首页> 外文期刊>International Journal of Population Data Science >Cognitive development Respiratory Tract Illness and Effects of eXposure (CORTEX) project: Combining high spatial resolution pollution measurements with individual level data, a methodological approach.
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Cognitive development Respiratory Tract Illness and Effects of eXposure (CORTEX) project: Combining high spatial resolution pollution measurements with individual level data, a methodological approach.

机译:认知发展呼吸道疾病和eXposure的影响(CORTEX)项目:将高空间分辨率污染测量结果与个人水平数据相结合,是一种方法论方法。

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IntroductionThe Secure Anonymised Information Linkage (SAIL) databank facilitated linkage of routinely collected health and education data, high spatial resolution pollution modelling and daily pollen measurements for 18,241 pupils in 7 cross-sectional cohorts across Cardiff city, UK, to investigate effects of air quality and respiratory health conditions on education attainment. Objectives and ApproachAn urban atmospheric dispersion and chemistry modelling system (ADMS-Urban) simulated modelled hourly concentrations of air pollutants: PM2.5, PM10, NO2 and ozone levels. These were summarised into minimum, average and maximum daily readings for 4 time periods (e.g. school hours 9am-3pm) for all home and school locations across Cardiff between 2009 and 2015. The combination of different pollutants, measurements and time-periods created a comprehensive multi-row dataset per location. We transformed the dimensionality of this high-resolution data to create one row of summarised data per pupil per cohort, in preparation for statistical analysis. Results157,361 school and home locations across Cardiff were anonymised and household linkage fields were appended to combine pollution estimates at the household/school to individual health data. The pollution dataset contained 369 columns, 472,083 rows per year with one column per location, pollutant type, pollutant measurement, daily time-period, and day of year. Dataset transformation reduced algorithm computation by creating a single date column, producing a five column, 3,446,205,900-row matrix per year dataset. The algorithm adjusted for weekends, school/bank holidays and allowed location to vary 3pm-5pm on school days when pupil location was uncertain. The algorithm calculated tailored pollution exposures per pupil for revision and examination periods, creating one row per pupil and reducing 7 years of data and 24 billion rows to 18,241. Conclusion/ImplicationsWe successfully linked 95% of the cohorts’ household/school pollution data to their corresponding health and education data. This demonstrates data linking retrospective exposures for total populations using multiple daily locations, and extends our analysis platform for natural experiments to include daily exposure. Future work includes adding modelled route exposures.
机译:简介安全匿名信息链接(SAIL)数据库促进了英国卡迪夫市7个横断面队列中18241名学生的常规收集的健康和教育数据,高空间分辨率污染建模和每日花粉测量的链接,以调查空气质量和呼吸健康状况对受教育程度的影响。目标和方法城市大气弥散和化学建模系统(ADMS-Urban)模拟了每小时的空气污染物浓度建模:PM2.5,PM10,NO2和臭氧水平。在2009年至2015年期间,对加的夫所有家庭和学校地点的4个时间段(例如,上课时间上午9点至下午3点)的最低,平均和最高每日读数进行了汇总。不同污染物,测量值和时间段的结合形成了一个全面的每个位置的多行数据集。我们转换了此高分辨率数据的维数,以为每个队列每个学生创建一行汇总数据,以准备进行统计分析。结果对整个加的夫的157,361个学校和家庭地点进行了匿名化,并附加了家庭联系字段,以将家庭/学校的污染估算与个人健康数据结合起来。污染数据集包含369列,每年472,083行,每个位置,污染物类型,污染物测量,每日时段和一年中的每一列。数据集转换通过创建单个日期列,每年生成5列3,446,205,900行矩阵来减少算法计算。该算法针对周末,学校/银行假期进行了调整,并且在学生位置不确定的情况下,允许在上学日的下午3点至下午5点更改位置。该算法计算了每个学生在修订和检查期间量身定制的污染暴露量,每个学生创造一行,减少了7年的数据,减少了240亿行到18,241。结论/意义我们成功地将95%的队列家庭/学校污染数据与他们相应的健康和教育数据相关联。这说明了使用多个每日位置将总人口的回顾性暴露与数据联系起来的方法,并扩展了我们用于自然实验的分析平台,包括了每天的暴露。未来的工作包括添加模型化的路线暴露。

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