Mary MacKillop Institute for Health Research, Australian Catholic University, 215 Spring St, Melbourne, VIC, Australia.
Melbourne School of Population and Global Health, The University of Melbourne, Melbourne, VIC, 3010, Australia.
Environ Health. 2022 Sep 3;21(1):80. doi: 10.1186/s12940-022-00894-4.
There is a dearth of studies on how neighbourhood environmental attributes relate to the metabolic syndrome (MetS) and profiles of MetS components. We examined the associations of interrelated aspects of the neighbourhood environment, including air pollution, with MetS status and profiles of MetS components.
We used socio-demographic and MetS-related data from 3681 urban adults who participated in the 3rd wave of the Australian Diabetes, Obesity and Lifestyle Study. Neighbourhood environmental attributes included area socio-economic status (SES), population density, street intersection density, non-commercial land use mix, percentages of commercial land, parkland and blue space. Annual average concentrations of NO and PM were estimated using satellite-based land-use regression models. Latent class analysis (LCA) identified homogenous groups (latent classes) of participants based on MetS components data. Participants were then classified into five metabolic profiles according to their MetS-components latent class and MetS status. Generalised additive mixed models were used to estimate relationships of environmental attributes with MetS status and metabolic profiles.
LCA yielded three latent classes, one including only participants without MetS ("Lower probability of MetS components" profile). The other two classes/profiles, consisting of participants with and without MetS, were "Medium-to-high probability of high fasting blood glucose, waist circumference and blood pressure" and "Higher probability of MetS components". Area SES was the only significant predictor of MetS status: participants from high SES areas were less likely to have MetS. Area SES, percentage of commercial land and NO were associated with the odds of membership to healthier metabolic profiles without MetS, while annual average concentration of PM was associated with unhealthier metabolic profiles with MetS.
This study supports the utility of operationalising MetS as a combination of latent classes of MetS components and MetS status in studies of environmental correlates. Higher socio-economic advantage, good access to commercial services and low air pollution levels appear to independently contribute to different facets of metabolic health. Future research needs to consider conducting longitudinal studies using fine-grained environmental measures that more accurately characterise the neighbourhood environment in relation to behaviours or other mechanisms related to MetS and its components.
关于邻里环境属性与代谢综合征(MetS)及其成分谱之间的关系,研究甚少。我们研究了邻里环境的相关方面,包括空气污染,与 MetS 状况及其成分谱之间的关联。
我们使用了 3681 名参与澳大利亚糖尿病、肥胖和生活方式研究第 3 波的城市成年人的社会人口统计学和 MetS 相关数据。邻里环境属性包括区域社会经济地位(SES)、人口密度、街道交叉口密度、非商业用地混合度、商业用地比例、公园和蓝色空间。使用基于卫星的土地利用回归模型估算了年平均 NO 和 PM 浓度。潜在类别分析(LCA)根据 MetS 成分数据确定参与者同质组(潜在类别)。然后,根据他们的 MetS 成分潜在类别和 MetS 状况,将参与者分为五类代谢谱。广义加性混合模型用于估计环境属性与 MetS 状况和代谢谱的关系。
LCA 产生了三个潜在类别,一个类别仅包括没有 MetS 的参与者(“MetS 成分发生可能性较低”谱)。其他两个类别/谱包括有和没有 MetS 的参与者,分别为“高空腹血糖、腰围和血压发生可能性中等至高”和“MetS 成分发生可能性较高”。区域 SES 是 MetS 状况的唯一显著预测因子:来自高 SES 区域的参与者发生 MetS 的可能性较低。区域 SES、商业用地比例和 NO 与无 MetS 的更健康代谢谱的成员资格几率相关,而 PM 的年平均浓度与有 MetS 的不健康代谢谱相关。
本研究支持将 MetS 作为 MetS 成分的潜在类别和 MetS 状态的组合在环境相关性研究中的实用性。更高的社会经济优势、良好的商业服务获取途径和较低的空气污染水平似乎独立地促进了代谢健康的不同方面。未来的研究需要考虑使用更准确地描述与 MetS 及其成分相关的行为或其他机制的邻里环境的细粒度环境测量值进行纵向研究。