Finazzi Francesco, Paci Lucia
Department of Management, Information and Production Engineering, University of Bergamo, Dalmine, Italy.
Department of Statistical Sciences, Università Cattolica del Sacro Cuore, Milan, Italy.
Biometrics. 2019 Dec;75(4):1356-1366. doi: 10.1111/biom.13100. Epub 2019 Aug 28.
Personal exposure assessment is a challenging task that requires both measurements of the state of the environment as well as the individual's movements. In this paper, we show how location data collected by smartphone applications can be exploited to quantify the personal exposure of a large group of people to air pollution. A Bayesian approach that blends air quality monitoring data with individual location data is proposed to assess the individual exposure over time, under uncertainty of both the pollutant level and the individual location. A comparison with personal exposure obtained assuming fixed locations for the individuals is also provided. Location data collected by the Earthquake Network research project are employed to quantify the dynamic personal exposure to fine particulate matter of around 2500 people living in Santiago (Chile) over a 4-month period. For around 30% of individuals, the personal exposure based on people movements emerges significantly different over the static exposure. On the basis of this result and thanks to a simulation study, we claim that even when the individual location is known with nonnegligible error, this helps to better assess personal exposure to air pollution. The approach is flexible and can be adopted to quantify the personal exposure based on any location-aware smartphone application.
个人暴露评估是一项具有挑战性的任务,既需要对环境状况进行测量,也需要对个人的活动进行测量。在本文中,我们展示了如何利用智能手机应用程序收集的位置数据来量化一大群人暴露于空气污染中的情况。我们提出了一种贝叶斯方法,将空气质量监测数据与个人位置数据相结合,以在污染物水平和个人位置均存在不确定性的情况下评估随时间变化的个人暴露情况。我们还提供了与假设个人位置固定时获得的个人暴露情况的比较。利用地震网络研究项目收集的位置数据,对居住在圣地亚哥(智利)的约2500人在4个月期间动态暴露于细颗粒物的情况进行了量化。对于约30%的个体,基于人员移动的个人暴露情况与静态暴露情况存在显著差异。基于这一结果并通过模拟研究,我们认为即使个人位置存在不可忽略的误差,这也有助于更好地评估个人暴露于空气污染的情况。该方法具有灵活性,可用于基于任何位置感知智能手机应用程序来量化个人暴露情况。