, rural and retirees', 'Comfortable professionals', 'Stressed and not in work', 'Deprived with less healthy lifestyles' and 'Active manual workers'. Pen portraits are developed to describe the characteristics of these different groups. Multinomial logistic regression is used to demonstrate that the classification can effectively detect groups of individuals more likely to be living with overweight or obesity. The group identified as 'Comfortable, fit families' are observed to have a higher proportion of healthy weight, while three groups have increased relative risk of being overweight or having obesity: 'Active manual workers', 'Stressed and not in work' and 'Deprived with less healthy lifestyles'.
This paper presents the first study of UK Biobank participants to adopt this obesity system approach to characterising participants. It provides an innovative new approach to better understand the complex drivers of obesity which has the potential to produce meaningful tools for policy makers to better target interventions across the whole system to reduce overweight and obesity.
全球肥胖或超重人口数量呈上升趋势,由于缺乏整体系统方法的研究,有效的干预措施的发展受到阻碍,该方法将肥胖系统的多个要素结合在一起进行考虑。我们需要更好地了解超重或肥胖人群的整体特征和行为,以及这些特征和行为与保持健康体重人群的差异。
本研究使用英国生物库队列,采用 k 均值聚类法开发肥胖分类系统。英国生物库队列的变量选择由肥胖系统地图的关键领域(社会影响、个体心理、个体生理学、个体身体活动、身体活动环境)提供信息。
我们的分类确定了 8 个人群,这些人群在肥胖已知驱动因素的暴露方面相似:“年轻、城市压力大”、“舒适、健康的家庭”、“健康、活跃和退休人员”、“满足、农村和退休人员”、“舒适的专业人员”、“有压力且失业”、“贫困且生活方式不健康”和“活跃的体力劳动者”。本研究还开发了特征描述来描述这些不同人群的特征。多变量逻辑回归表明,该分类可以有效地检测出更容易超重或肥胖的人群。“舒适、健康的家庭”这一人群被观察到具有更高比例的健康体重,而有三个群体超重或肥胖的相对风险增加:“活跃的体力劳动者”、“有压力且失业”和“贫困且生活方式不健康”。
本文首次采用肥胖系统方法对英国生物库参与者进行特征描述。该研究提供了一种新的方法,有助于更好地理解肥胖的复杂驱动因素,有潜力为政策制定者提供有意义的工具,以更好地针对整个系统的干预措施,从而降低超重和肥胖的发生率。