Departamento de Salud Pública, Universidad Industrial de Santander, Carrera 32 29-31, Bucaramanga, Colombia.
Escuela de Ingeniería Civil, Industrial de Santander, Carrera 27 Calle 9 Ciudad Universitaria, Bucaramanga, Colombia.
Environ Sci Pollut Res Int. 2024 Jan;31(2):3207-3221. doi: 10.1007/s11356-023-31306-w. Epub 2023 Dec 12.
Rapidly urbanizing cities in Latin America experience high levels of air pollution which are known risk factors for population health. However, the estimates of long-term exposure to air pollution are scarce in the region. We developed intraurban land use regression (LUR) models to map long-term exposure to fine particulate matter (PM) and nitrogen dioxide (NO) in the five largest cities in Colombia. We conducted air pollution measurement campaigns using gravimetric PM and passive NO sensors for 2 weeks during both the dry and rainy seasons in 2021 in the cities of Barranquilla, Bucaramanga, Bogotá, Cali, and Medellín, and combined these data with geospatial and meteorological variables. Annual models were developed using multivariable spatial regression models. The city annual PM mean concentrations measured ranged between 12.32 and 15.99 µg/m while NO concentrations ranged between 24.92 and 49.15 µg/m. The PM annual models explained 82% of the variance (R) in Medellín, 77% in Bucaramanga, 73% in Barranquilla, 70% in Cali, and 44% in Bogotá. The NO models explained 65% of the variance in Bucaramanga, 57% in Medellín, 44% in Cali, 40% in Bogotá, and 30% in Barranquilla. Most of the predictor variables included in the models were a combination of specific land use characteristics and roadway variables. Cross-validation suggests that PM outperformed NO models. The developed models can be used as exposure estimate in epidemiological studies, as input in hybrid models to improve personal exposure assessment, and for policy evaluation.
拉丁美洲快速城市化的城市经历着高水平的空气污染,这些污染已知是人口健康的危险因素。然而,该地区对长期暴露于空气污染的估计数据却很缺乏。我们开发了城市内部的基于土地利用的回归(LUR)模型,以绘制哥伦比亚五个最大城市中细颗粒物(PM)和二氧化氮(NO)的长期暴露情况。我们在 2021 年的旱季和雨季期间进行了为期两周的空气污染测量活动,使用称重 PM 和被动式 NO 传感器在巴兰基亚、布卡拉曼加、波哥大、卡利和麦德林五个城市进行测量,并将这些数据与地理空间和气象变量相结合。我们使用多变量空间回归模型开发了年度模型。测量的城市年平均 PM 值范围在 12.32 到 15.99μg/m 之间,而 NO 值范围在 24.92 到 49.15μg/m 之间。PM 的年度模型在麦德林解释了 82%的方差(R),在布卡拉曼加解释了 77%,在巴兰基亚解释了 73%,在卡利解释了 70%,在波哥大解释了 44%。NO 模型在布卡拉曼加解释了 65%的方差,在麦德林解释了 57%,在卡利解释了 44%,在波哥大解释了 40%,在巴兰基亚解释了 30%。模型中包含的大多数预测变量是特定土地利用特征和道路变量的组合。交叉验证表明,PM 模型优于 NO 模型。开发的模型可用于流行病学研究中的暴露估计,可作为输入用于混合模型以改善个人暴露评估,并可用于政策评估。