Ho Hung Chak, Lau Kevin Ka-Lun, Yu Ruby, Wang Dan, Woo Jean, Kwok Timothy Chi Yui, Ng Edward
Institute of Environment, Energy and Sustainability, The Chinese University of Hong Kong, Hong Kong, China.
Department of Land Surveying and Geo-Informatics, Hong Kong Polytechnic University, Hong Kong, China.
Int J Environ Res Public Health. 2017 Aug 31;14(9):994. doi: 10.3390/ijerph14090994.
Previous studies found a relationship between geriatric depression and social deprivation. However, most studies did not include environmental factors in the statistical models, introducing a bias to estimate geriatric depression risk because the urban environment was found to have significant associations with mental health. We developed a cross-sectional study with a binomial logistic regression to examine the geriatric depression risk of a high-density city based on five social vulnerability factors and four environmental measures. We constructed a socio-environmental vulnerability index by including the significant variables to map the geriatric depression risk in Hong Kong, a high-density city characterized by compact urban environment and high-rise buildings. Crude and adjusted odds ratios (ORs) of the variables were significantly different, indicating that both social and environmental variables should be included as confounding factors. For the comprehensive model controlled by all confounding factors, older adults who were of lower education had the highest geriatric depression risks (OR: 1.60 (1.21, 2.12)). Higher percentage of residential area and greater variation in building height within the neighborhood also contributed to geriatric depression risk in Hong Kong, while average building height had negative association with geriatric depression risk. In addition, the socio-environmental vulnerability index showed that higher scores were associated with higher geriatric depression risk at neighborhood scale. The results of mapping and cross-section model suggested that geriatric depression risk was associated with a compact living environment with low socio-economic conditions in historical urban areas in Hong Kong. In conclusion, our study found a significant difference in geriatric depression risk between unadjusted and adjusted models, suggesting the importance of including environmental factors in estimating geriatric depression risk. We also developed a framework to map geriatric depression risk across a city, which can be used for identifying neighborhoods with higher risk for public health surveillance and sustainable urban planning.
以往的研究发现老年抑郁症与社会剥夺之间存在关联。然而,大多数研究在统计模型中未纳入环境因素,这在估计老年抑郁症风险时引入了偏差,因为城市环境被发现与心理健康存在显著关联。我们开展了一项横断面研究,并采用二项逻辑回归分析,基于五个社会脆弱性因素和四项环境指标来考察一个高密度城市的老年抑郁症风险。我们通过纳入显著变量构建了一个社会环境脆弱性指数,以描绘香港这个以紧凑城市环境和高层建筑为特征的高密度城市中的老年抑郁症风险。变量的粗比值比(OR)和调整后的比值比存在显著差异,这表明社会和环境变量都应作为混杂因素纳入分析。对于由所有混杂因素控制的综合模型,受教育程度较低的老年人患老年抑郁症的风险最高(OR:1.60(1.21,2.12))。住宅区比例较高以及邻里内建筑高度差异较大也会增加香港老年人患抑郁症的风险,而平均建筑高度与老年抑郁症风险呈负相关。此外,社会环境脆弱性指数表明,在邻里尺度上得分越高,老年抑郁症风险越高。映射分析和横断面模型的结果表明,香港历史城区中,老年抑郁症风险与社会经济条件较差的紧凑居住环境有关。总之,我们的研究发现未调整模型和调整后模型在老年抑郁症风险方面存在显著差异,这表明在估计老年抑郁症风险时纳入环境因素的重要性。我们还开发了一个框架来描绘整个城市的老年抑郁症风险,该框架可用于识别公共卫生监测和可持续城市规划中风险较高的社区。