Department of Epidemiology, Biostatistics, and Occupational Health, McGill University, Montreal H3A 1A2, Canada.
Department of Civil and Environmental Engineering, Walter Scott, Jr. College of Engineering, Colorado State University, Fort Collins 80523, United States.
Environ Sci Technol. 2021 Sep 21;55(18):12483-12492. doi: 10.1021/acs.est.1c01412. Epub 2021 Sep 9.
Outdoor ultrafine particles (UFP, <0.1 μm) and black carbon (BC) vary greatly within cities and may have adverse impacts on human health. In this study, we used a hybrid approach to develop new models to estimate within-city spatial variations in outdoor UFP and BC concentrations across Bucaramanga, Colombia. We conducted a mobile monitoring campaign over 20 days in 2019. Regression models were trained on land use data and combined with predictions from convolutional neural networks (CNN) trained to predict UFP and BC concentrations using satellite and street-level images. The combined UFP model ( = 0.54) outperformed the CNN ( = 0.47) and land use regression (LUR) models ( = 0.47) on their own. Similarly, the combined BC model also outperformed the CNN and LUR BC models ( = 0.51 vs 0.43 and 0.45, respectively). Spatial variations in model performance were more stable for the CNN and combined models compared to the LUR models, suggesting that the combined approach may be less likely to contribute to differential exposure measurement error in epidemiological studies. In general, our findings demonstrated that satellite and street-level images can be combined with a traditional LUR modeling approach to improve predictions of within-city spatial variations in outdoor UFP and BC concentrations.
户外超细颗粒物 (UFP,<0.1 μm) 和黑碳 (BC) 在城市内变化很大,可能对人类健康产生不利影响。在这项研究中,我们使用混合方法开发了新模型,以估计哥伦比亚布卡拉曼加市户外 UFP 和 BC 浓度的市内空间变化。我们在 2019 年进行了为期 20 天的移动监测活动。回归模型基于土地利用数据进行训练,并与卷积神经网络 (CNN) 的预测相结合,该网络经过训练可使用卫星和街景图像预测 UFP 和 BC 浓度。综合 UFP 模型( = 0.54)在自身表现上优于 CNN( = 0.47)和土地利用回归(LUR)模型( = 0.47)。同样,综合 BC 模型也优于 CNN 和 LUR BC 模型( = 0.51 比 0.43 和 0.45)。与 LUR 模型相比,CNN 和综合模型的模型性能空间变化更稳定,这表明综合方法不太可能导致流行病学研究中差异暴露测量误差。总的来说,我们的研究结果表明,卫星和街景图像可以与传统的 LUR 建模方法相结合,以提高对城市内户外 UFP 和 BC 浓度的市内空间变化的预测。