The African Center of Excellence in Bioinformatics and Data Intensive Sciences, The Infectious Diseases Institute, Makerere University, Kampala, Uganda.
Center for Computational Biology, Uganda Christian University, Mukono, Uganda.
Environ Sci Pollut Res Int. 2023 Mar;30(12):34856-34871. doi: 10.1007/s11356-022-24605-1. Epub 2022 Dec 15.
We explored the viability of using air quality as an alternative to aggregated location data from mobile phones in the two most populated cities in Uganda. We accessed air quality and Google mobility data collected from 15 February 2020 to 10 June 2021 and augmented them with mobility restrictions implemented during the COVID-19 lockdown. We determined whether air quality data depicted similar patterns to mobility data before, during, and after the lockdown and determined associations between air quality and mobility by computing Pearson correlation coefficients ([Formula: see text]), conducting multivariable regression with associated confidence intervals (CIs), and visualized the relationships using scatter plots. Residential mobility increased with the stringency of restrictions while both non-residential mobility and air pollution decreased with the stringency of restrictions. In Kampala, PM was positively correlated with non-residential mobility and negatively correlated with residential mobility. Only correlations between PM and movement in work and residential places were statistically significant in Wakiso. After controlling for stringency in restrictions, air quality in Kampala was independently correlated with movement in retail and recreation (- 0.55; 95% CI = - 1.01- - 0.10), parks (0.29; 95% CI = 0.03-0.54), transit stations (0.29; 95% CI = 0.16-0.42), work (- 0.25; 95% CI = - 0.43- - 0.08), and residential places (- 1.02; 95% CI = - 1.4- - 0.64). For Wakiso, only the correlation between air quality and residential mobility was statistically significant (- 0.99; 95% CI = - 1.34- - 0.65). These findings suggest that air quality is linked to mobility and thus could be used by public health programs in monitoring movement patterns and the spread of infectious diseases without compromising on individuals' privacy.
我们探索了将空气质量用作替代来自乌干达两个人口最多城市的手机聚合位置数据的可行性。我们访问了从 2020 年 2 月 15 日到 2021 年 6 月 10 日收集的空气质量和谷歌移动性数据,并在其中加入了 COVID-19 封锁期间实施的移动性限制。我们确定空气质量数据在封锁之前、期间和之后是否与移动性数据呈现出相似的模式,并通过计算皮尔逊相关系数([Formula: see text])、进行具有相关置信区间 (CI) 的多变量回归以及使用散点图可视化关系来确定空气质量与流动性之间的关联。随着限制的严格程度的增加,住宅流动性增加,而非住宅流动性和空气污染随着限制的严格程度的增加而减少。在坎帕拉,PM 与非住宅流动性呈正相关,与住宅流动性呈负相关。只有在瓦基索,PM 与工作和居住场所的移动之间的相关性具有统计学意义。在控制了限制的严格程度后,坎帕拉的空气质量与零售和娱乐场所的流动(-0.55;95%CI=-1.01-0.10)、公园(0.29;95%CI=0.03-0.54)、过境站(0.29;95%CI=0.16-0.42)、工作(-0.25;95%CI=-0.43-0.08)和住宅场所(-1.02;95%CI=-1.4-0.64)独立相关。对于瓦基索,只有空气质量与住宅流动性之间的相关性具有统计学意义(-0.99;95%CI=-1.34-0.65)。这些发现表明,空气质量与流动性有关,因此公共卫生计划可以使用它来监测移动模式和传染病的传播,而不会损害个人隐私。