Giordano Vincent, Rigatti Tara, Shaikh Asad
Geography and Cartography, Kent State University, Kent, USA.
Trauma Social Work, Richmond University Medical Center, Staten Island, USA.
Cureus. 2023 Jul 9;15(7):e41607. doi: 10.7759/cureus.41607. eCollection 2023 Jul.
Background Urban cores often present extreme disparities in the distribution of wealth and income. They also vary in health outcomes, especially regarding mental welfare. Dense urban blocks agglomerate many residents of various backgrounds, and extreme differences in income, commerce, and health may lead to variations in depressive disorder outcomes. More research is needed on public health characteristics that may affect depression in dense urban centers. Methods Data on 2020 public health characteristics for Manhattan Island was collected using the Centers for Disease Control's (CDC's) PLACES project. All Manhattan census tracts were used as the spatial observations, resulting in [Formula: see text] observations. A cross-sectional generalized linear regression (GLR) was used to fit a geographically weighted spatial regression (GWR), with tract depression rates as the endogenous variable. Data on the following eight exogenous parameters were incorporated: the percentage without health insurance, the percentage of those who binge drink, the percentage who receive an annual doctor's checkup, the percentage of those who are physically inactive, the percentage of those who experience frequent mental distress, the percentage of those who receive less than 7 hours of sleep each night, the percentage of those who report regular smoking, and the percentage of those who are obese. A Getis-Ord Gi* model was built to locate hot and cold spot clusters for depression incidence and an Anselin Local Moran's I spatial autocorrelation analysis was undertaken to determine neighborhood relationships between tracts. Results Depression hot spot clusters at the 90%-99% confidence interval (CI) were identified in Upper Manhattan and Lower Manhattan using the Getis-Ord Gi* statistic and spatial autocorrelation. Cold spot clusters at the 90%-99% CI were in central Manhattan and the southern edge of Manhattan Island. For the GLR-GWR model, only the lack of health insurance and mental distress variables were significant at the 95% CI, with an adjusted R- of 0.56. Noticeable inversions were observed in the spatial distribution of the exogenous coefficients across Manhattan, with a higher lack of insurance coefficients observed in Upper Manhattan and higher frequent mental distress coefficients in Lower Manhattan. Conclusion The level of depression incidence does spatially track with predictive health and economic parameters across Manhattan Island. Additional research is encouraged on urban policies that may reduce the mental distress burden on Manhattan residents, as well as investigations of the spatial inversion observed in this study between the exogenous parameters.
背景 城市核心区域往往在财富和收入分配上存在极端差异。它们在健康结果方面也存在差异,尤其是在精神健康方面。密集的城市街区聚集了许多不同背景的居民,收入、商业和健康方面的极端差异可能导致抑郁症结果的差异。对于可能影响密集城市中心抑郁症的公共卫生特征,还需要更多的研究。方法 使用疾病控制中心(CDC)的PLACES项目收集了曼哈顿岛2020年公共卫生特征的数据。所有曼哈顿人口普查区被用作空间观测对象,共得到[公式:见正文]个观测值。采用横断面广义线性回归(GLR)来拟合地理加权空间回归(GWR),以人口普查区抑郁症发病率作为内生变量。纳入了以下八个外生参数的数据:无医疗保险的百分比、酗酒的百分比、每年接受医生检查的百分比、缺乏身体活动的百分比、经常经历精神困扰的百分比、每晚睡眠不足7小时的百分比、经常吸烟的百分比以及肥胖的百分比。构建了Getis-Ord Gi模型来定位抑郁症发病率的热点和冷点集群,并进行了Anselin局部莫兰指数空间自相关分析,以确定各人口普查区之间的邻里关系。结果 使用Getis-Ord Gi统计量和空间自相关分析,在上曼哈顿和下曼哈顿确定了90%-99%置信区间(CI)的抑郁症热点集群。90%-99%CI的冷点集群位于曼哈顿中部和曼哈顿岛的南部边缘。对于GLR-GWR模型,只有缺乏医疗保险和精神困扰变量在95%CI时具有显著性,调整后的R²为0.56。在曼哈顿外生系数的空间分布中观察到明显的反转,上曼哈顿的保险系数缺乏程度较高,而下曼哈顿的精神困扰频繁系数较高。结论 抑郁症发病率水平在空间上与曼哈顿岛的预测健康和经济参数相关。鼓励对可能减轻曼哈顿居民精神困扰负担的城市政策进行更多研究,以及对本研究中观察到的外生参数之间的空间反转进行调查。