Bi Jianzhao, Burnham Dustin, Zuidema Christopher, Schumacher Cooper, Gassett Amanda J, Szpiro Adam A, Kaufman Joel D, Sheppard Lianne
Department of Environmental & Occupational Health Sciences, University of Washington, Seattle, USA.
Department of Environmental & Occupational Health Sciences, University of Washington, Seattle, USA.
Environ Pollut. 2024 Feb 15;343:123227. doi: 10.1016/j.envpol.2023.123227. Epub 2023 Dec 24.
Determining the most feasible and cost-effective approaches to improving PM exposure assessment with low-cost monitors (LCMs) can considerably enhance the quality of its epidemiological inferences. We investigated features of fixed-site LCM designs that most impact PM exposure estimates to be used in long-term epidemiological inference for the Adult Changes in Thought Air Pollution (ACT-AP) study. We used ACT-AP collected and calibrated LCM PM measurements at the two-week level from April 2017 to September 2020 (N of monitors [measurements] = 82 [502]). We also acquired reference-grade PM measurements from January 2010 to September 2020 (N = 78 [6186]). We used a spatiotemporal modeling approach to predict PM exposures with either all LCM measurements or varying subsets with reduced temporal or spatial coverage. We evaluated the models based on a combination of cross-validation and external validation at locations of LCMs included in the models (N = 82), and also based on an independent external validation with a set of LCMs not used for the modeling (N = 30). We found that the model's performance declined substantially when LCM measurements were entirely excluded (spatiotemporal validation R [RMSE] = 0.69 [1.2 μg/m]) compared to the model with all LCM measurements (0.84 [0.9 μg/m]). Temporally, using the farthest apart measurements (i.e., the first and last) from each LCM resulted in the closest model's performance (0.79 [1.0 μg/m]) to the model with all LCM data. The models with only the first or last measurement had decreased performance (0.77 [1.1 μg/m]). Spatially, the model's performance decreased linearly to 0.74 (1.1 μg/m) when only 10% of LCMs were included. Our analysis also showed that LCMs located in densely populated, road-proximate areas improved the model more than those placed in moderately populated, road-distant areas.
确定使用低成本监测器(LCM)改善细颗粒物(PM)暴露评估的最可行且最具成本效益的方法,可显著提高其流行病学推断的质量。我们调查了固定站点LCM设计的特征,这些特征对用于成人思维变化空气污染(ACT-AP)研究长期流行病学推断的PM暴露估计影响最大。我们使用了ACT-AP在2017年4月至2020年9月期间按两周水平收集并校准的LCM PM测量数据(监测器数量[测量次数]=82[502])。我们还获取了2010年1月至2020年9月的参考级PM测量数据(N=78[6186])。我们使用时空建模方法,用所有LCM测量数据或时间或空间覆盖范围减小的不同子集来预测PM暴露。我们基于模型中包含的LCM位置处的交叉验证和外部验证的组合(N=82)对模型进行评估,并且还基于对一组未用于建模的LCM进行的独立外部验证(N=30)。我们发现,与使用所有LCM测量数据的模型(0.84[0.9μg/m³])相比,当完全排除LCM测量数据时,模型的性能大幅下降(时空验证R[均方根误差]=0.69[1.2μg/m³])。在时间方面,使用每个LCM相距最远的测量数据(即第一个和最后一个),模型的性能(0.79[1.0μg/m³])最接近使用所有LCM数据的模型。仅使用第一个或最后一个测量数据的模型性能下降(0.77[1.1μg/m³])。在空间方面,当仅纳入10%的LCM时,模型的性能线性下降至0.74(1.1μg/m³)。我们的分析还表明,位于人口密集、靠近道路地区的LCM比位于人口中等、远离道路地区的LCM对模型的改善更大。