School of Sports Journalism and Foreign Studies, Shanghai University of Sport, Shanghai, China.
Department of Preventive Medicine, Keck School of Medicine, University of Southern California, Los Angeles, CA, USA.
Obes Rev. 2018 Jul;19(7):976-988. doi: 10.1111/obr.12684. Epub 2018 Apr 20.
People's health behaviours and outcomes can be profoundly shaped by the social networks they are embedded in. Based on graph theory, social network analysis is a research framework for the study of social interactions and the structure of these interactions among social actors. A literature search was conducted in PubMed and Web of Science for articles published until August 2017 that applied social network analysis to examine obesity and social networks. Eight studies (three cross-sectional and five longitudinal) conducted in the US (n = 6) and Australia (n = 2) were identified. Seven focused on adolescents' and one on adults' friendship networks. They examined structural features of these networks that were associated with obesity, including degree distribution, popularity, modularity maximization and K-clique percolation. All three cross-sectional studies that used exponential random graph models found individuals with similar body weight status and/or weight-related behaviour were more likely to share a network tie than individuals with dissimilar traits. Three longitudinal studies using stochastic actor-based models found friendship network characteristics influenced change in individuals' body weight status and/or weight-related behaviour over time. Future research should focus on diverse populations and types of social networks and identifying the mechanisms by which social networks influence obesity to inform network-based interventions.
人们的健康行为和结果可能会受到他们所处社交网络的深刻影响。基于图论,社会网络分析是一种研究社会互动以及社会行为者之间这些互动结构的研究框架。我们在 PubMed 和 Web of Science 中进行了文献检索,以查找截至 2017 年 8 月应用社会网络分析来研究肥胖和社交网络的文章。确定了 8 项研究(3 项横断面研究和 5 项纵向研究),这些研究在美国(n=6)和澳大利亚(n=2)进行。其中 7 项研究集中于青少年的友谊网络,1 项研究集中于成年人的友谊网络。这些研究考察了与肥胖相关的这些网络的结构特征,包括度分布、知名度、最大化模块化和 K 团块渗流。使用指数随机图模型的 3 项横断面研究均发现,体重状况和/或与体重相关的行为相似的个体比特征不同的个体更有可能共享网络联系。使用基于随机主体的模型的 3 项纵向研究发现,友谊网络特征会影响个体的体重状况和/或与体重相关的行为随时间的变化。未来的研究应关注不同人群和不同类型的社交网络,并确定社交网络影响肥胖的机制,以为基于网络的干预措施提供信息。